Class of 2022 Alumni

Portrait of Brianna

Brianna Witherell

Brianna is a highly driven research and teaching assistant and graduate student studying electrical engineering specializing in signal processing. Her areas of  expertise include radar engineering, artificial intelligence, machine learning, digital signal processing, communications engineering, and software engineering. She is the  creator of Nimbus, an open source python framework for decoding NOAA POES satellites. Brianna loves to crochet and watch her beloved St Louis Cardinals. 

School: Southern Illinois University - Edwardsville

Major: Electrical Engineering

NOAA Affiliation: NESDIS GOES-R Office

Research Title

GLM Background Imagery in AWIPS Could Provide Critical Forecasting Data during ABI Outages

Abstract

The Geostationary Lightning Mapper (GLM) is an instrument onboard the GOES-R series satellites designed to continuously monitor and record lightning across most of  the Western Hemisphere. In addition, the GLM also transmits visible-band (0.77 µm) background images that are used as calibration for the lightning detection. These  images are ~8km grid spacing and are not geolocated or calibrated. However, because of the 2.5min full-disk sampling, the GLM background imagery provides a unique opportunity to fill in gaps for the main imaging instrument, the Advanced Baseline Imager (ABI). This gap filler may be considered for the case where ABI imagery may  become unavailable. Supporting the availability of GLM background images to NWS forecasters in the event of an ABI outage requires the imagery to be available in the  Advanced Weather Interactive Processing System (AWIPS). This presentation describes how the GLM background imagery for GOES-16 and GOES-17 has been made AWIPS-compatible through projecting the product onto the fixed grid, to the format of the ABI used routinely in AWIPS today. Upon making the GLM imagery AWIPS  compatible, forecaster evaluations were performed. Feedback from demonstrations with five NWS forecast offices and the GLM working group are summarized. Initial  feedback suggests the GLM background imagery would serve as a suitable backup to the ABI. In addition, a second project applied imagery bands from the GOES-R  Advanced Baseline Imagery (ABI) to identify sea surface features important to NWS forecasters. In areas that are cloud free, the Gulf Stream, cold and warm eddies, the  Loop Current, areas of upwelling, and additional sea surface features can be detected using the imagery, especially when they are looped over time. These ocean  features have a large impact on vessel speed and their detection is critical to safe maritime operations. ABI shortwave Infrared (SWIR) band 7 and Window Infrared  bands 13,14, and 15 of GOES-16 and GOES-17 were cleared of clouds blocking these features for the various ABI sectors (e.g. Full Disk, Conus, and Mesoscale) and  processed efficiently in a real-time environment in AWIPS. Time averages were also performed in the real-time environment to filter shorter temporal signatures, and  color enhancements were applied to accentuate the features.

Portrait of Nadiyah

Nadiyah Williams

Nadiyah Williams is an aspiring research scientist and rising third-year undergraduate student at the Georgia Institute of Technology studying Earth and  Atmospheric Sciences. She is interested in the impact of climate change on severe weather events. She is a research assistant with the Severe Storms Research Center,  where she helped develop a comprehensive tornado database for the states of Georgia and Alabama. Nadiyah became interested in NOAA after presenting her work to  a Science and Operations Officer at NWS Atlanta. She found that her values in meteorology align with the mission to serve others with accurate knowledge and  information. In her free time, Nadiyah plays roller derby for Georgia Tech and participates in a Vertically Integrated Project that focuses on engineering weather  balloons. 

School: Georgia Tech University

Major: Earth and Atmospheric Science

NOAA Affiliation: OAR/National Severe Storms Lab

Research Title

Comparative Analysis of Wind Observations from Doppler LIDAR and Radiosondes

Abstract

Doppler lidar is capable of producing high-resolution, three-dimensional retrievals of the wind speed and direction. Typically, the retrieval accuracy decreases with  increasing altitude and severe weather conditions; however, lidar remains a powerful tool for assessing the boundary layer. Radiosondes are capable of retrieving wind  speed and direction at higher altitudes by tracking how fast it drifts, but it is common for erroneous upper-air data from particular stations to be rejected due to the  balloon drifting far from the launch site and producing non-vertical profiles. This project aims to compare wind observations from lidar and sonde measurements in the boundary layer in order to evaluate their performance while observing moderate to severe weather conditions and to gain understanding about what each  measurement type might represent in these varying conditions. Comparative analysis was performed to assess the relevance of wind observations collected by  University of Oklahoma and National Oceanic and Atmospheric Administration. Results are expected to show that radiosondes become less representative of the  conditions in which they are launched when the horizontal distance from the point they were launched is largest, which would generally occur in the strongest winds.  Comparisons are underway to test this hypothesis fully, which will be shown.

Portrait of Stephen

Stephen Wegmann

Stephen Wegmann got caught in a hurricane when he was young, and that experience imprinted on him a love and respect for weather. Despite his love of writing  and storytelling, he eventually landed on the sciences, where he quickly discovered that a compelling story could go a long way—so much so that his role at the NOAA  Weather Program Office for the Lapenta Internship in summer of 2022 sees him writing the story of a series of projects focused on improving tropical cyclone  communication, breaking down in a digestible fashion why these projects are impactful, asking big questions worth exploring, and should spur further research.  Currently, he is a second-year master’s student of geosciences at Georgia State University. When he isn’t considering what actor fits best for his screenplay, you’ll likely  find him flying a kite at the park. 

School: Georgia State University

Major: Geosciences and Geography

NOAA Affiliation: OAR/Weather Program Office

Research Title

Telling the Story Behind the Social Science: Developing a Digital Storytelling Process to Translate the Findings of NOAA’s Hurricane Supplemental Social and Behavorial Science Projects

Abstract

Story generation is the process of creating a narrative using a premise or summary—the term is commonly used within the field of artificial intelligence. However,  conceptually, story generation can be applied to any writing one may do, especially when provided reference material, if the objective is to draw from the content a  cohesive narrative. Effective storytelling makes a significant difference in all aspects of communication, doubly so in the domain of science where concepts can appear  intangible without thorough contextualization. Adding concrete illustration and concise explanation of why and how scientific research is valuable to a broad audience  increases the likelihood of engagement and action. This presentation will describe the development of an applied story generation process to translate and  communicate the findings of four, NOAA-funded social and behavioral science projects that were designed to accelerate tropical cyclone risk communication and  modernize the National Weather Service’s tropical cyclone product suite. To plan and execute story generation, this process used cloud-based brainstorming and  storyboarding collaborative platforms, plain language writing, and ArcGIS StoryMap online tools to translate complex, scientific findings into a powerful, digital story.  These components aid in organizing and crafting content and presenting scientific research findings in a compelling and engaging format that is more likely to connect  with recipients from public educators to legislative officials.

Portrait of Flora

Flora Walchenbach

Flora Walchenbach is a senior at the University of Washington majoring in Meteorology. She’s loved storms for as long as she can remember – her first career goal  was to become a storm chaser, but her parents thought it was too dangerous (she chases them anyway). Her interest in NOAA is somewhat self-explanatory given her  need to be out standing in the worst weather possible at all times. She loves to evaluate air quality models near and downwind of wildfires, a topic that’s also close to  her heart given the recent increase in wildfires and extreme smoke events in the Pacific Northwest. In the future she plans on earning a PhD in Meteorology and going  on to study/forecast the weather either at a university or organization like NOAA. 

School: University of Washington - Seattle

Major: Atmospheric Science

NOAA Affiliation: NWS/NCEP Environmental Modeling Center

Research Title

Evaluation of NOAA’s Operational/Experimental CMAQ in Regions Affected by Wildfires

Abstract

The NOAA National Air Quality Forecast Capability (NAQFC) relies on the Community Multiscale Air Quality Modeling System (CMAQ). The CMAQ assembles  meteorological, emissions, and air-chemistry transport models to simulate particulate matter, ozone, and other pollutants in the atmosphere, tracking movement of  pollution plumes over time on a fixed three- dimensional grid in order to predict hourly pollutant concentrations and related processes (e.g.: deposition) for multiple  vertical layers. Efforts are currently underway at NOAA to update the operational coupled offline GFS-CMAQ to a state-of-the-science online RRFS-CMAQ (Rapid Refresh Forecast System-CMAQ), providing 72-hour air quality forecasts for CONUS, AK, and HI twice a day at 06 and 12z cycles. In this project I work with the  Environmental Modeling Center (EMC) to contrast the performance of operational and experimental CMAQ forecasts near and downwind of severe wildfire events. As  the prevalence of wildfires increases, it is becoming only more important to accurately predict where smoke will migrate and potentially become a public health risk. By constructing a plotting tool in python to overlay EPA AirNow observations over forecasted air quality predictions for the same period, we can visualize discrepancies in  real and modeled air quality and determine where each model may be succeeding or underperforming in regions affected by wildfires. Here I focus in more depth on a  case study of ozone and PM2.5 in the Southwestern US from June 13-14 of 2022, during the Black Fire in NM and Haywire/Pipeline/Double Fires in AZ.

Portrait of Jeffrey

Jeffrey Wade

Jeffrey Wade is a 4th-year Ph.D. candidate in the Department of Earth and Environmental Sciences at Syracuse University. Originally from Milwaukee, WI, he  received his Bachelor's degree in Geology and Geophysics from the University of Wisconsin-Madison in 2019. He then went on to intern at the USGS New England Water  Science Center, where he studied riverine nitrate transport to Cape Cod coastal embayments. At Syracuse University, his research focuses on using process-based  models and machine learning methods to characterize the dominant controls on river water temperatures and to constrain future thermal regimes under a changing  climate. He is broadly interested in data science, machine learning, model development, and science policy. In his spare time, Jeff enjoys road cycling, fly fishing, and  skiing. 

School: Syracuse University

Major: Earth and Environmental Science

NOAA Affiliation: NWS/OWP National Water Center

Research Title

Incorporating Physics-based Water Temperature Predictions into the National Water Model Framework

Abstract

The development of a continental-scale water temperature model is a leading priority in the field of water quality prediction, given the recognized links between river  thermal regimes and viability of ecosystems, in-stream habitats, and fisheries. We have developed a physics-based heat budget model to predict water temperatures  using operational outputs from the National Water Model (NWM) Version 2.1, including meteorological forcings, streamflow, groundwater inflow, and channel  geometry. Using several configurations of our model, including both Eulerian and reverse particle tracking semi-Lagrangian computational schemes, we explored the  feasibility of incorporating sub-hourly water temperature prediction and forecasting into the framework of the NWM. Initial model results within a test basin suggest  that heat budget approaches to water temperature modeling forced by NWM outputs can produce predictions with acceptable error to observed temperatures during  summer baseflow periods. We found that the semi-Lagrangian scheme was better suited to generating water temperature predictions at the NWM’s desired spatial  resolution and temporal frequency, as it produced convergent results with computational effort suitable to upscaling to larger spatial domains. Model performance in  high-order mainstem channels exceeded that of first-order streams, likely due to the increased influence of groundwater inflow uncertainty along headwater reaches.  Future model development will include application to additional test basins, the incorporation of reservoir heat and winter ice dynamics, and sensitivity analyses.

Portrait of Wyatt

Wyatt Sullivan

Wyatt (who goes by Sully) was born in New York City and raised in Jackson, Wyoming. he returned to New York to pursue an education in computer science at  Cornell University, with a minor in Cornell’s environment and sustainability (E&S) program. He also came to Cornell to compete as a distance runner on their D1 track  and cross country programs. His interest in climate patterns and computer science brought me to NOAA. In his free time, he enjoys backcountry skiing, mountaineering,  climbing, and long trail runs. He is on a life-long mission to ski the famous 50 classic ski descents of North America, which includes summits such as Denali in Alaska and  Mount Rainier in Washington state, along with many other prominent peaks across the continent. 

School: Cornell University

Major: Computer Science

NOAA Affiliation: NWS/OSTI Meteorological Development Lab

Research Title

Monthly Climatologies for NBM, RTMA, NDFD

Abstract

When analyzing real-time forecasts or historical weather data, it is often that context is desired. When a forecast predicts a high of 90 in an area on the 15th of May, we  would also like to know what this predicted value means in context. Is this typical of May temperature in that area? Is it abnormally high? Is it a record high?  Conversely, if we see a strikingly low forecasted temperature, we want to know how low it truly is. Is it in the 10th percentile of all May temperatures? Is it the record  minimum? These questions can all be answered through monthly climatological data. Using 2.5km resolution historical weather data stored on Amazon Web Services  (AWS) S3 within the NOAA Open Data Dissemination program, monthly climatologies have been generated for National Blend of Models (NBM), National Digital  Forecast Database (NDFD), and Real-Time Mesoscale Analysis (RTMA) data. High-resolution percentile climatologies are created by aggregating element grid data from relevant grib files on S3. The percentiles of interest are 5th, 10th, 25th, 50th, 75th, 90th, 95th, max and min. Percentiles are created for continuous elements such as  temperature, wind speed, wind gust, maximum temperature, minimum temperature, dewpoint, humidity, precipitation, and snowfall. The climatologies are stratified  by valid time, meaning that percentile grids are produced for each valid time 00z - 23z. The results of the climatology calculations are exported to Tag Image File  Format (TIFF) files (file format used to store raster graphics) so they can be easily displayed using mapping software. With these percentile distributions, we are able to  provide further context to the forecast data. Climatologies are created using Python as the main programming language, aided by packages such as Geospatial Data  Abstraction Library (GDAL) and NumPy. NumPy’s percentile method is used to create the percentile data. The climatology Python script is going to be run after every  month in order to add new data to the climatologies and keep the percentiles up to date. The processing can be easily expanded to add new elements. The  climatological data is slated to be integrated into two web pages developed by MDL. Using the percentile grids, we can compare any grid-based forecast map to the  percentile values of the same month to create a map that represents the percentile that each gridpoint’s element value falls into. With this, we can objectively observe  which gridpoints are experiencing typical monthly conditions, which ones are abnormally low or high, and to what magnitude. Further, if more context about a singular  gridpoint is of interest, functionality has been included that allows a user to click on an individual gridpoint to display a box-and-whisker plot that shows where that  gridpoint’s value falls within the distribution. This also allows the user to compare NBM, NDFD, and RTMA gridpoints and their distributions, as each of these three types are included in the box and whisker plot.

Portrait of Kirsten

Kirsten Snodgrass

Kirsten is a graduate student majoring in Geoscience at Mississippi State University. In her spare time she is polishing up on her Italian which she started to study  in high school. She enjoys cooking and trying to new recipes as well. 

School: Mississippi State University

Major: Geoscience

NOAA Affiliation: NWS/NCEP Storm Prediction Center

Research Title

Verification of NOAA/NWS Storm Prediction Center Calibrated Severe Hazard Guidance

Abstract

For over a decade, the NWS Storm Prediction Center (SPC) has produced 4-hr and 24-hr calibrated probabilistic guidance for tornadoes, severe hail, and severe wind  hazards within the Day 1 convective period (1200 - 1200 UTC). This guidance is produced from a combination of maximum neighborhood probabilities of 1) High Resolution Ensemble Forecast (HREF) storm-attribute variables and 2) Short-Range Ensemble Forecast (SREF) environmental variables paired with 3) the historical  frequency of a hazard report occurring within 25 miles of a grid point. This guidance has been made internally available to SPC forecasters and externally available via  the HREF viewer hosted on the SPC website. In May 2021 this guidance became operational in the National Weather Service (NWS), allowing it to be distributed  publicly via National Center of Environmental Prediction (NCEP) web services, serve as a component to SPC timing guidance (under development), and is currently  scheduled for incorporation into version 4.1 of the National Blend of Models (NBMv4.1). With recent upgrades to the HREF membership and scheduled retirement of  the SREF, developmental work has focused on recalibrating the existing HREF/SREF guidance, as well as developing new calibrated guidance, that 1) utilizes  environmental variables from the HREF and Global Ensemble Forecast System (GEFS, substituting for the SREF), 2) explores alternative storm-attribute and  environmental variables and combinations, 3) explores alternative truth datasets (e.g., Maximum Estimated Size of Hail, MESH), and 4) extends into the Day 2  convective period. These new and existing versions of calibrated guidance were evaluated in the 2022 Hazardous Weather Testbed (HWT) Spring Forecasting  Experiment and objectively verified as part of this project through The William M. Lapenta NOAA Student Internship Program. This presentation provides objective  verification results that were completed utilizing the 24-hr operational HREF/SREF calibrated guidance compared to two versions of experimental HREF/GEFS calibrated  guidance for the period 15 March 2022 to 15 July 2022, as well as various sets of operational and experimental calibrated guidance that were evaluated in the 2022  HWT Spring Forecasting Experiment.

Portrait of Subhatra

Subhatra Sivam

Subhatra is a rising senior at UMD College Park but traveled to Seattle WA to complete her internship. She is majoring in Atmospheric and Oceanic Science as well  as Theatre (Sound and Lighting Design for Live Music), with minors in Archaeology and Surficial Geology. She was also an intern at Johns Hopkins Applied Physics Lab  and with ASPIRE. She likes taking walks and is learning how to crochet. 

School: University of Maryland – College Park

Major: Atmospheric and Oceanic Science, Theatre

NOAA Affiliation: OAR/Pacific Marine Environment Lab

Research Title

Comparing Models to Saildrone Measurements of Air-Sea Heat Flux near the Arctic Ocean

Abstract

Unscrewed surface vehicles, such as the wind-driven and solar-powered saildrones, are essential in collecting in situ observations of marine variables. Latent heat flux,  the air-sea energy exchange that occurs when water evaporates or condenses at this level, and sensible heat flux, the air-sea energy exchange that occurs because of the  temperature differences at this level, are collected and compared to model predictions of the same variables. The model values are extracted at the time and location in  which the saildrone collected data from the years 2017 - 2019, and have been plotted in different ways to examine the differences. By assessing these differences,  models can become more accurate to better understand Arctic environments.

Portrait of Ashley

Ashley Stagnari

Ashley is a rising junior at Cornell University majoring in Environment and Sustainability with a concentration in Environmental Policy and Governance. Her  interests center around climate change mitigation with a focus on greenhouse gas emission reduction and sustainable development. Other interests include journalism,  GIS, climate modeling, and wildfire conservation. She loves to read and photograph wildlife in her spare time. She has also volunteered her time at the Wolf Advocacy  Center and the Bedford Audubon Society. 

School: Cornell University

Major: Environment and Sustainability

NOAA Affiliation: OAR/Weather Program Office

Research Title

Working with Stakeholders: Engaging Sectors to Influence the Future of EPIC and UFS

Abstract

Amidst the challenges posed by extreme weather events and the progression of climate change, committing to the advancement of weather forecasting and prediction is pivotal to enable impactful societal outcomes. The rising frequency and challenge to predict extreme weather events calls for cross-sector partnerships. Through the  Unified Forecast System (UFS), the sectors can collaborate to accelerate advances in the Nation’s operational forecast modeling systems. Moreover, integrating  stakeholder feedback and engagement can help align user, developer, and operational needs to the technological aspects of the Earth Prediction Innovation Center  (EPIC) and UFS. In this report, community engagement best practices generated from a literature review of previous social science research were applied to feedback  collected during the 2022 Unifying Innovations in Forecasting Capabilities Workshop (UIFCW) hosted by the EPIC, the UFS, and UFS Research to Operations (R2O) Project  in College Park, Maryland and online. Stakeholder feedback was collected from Slack (a collaborative messaging program), workshop events, question and answer  sessions, and a post-workshop survey. By collecting and analyzing feedback, various community engagement elements were evaluated for their presence, absence, and  need for improvement. This work highlighted the need to define community as it relates to a cross-sector involvement to improve weather modeling (Michaud & Eosco,  2022), elaborate on community membership, clarify governance structures, and evaluate action plans for committing to goals established at meetings such as the  UIFCW. Finally, the author will share ideas for a path forward in an effort to help improve the UFS and EPIC’s goals to build a modeling community and improve  operational weather prediction.

Portrait of Rohan

Rohan Shroff

Rohan is currently entering his junior year at Cornell University where he is studying atmospheric science. Rohan’s main interests in the atmospheric sciences  include statistical analysis, seasonal prediction, and winter weather, and he aims to apply these interests to improve quality of life. NOAA’s alignment with these  objectives is what motivated Rohan to apply as a NOAA intern. His current project at the Climate Prediction Center involves analyzing individual vs collective ENSO  forecasting to improve the accuracy of ENSO forecasts. During his free time, Rohan enjoys practicing nature photography, frequently plays tennis and basketball, and is  an avid NFL fan. 

School: Cornell University

Major: Atmospheric Science

NOAA Affiliation: NWS/NCEP Climate Prediction Center

Research Title

Individual versus Collective ENSO Forecasting

Abstract

The El Niño-Southern Oscillation, or ENSO, is a pattern with climate anomalies that extend across the tropical Pacific Ocean, and significantly influences temperature  and precipitation anomalies across the globe. The official ENSO forecast produced by the Climate Prediction Center of the National Weather Service currently uses a  consensus methodology where each ENSO forecaster (varies between 7 and 12) is equally weighted to produce the final forecast. One question is whether the official  collective average provides more skillful forecasts than the individual, anonymous forecasters that are used in that average. Whether or not this method improves  forecast accuracy is analyzed using seven years of forecast data (2015-05-01 – 2022-05-01). Forecast verification scores, such as mean and absolute mean error, mean  squared error (MSE), bias, error variance, and the MSE Skill Score (MSESS), were analyzed. We find that the consensus method of ENSO forecasting is generally more  accurate than individual forecasters. The consensus forecast has the lowest mean absolute error (0.267 °C) and MSE (0.14) when compared to individual forecasters,  especially those who are missing fewer than 25% of forecasts. As expected, both MSE and mean absolute error increase with longer forecast lead times. A warm bias is  also evident in consensus and individual forecasts, with a mean consensus error of 0.12 degrees °C. 5 out of 18 forecasters also had a mean error above 0.2 degrees °C,  with only one forecaster out of 18 having a negative mean error. The warm bias primarily shows up at longer forecast lead times, beyond 3 seasons. Regardless, this  analysis demonstrates that collective forecasting for producing ENSO forecasts results in superior forecast accuracy relative to individual forecasters.

Portrait of Liam

Liam Sheji

Liam is a PhD student at SUNY Albany studying atmospheric science. He obtained his BS degree in Atmospheric Sciences and Meteorology at the University of  Miami. Liam enjoys traveling, spending time outdoors, going out with friends and reading. 

School: The State University of New York at Albany

Major: Atmospheric Science and Meteorology

NOAA Affiliation: OAR/Air Resources Lab

Research Title

Influence of the COVID-19 Pandemic on Black Carbon and Carbon Monoxide Emissions in the New York City Metropolitan Area

Abstract

Black carbon (BC) poses a significant public health concern and the measurement of BC comes with great uncertainties. Carbon monoxide (CO) is often emitted from  similar and/or collocated sources, which makes analyzing BC emissions in urban areas more attainable. The COVID-19 pandemic restrictions resulted in a decrease in  emissions of many pollutants nationwide due to stay-at-home orders, which provided a great opportunity to investigate the impacts of the pandemic on anthropogenic  emissions. The University of Maryland Cessna 402B research aircraft equipped with a suite of trace gas and aerosol absorption and scattering observing instruments  conducted a series of flights in 2020 to measure mass concentrations of several trace gases, including BC and CO. In combination with data from a near-road (NR) site in Queens, New York, it is possible to determine the flux of these gases from New York City (NYC) using a mass-flux balance approach. The average of 11 flights over NYC  between April and September 2022 resulted in a mass flux of 2.03 and 323 Gg yr -1 for BC and CO, respectively. Higher enhancement ratios of BC/CO on weekdays  versus the weekend were observed and are likely due to more diesel trucks on the road on weekdays. All NR and flight BC and CO measurements are positively correlated. The flight and NR data are compared to two “bottom-up” emission inventories from the pre-COVID National Emissions Inventory (NEI) and the Emissions Database for Global Atmospheric Research (EDGAR) models. The NEI and EDGAR show BC emission values of 2.46 and 2.78 Gg BC yr -1 (~ 21% less than the flight averaged emission value) for the flights conducted in NYC. Possible reasons for discrepancies are discussed.

Portrait of Sepulveda

Jackie Sepulveda

Jackie is a rising senior at Valparaiso University majoring in Meteorology with a minor in Mathematics. She hopes to pursue research and education in her future.  Her interests and goals helped her find the Lapenta Internship opportunity and she has since been excited to see what NOAA has to offer. Jackie is interning with the  EPIC program within WPO to test and run open-source data assimilation software where she is learning and improving her python and linux skills. At her university,  Jackie serves as President of Chi Epsilon Pi, the meteorology honor society as well as serving as a tutor in the meteorology department. In her free time, she enjoys  reading, listening to music, and going on nature walks with her dog. 

School: Valparaiso University

Major: Meteorology

NOAA Affiliation: OAR/Weather Program Office

Research Title

Evaluating the Capabilities of an Open Source Data Assimilation System

Abstract

The Earth Prediction Innovation Center (EPIC) Program has a mission to be a catalyst for community research and modeling advances, leading to an inclusive scientific  community initially focused on Numerical Weather Prediction. Developing multi-platform testing capabilities of the end-to-end applications with documentation will  aid EPIC and UFS along with their stakeholders in expanding and enhancing efforts in providing community-wide open-source content. Doing so will fulfill the mission  and vision of both EPIC and NOAA. In an effort to understand the utilization, accessibility, and community code development of the Joint Effort for Data assimilation Integration (JEDI)-based Data Assimilation (DA) systems, this project focuses on building data assimilation products from end-to-end on the Orion environment. The  intention of this project is to utilize high-performance computing (HPC) to integrate the JEDI framework with UFS applications and find areas of accessibility, buildability, and overall success of the end-to-end open source coding applications. 
To complete this work, we ran a fully cycled Next Generation-Global Ocean Data Assimilation System (NG-GODAS) marine JEDI-Sea-Ice Ocean Coupled Assimilation DA system with sea surface temperature as the forecast variable on an HPC platform – “Orion”, at Mississippi State University, for a 15-day span (April 15-30, 2021). Run  time, errors, experience, and internal access limitations were analyzed. These results will demonstrate the end-to-end applications for the NG-GODAS marine JEDI  systems from multiple cloud based HPC platforms.

Portrait of Victoria

Victoria Scheidt

Tori is an undergraduate student at the University of Michigan studying Climate and Meteorology with a minor in Oceanography. After graduating, she plans on  attending graduate school in Applied Climate Studies at the same university. Since she was twelve, Tori has actively pursued a career in the atmospheric sciences after  visiting the Sterling Field Support Center. She was awarded her Girl Scout Silver Award for installing a WeatherSTEM station at her elementary school. It provides real time weather data and educational content for students to learn about weather. As much as she loves to learn about the weather, she equally loves to teach it. This fall,  she will be an instructional aid (IA) for an introductory Climate/Space class. She hopes to work with NOAA more in the future and wishes to explore operational  meteorology. In her free time, she loves to row, bake for family and friends, and catch up on a good book. 

School: University of Michigan – Ann Arbor

Major: Meteorology and Climatology

NOAA Affiliation: NWS/WPC Weather Prediction Center

Research Title

Evaluating WPC’s Excessive Rainfall Outlook Using an Object-oriented Approach

Abstract

One of the most deadly and damaging weather phenomena in the United States is flash flooding, typically brought on by heavy precipitation. The Excessive Rainfall  Outlook (ERO) created by the Weather Prediction Center (WPC) is one of the many products released to help predict flash floods by determining the risk of rainfall  exceeding the flash flood guidance within 25 miles of a point. Our aim is to identify and display biases in the forecast using object-based verification. This project uses  the Model Evaluation Tools (MET) software for the Method for Object-Based Diagnostic Evaluation (MODE) to identify objects in the ERO and Practically Perfect (PP)  from 01 May 2015 to 30 April 2022. PP is a statistical tool designed to mimic the ERO if the forecasters had perfect knowledge of the verification using observations and  proxies for flash flooding. EROs are issued out to three days with risk categories of marginal (MRGL), slight (SLGT), moderate (MDT), and high (HIGH). MODE matched  PP and ERO objects (e.g. determined two objects in separate fields are the same object) according to all the categories above, excluding MRGL. Object-based biases and  errors in regional, seasonal, and yearly ERO are analyzed using a variety of plots including; wind rose, box plot, bar graphs, heat maps, and arrow maps. Key results  from these graphs show that, on average, predictions are getting better each year, centroid displacements are generally toward the east/ northeast in the SLGT  category, and area mean error is the highest overall in the winter and spring months. 

Portrait of Bruno

Bruno Rojas

Bruno is a graduate student studying Meteorology at Penn State University. His research interests include secondary eyewall formation in tropical cyclones using  flight level and airborne radar data, and tropical cyclone electrification. He likes to read and do brewing in his spare time. 

School: Penn State University

Major: Meteorology

NOAA Affiliation: OAR/Atlantic Oceanographic and Meteorology Lab

Research Title

A Structural Analysis of Hurricane Dorian (2019) during Rapid Intensification

Abstract

Hurricane Dorian (2019) was an Atlantic hurricane that underwent rapid intensification (RI) preceding the most damaging landfall to the northern Bahamas in recent  memory. Part of the difficulty in understanding and predicting RI are structural changes to the hurricane. Two structural aspects are analyzed in this study: the  alignment of a tilted vortex, and an early period of secondary eyewall formation. This analysis was conducted using the Hurricane Ensemble Data Assimilation System (HEDAS), based on the Hurricane Weather Research and Forecasting model (HWRF). Depending on data availability, HEDAS is capable of assimilation of satellite  derived atmospheric motion vectors, land based doppler radar winds, and data obtained from aircraft reconnaissance missions which includes flight level data,  dropsonde data, and winds derived from the tail doppler radar. Our findings show that during the period of vortex alignment, the vertical wind shear through two  layers was opposite in direction, indicating this configuration may be favorable for vortex alignment. At the end of the RI period, an eyewall replacement cycle (ERC)  took place, and HEDAS analyses available. The analysis shows a secondary wind maximum and a mesoscale descending inflow feature in the rainband region. This  demonstrates that HEDAS is capable of resolving these complex features.

Portrait of Kaitlyn

Kaitlyn Roberts

Kaitlyn is a rising senior at Western Connecticut State University working on her undergraduate degree in Meteorology. In her spare time she likes to knitting, quilting, and cross stitching.

School: West Connecticut State University

Major: Meteorology

NOAA Affiliation: NWS/OPPSD Central Processing

Research Title

Outreach Efforts Regarding AWIPS Product Development

Abstract

The National Weather Service Office of Central Processing is continually working on creating and implementing advances in the AWIPS software program. Many of these  efforts are long-term and behind the scenes, so field employees may not be aware of them until they are implemented. In this project, I interviewed AWIPS  development project leads on several AWIPS changes currently in progress and distilled the information into presentations. These presentations will be shared with  National Weather Service employees in order to broaden their knowledge and understanding of upcoming changes to the AWIPS program.

Portrait of Christopher

Christopher Picard

Chris is currently going into his senior year at Dartmouth College where he will receive his Bachelor's degree in Environmental Earth Sciences. Growing up in New  Hampshire and spending his free time outdoors, Chris has always wanted to pursue a career in the environmental and earth sciences. He spent the past two years with  Dartmouth’s Applied Hydroclimatology Group where he used regional climate models to project changes in future extreme precipitation across the Northeast United  States. This experience coupled with his coursework and lifelong love of snow and ice has inspired him to study Earth’s past, present, and future climate through the lenses of remote sensing and modeling of polar regions. He finds the cryosphere particularly interesting as these regions are home to some of the most endangered  ecosystems on the planet and they also serve as important indicators of the changing climate. In his free time, Chris enjoys playing ice hockey, skiing, hiking, and reading  poetry. 

School: Dartmouth College

Major: Environmental Earth Sciences

NOAA Affiliation: NWS/NCEP Ocean Prediction Center

Research Title

Assessment of Arctic Sea Ice Edge Location Forecasts Using Model, Satellites, and Ice Charts to Better Inform Polar Mariners

Abstract

The United States National Ice Center (USNIC) utilizes cutting edge models and satellite observations to inform polar mariners of the present location and forecasted  location of sea ice in high latitude regions. Everyday, USNIC ice forecasters produce 48-hour Special Arctic Regional Oceanographic Synopsys (called SPAROS forecasts) of  sea ice edge based on model outputs, temperature, pressure and wind data, and 7-day advanced scatterometer loops, among other sources. While USNIC ice forecasters  engage in intensive quality control measures for SPAROS forecasts each day, there remains a need to quantify the accuracy of these forecasts and identify geographic  regions that need improvement. Here we create an automated model that compares SPAROS and Global Ocean Forecast System (GOFS) 48-hour forecasts of sea ice to  the USNIC analyzed daily marginal ice zone product (MIZ) to assess forecast accuracy. On average, the USNIC SPAROS forecasts overestimate and underestimate sea ice  extent by approximately 2.4% and 1.4%, respectively, and the SPAROS forecasts significantly outperform the GOFS model. We find the SPAROS forecasts are especially  accurate in the Laptev Sea, the East Siberian Sea, and the Chukchi Sea. Compared to the MIZ, both the forecaster-created SPAROS and the GOFS model output have their  largest differences in the Gulf of Ob and the broader Kara Sea region. Overall, we find USNIC ice forecasters consistently provide the most accurate 48-hour forecasts of  Arctic sea ice edge available. Importantly, this model provides USNIC ice analysts with an important tool to assess the accuracy of daily SPAROS forecasts and to better  inform polar mariners through improved forecast accuracy.

Portrait of Sarah

Sarah Pappas

Sarah is working on her B.S. in Geography-Meteorology and her B.S. in Applied Mathematics with minors in Geographic Information Systems, English, and Statistics  at Marshall University. In addition to being a student, she participates in several organizations and clubs, as well as work in Marshall’s freshmen residence halls as a  desk assistant. She has been interested in meteorology since she was in middle school, and she specifically likes to focus on severe weather such as tornadoes. Her  future career goal is to work with the National Weather Service in helping to extend tornado warning lead times, but I am now also considering working with winter  weather to help forecast impacts. She also wishes to become a storm chaser, chasing tornadoes and hurricanes. In her free time, she enjoys playing video games with  friends and playing sports. 

School: Marshall University

Major: Geography and Meteorology, Applied Mathematics

NOAA Affiliation: NWS/NCEP Weather Prediction Center

Research Title

Verification of the WPC Winter Storm Severity Index (WSSI)

Abstract

The Winter Storm Severity Index is an operational tool created by the Weather Prediction Center. The purpose of the WSSI is to function as a situational awareness tool,  which functions by categorizing winter storm severity into impact levels for the continental United States. The WSSI currently uses six components to determine how  winter weather is causing impacts: blowing snow, flash freeze, ground blizzard, ice accumulation, snow amount, and snow load. The WSSI uses National Weather  Service forecasts from the National Digital Forecast Database (NDFD) to create an impact level-based forecast using Geographic Information Systems (GIS). The five  impact levels are limited, minor, moderate, major, and extreme. The WSSI uses meteorological and non-meteorological factors to determine a societal impact level from  1 to 5 for each category. This includes a two-day snowfall climatology that helps to delineate impacts from snowfall across the climatologically diverse CONUS.  Verification of the WSSI each year allows necessary improvements to be made in its forecasting to better inform the public about potential impacts. Verification of the  2021-2022 winter storm season has revealed the importance of improving the mountainous forecast areas. This season’s verification involved manual counting of the highest forecasted impact level for each category. While subjective, it allows less skewed numbers due to a single stray pixel of a higher forecasted impact level  being counted by an automated process. This year, the use of zonal statistics was introduced via ArcGIS to display the number of days and which impact level each  National Weather Service forecast zone saw for each component and overall. This helps to home in on the impacted areas allowing for more targeted improvements to  the WSSI algorithms than had been done in the past. The displaying of the zonal statistics will show why current WSSI changes are being made, along with some of the  struggles in winter forecasting.

Portrait of Marissa

Marissa Osterloh

Marissa is originally from Ohio and am currently a senior at Iowa State University studying meteorology. Some of her interests related to her career path include  climate change, agricultural impacts due to climate forcings, and coding. Looking forward, her overall career aspirations is to work in the private or public industry doing  something that combines my love and passion for agriculture and weather. Outside of her educational interests, she is still heavily interested in and involved in  agriculture. She grew up in 4-H and is still heavily involved in the agricultural community by participating as judges for local county fairs across central Ohio. She is  also very active and enjoys working out, playing soccer, and running. 

School: Iowa State University

Major: Meteorology

NOAA Affiliation: OAR/Great Lakes Environmental Research Lab

Research Title

Seasonal, Interannual and Decadal Variability and Long-Term Trend of Ice Cover in Saginaw Bay and Georgian Bay in the Great Lakes between 1973-2022

Abstract

Great Lakes ice cover is a sensitive indicator of regional climate change. Although seasonal ice cover is repetitive yearly, there is high interannual variability in ice cover  for each Great Lake. A driving factor in investigating variability in ice cover for the Great Lakes is that different Great Lakes may experience different spatial and  temporal variability related to each lake’s orientation, depth, and turbidity. A deeper understanding of ice cover climatology for the Great Lakes is important for better  ice cover forecasts for future winter seasons. The Great Lakes are important sources of drinking water, transportation, hunting, and fishing, for the UnitedStates and  Canada, so having accurate projections for ice cover is important from an ecological and economical standpoint. In this study, we focused on Saginaw Bay and Georgian  Bay in Lake Huron, where we evaluated the 50-year ASCII winter dataset of ice charts produced by the National Ice Center (NIC). We used the NOAA’s CoastWatch mask  to subset our locations from the dataset. From here, we looked at variables such as daily averages of ice cover from December 1st to April 30th (the average winter  season), average annual ice cover (AAIC), average maximum ice cover (AMIC), and duration of ice cover. Furthermore, we also evaluated differences in bathymetry and  latitudinal coordinates of the two Bays to better understand which parameter may have a larger impact on ice cover and duration. We also considered other  atmospheric forcings, such as the El Nino-Southern Oscillation (ENSO), in our evaluation of our findings. Results indicate that the ice cover growth during the seasonal  cycle between Saginaw Bay and Georgian Bay has notable differences, primarily due to the differences in bathymetry between the Bays. It is found that both Saginaw  Bay and Georgian Bay show decreasing trends in AAIC and AMIC, but Georgian Bay is highly volatile and is decreasing at a faster rate despite the Bay being located  further north. This finding shows that deeper bathymetry of a Bay may result in that Bay being more susceptible to climate forcings resulting in a larger interannual variability. This report aims to show variability in ice cover for Saginaw Bay and Georgian Bay on seasonal, interannual, and decadal time scales to better understand ice  climatology for theGreat Lakes and improve future ice projections for the area.

Portrait of Maite

Maite Morales Medina

Maite is a graduate student at the University of Puerto Rico working on a degree in Environmental Health. She likes to learn new languages and is diving into Mandarin right now; she also likes road trips and traveling to new places. 

School: University of Puerto Rico

Major: Environmental Health

NOAA Affiliation: NESDIS Satellite Applications and Research

Research Title

Atmospheric Satellite Data Applications and User Engagement in the U.S.: Solar Energy Industry Assessment from June 6 to August 12, 2022

Abstract

Technology and satellite products are advancing. Consequently, data can be over overwhelming for end users, including public and private sector. Therefore, the User Engagement Process is essential to help NOAA better understand what users are currently utilizing for decision making and where gaps in services lie. Our purpose in this project is to assess how atmospheric composition data can provide value to the community, since we will have an atmospheric composition instrument on our next  generation geostationary satellites. Our methodology is based on Jobs-To-Be-Done Theory to understand the needs of different users better and create new or  enhanced products and services to meet the evolving needs of users. This method includes tree main steps: Find users, Interview process and Analyze outcomes. In  order to have a target community and find end users, we analyze the total of satellite products of atmospheric composition (15) from NESDIS data base and organize  them by potential applications in the community. During this process, four main categories were deployed. However, since today is an increasing industry that depends  on atmospheric data for product, we choose to work with the Solar Energy community. Five potential end users from private, public and academia sector were contacted. One form the private sector, Tesla Forecasting Company, was able to perform the interview. The Interview help us to go through the process of job mapping.  This method is related to Jobs-To-Be-Done Theory and allow us to understand different tasks and goals a user is trying to accomplish. As a result, we define the  company’s job, which is provide their clients with hourly weather forecast to monitor solar energy production. The needs of the company were centered on the  accessibility of radiance data. However, we notice during the interview that the company do not have access and do not provide their clients with aerosols forecast, such  as dust, ashes and smoke. Several studies have found that Aerosols causes a drop in the efficiency of photovoltaic panels, which translates to a decline in the amount of  power produced and lost income for their operators. These information is important to NOAA in order to acknowledge these gaps in the solar energy community and  better support this industry. The User Engagement Process enhances relationships and increases collaboration among partners and end users. Also, informs STAR and  NESDIS on user needs to make informed decisions on prioritization of 
products and services.

Portrait of Diana

Diana Montoya-Herrera

Diana is currently attending the University of San Diego obtaining her BS/BA degree in Integrated Engineering with an emphasis in Sustainability. Diana has lived  her entire life in Imperial Beach, the most southwesterly beach in the continental US that is along the Mexican border. By seeing the environmental issues that plague  both countries, such as pollution, coastal rising and erosion, she strives to see what better ways we can predict these issues, mitigate, and adapt to them by using  engineering and environmental principles. In the summer of 2021, she interned at the Scripps Institute of Oceanography as a Data Visualization Intern for atmospheric  rivers data representation, where she discovered she wanted to continue working towards developing research skills in climate and ocean topics. This opportunity led  her to apply to the NOAA Lapenta Internship Program. In her free time, she enjoys going to theme parks and creating art based on the coastlines of San Diego. 

School: University of San Diego

Major: Integrated Engineering emphasis Sustainability

NOAA Affiliation: OAR/Geophysical Fluid Dynamics Lab

Research Title

Quantifying the Impact of Model Resolution on the Representation of Marine Heat Waves

Abstract

Marine Heatwaves (MHWs) are periods of time when there is a high accumulation of heat in the ocean surface boundary layer. MHWs are generated through coupled phenomena, influenced by both atmospheric and ocean processes. To classify a MHW, sea surface temperatures must be warmer than the 90th percentile of the  recorded climatology, last for at least five days, and the sea surface temperature must not decline under the 90th percent for more than two consecutive days. In this  study, we quantify the impact of ocean model resolution on the statistics of MHWs simulated in a coupled-climate model; specifically the simulated frequency,  duration, and cumulative intensity of MHWs. This work uses output from the National Oceanic and Atmospheric Administration’s (NOAA) Geophysical Fluid Dynamics  Laboratory’s (GFDL) coupled climate model, CM4. CM4 is a coupled atmosphere-ocean general circulation climate model and is configured with a 50km atmosphere  resolution. For this work, two configurations of the model are run with different ocean resolutions: an 1⁄8 of a degree high resolution run and a 1⁄4 degree companion run. The configurations are otherwise identical and run for 200 years with pre-industrial forcing. Here we analyze sea surface temperature output of the pre-industrial  control simulations from years 21-200 at a coastal point near Western Australia and compute statistics of the MHWs duration and cumulative intensity. The analysis is  repeated at locations off of Peru, Brazil, and the Pacific Northwest coast, all regions which have had significant and recent MHW activity. In all the locations, MHWs in  the high resolution simulation are shorter, more frequent, and stronger compared to those identified in the companion run. Our analysis of the differences in  representation of pre-industrial MHWs from simulations of varying ocean resolutions of CM4 could lead to a better understanding of present-day MHW events.

Portrait of Jared

Jared McGlothlin

Jared is a rising junior at the University of Washington majoring in Atmospheric Science. He loves to travel. 

School: University of Washington - Seattle

Major: Atmospheric Science

NOAA Affiliation: OAR/Pacific Marine Environment Lab

Research Title

Using Saildrones to Assess Atmospheric Reanalysis Air-Sea Heat Fluxes in the Tropical Pacific

Abstract

The ocean and atmosphere interact through air-sea fluxes, or exchanges of heat and energy across the air-sea interface, that have important implications on global  weather and climate patterns. To compensate for the limited availability of direct flux observations over the ocean, numerical weather prediction (NWP) reanalyses use  bulk algorithms based on state variables to estimate these fluxes. However these have been shown to have large errors and biases that can affect predictions. This  project aims to assess bulk flux estimates from multiple atmospheric reanalyses including NCEP Climate Forecast System Reanalysis (CFSR), ECMWF Reanalysis v5  (ERA5), NCEP/NCAR Reanalysis 1 (NCEP1), and NCEP/DOE Reanalysis 2 (NCEP2) through comparisons against new in situ observations collected by Saildrone Uncrewed Surface Vehicles (USV) in the central tropical Pacific. Preliminary results indicate that all of the reanalyses had a strong correlation between USV observations for net  heat flux and net SWR, but the correlation was much weaker (0.5 to 0.7) for other flux components and very weak (~0.25) for the net longwave radiation for NCEP1 and  NCEP2. The daily root mean square errors and biases for net heat flux range from 70 to 95 W/m^2 and -24 to -74 W/m^2 respectively, with CFSR doing the best and  NCEP2 doing the worst for both. However, the CFSR struggles on smaller timescales with errors almost doubling . All products showed increased disagreement in net  heat flux and its components near the Hawaiian Islands and in the ITCZ but increased agreement in the eastern equatorial Pacific cold tongue. Further work looking at  surface winds and currents is needed to understand their impact on bulk flux estimates.

Portrait of Ryan

Ryan Martz

Ryan is a senior at the University of Nebraska - Lincoln studying Meteorology with minors in Math, Computer Science, Spanish, and Applied Climate Science. He  was interested in an internship with the National Weather Service because of the part of the mission statement that talks about protecting life. Ryan’s career goals are  to work in the National Weather Service office in Duluth, MN where he wants to forecast winter storms. In his free time, Ryan enjoys running and most intramural  sports having played soccer since he was 9. He is also involved in the sustainability clubs and works on advocating for divestment from fossil fuels. 

School: University of Nebraska - Lincoln

Major: Meteorology and Climatology

NOAA Affiliation: NWS/NCEP Weather Prediction Center

Research Title

Preliminary Verification and Overview of Weather Prediction Center's Day 3-7 Hazards Forecasts

Abstract

The Weather Prediction Center (WPC) took over responsibility for the Day 3-7 Hazards forecast from the Climate Prediction Center (CPC) in early 2019. Since taking over  this product, there have been no studies done to assess the quality of the product or summarize seasonal characteristics of hazard forecast areas. This study seeks to  examine a climatology of the three different precipitation hazards issued in this product (Heavy Rain, Heavy Precipitation, Heavy Snow) along with a verification of their accuracy for the period of April 2019 through March 2022. We developed a climatology by looking at a spatial distribution of the different hazards in each season and  for each forecast day. For these climatologies, spring was defined as April - June, summer as July - September, fall as October - December, and winter as January - March. Hazards were verified against observed precipitation (Stage IV 24-hour Quantitative Precipitation Estimation (QPE) for Heavy Rain, National Operational Hydrologic Remote Sensing Center (NOHRSC) gridded 24-hour snowfall analysis for Heavy Snow, and merged QPE and NOHRSC snowfall data for Heavy Precipitation) contours that  matched the intensity requirements for hazard issuance. We used the average observed fractional aerial coverage of each hazard to work toward development of a  probabilistic forecast method to improve the utility of the Day 3-7 Hazards forecast for core partners.

Portrait of Jordan

Jordan MacIsaac

Jordan is a rising senior at Purdue University, majoring in Planetary Science and minoring in Russian. Initially entering her studies with a fascination of outer space,  she quickly found her passion within the wonders of our very own planet. Her coursework shifted more toward an environmental/climate focus, and is now hoping to  use her scientific background to implement meaningful improvement to the climate literacy of the general public. She was drawn to NOAA for the opportunity it  provided to dive into the science and research that is used to create the framework for environmental policy. In her free time, she enjoys weightlifting, music, and  baking. She hopes to continue her education into graduate school after graduating from Purdue in spring of 2023. 

School: Purdue University

Major: Planetary Science

NOAA Affiliation: OAR/Geophysical Fluid Dynamics Lab

Research Title

Investigation of Changes in Steric Sea Level Due to Antarctic Meltwater

Abstract

As global temperatures continue to warm under the influence of anthropogenic climate forcing, freshwater melt from glaciers and land ice contribute to sea level rise.  While the addition of mass to the oceans causes a direct rise in sea level, there are secondary sea level effects to consider. Thermosteric (temperature-dependent) and  halosteric (salinity-dependent) changes in ocean circulation contribute to a redistribution of subsurface heat and salt. Using results from idealized simulations  performed with the GFDL-CM4 numerical climate model, we analyzed simulations where fresh meltwater was supplied to the ocean off the Antarctic coast at a constant  rate (0.1 Sv) for 70 years with no other forcings present. We compare the results of this perturbation experiment with a long 500-year preindustrial control simulation  to analyze the anomalous change in sea level associated with the secondary impacts of Antarctic meltwater. Our results indicate that the meltwater forcing leads to a  robust increase in steric sea level off the coast of Antarctica, followed by a steric decrease in lower latitudes. The Antarctic meltwater also leads to a steric increase in  sea level that is present throughout much of the Atlantic basin. Thus, even though the meltwater forcing is localized in the Southern Ocean, there are significant remote  changes that extend into further basins. These findings can provide the basis for further investigation into the depth of these changes within the water column and highlight the importance of secondary influences of sea level rise from Antarctic ice sheet melt.

Portrait of Kimberly

Kimberly Mace

Kim is a rising senior majoring in statistics and minoring in ecology at the University of Florida. She became interested in NOAA after learning about the broad array  of skills and projects embraced by the administration, and being a Florida native sparked her interest in ocean exploration. In the future, she plans to pursue a Master’s  degree in Analytics and further the use of statistical analysis and machine learning in environmental habitat modeling in order to advance management and  conservation efforts. Kim also enjoys educating children and has an interest in creating environmental education programs and content through citizen science  initiatives. Kim loves to travel, read suspenseful novels, and spend time at the beach. 

School: University of Florida - Gainesville

Major: Statistics

NOAA Affiliation: OAR/Office of Ocean Exploration and Research

Research Title

Modeling the Habitat Suitability of Deep-Sea Sponges on the Blake Plateau

Abstract

Deep-sea sponges are vital organisms within deep-sea ecosystems, but they are vulnerable to many impacts of anthropogenic activities including commercial fishing, oil  extraction, and rising ocean temperatures. While the value of deep-sea sponges is known, little research aimed at sponge exploration or modeling exists. The goal of  this study was to expand upon the available literature and analysis on the distribution of deep-sea sponges, specifically in the Blake Plateau, located offshore of the  Southeastern United States. The habitat suitability of deep-sea sponges on the Blake Plateau was modeled and used to make predictions about the effect of seafloor  topography on the suitability of predicting sponge habitat. Seafloor topography and bathymetry data (mean depth, slope of the seafloor, rugosity, curvature, and  aspect) were generated from multibeam bathymetry collected by NOAA Ocean Exploration. Presences of sponges were mined from NOAA’s Deep Sea Coral Research  and Technology Program deep-sea coral and sponge database. Data were organized and cleaned in ArcGIS Pro, and maximum entropy modeling was used to create  maps and response curves that were analyzed to understand the suitability of different terrains and areas of deep-sea sponge locations. Modeling showed high habitat  suitability in the western region of the modeling area, with depth and rugosity as the primary driving factors of suitability; this model had an AUC value of 0.954 with a  standard error of 0.00126. In this study, depth serves a proxy for other predictors including water temperature, availability of light, and current strength. The results of  this study provide a foundation of knowledge for future research and pose important questions within the field of deep-sea sponge research and conservation. While  the study area is exclusive to the Blake Plateau, these results may be used to form hypotheses of sponge distribution in other regions and create foundational guidelines  for management practices.

Portrait of Madison

Madison Lytle

Madison is an undergraduate student at California Polytechnic State University in San Luis Obispo, where she is pursuing two B.S. degrees in Mathematics and Aerospace Engineering with plans to become a graduate student. She enjoys seeing how mathematics can inform us about the natural processes and structures  surrounding us, which lead to her interest in researching at NOAA. Her undergraduate research has focused on modeling dynamical systems and numerical analysis  applied to climate/paleoclimate modeling, non-linear waves, attitude determination and control systems (ADCS) for spacecraft, neural networks, and other research  areas. She was also a student lead for multiple projects and lab manager of the Cal Poly CubeSat Lab, a multidisciplinary undergraduate-based satellite research lab.  Growing up in the mountains of Colorado, she enjoys being outdoors to ski, rock climb, hike, and learn more about mycology. 

School: California Polytechnic State University

Major: Aerospace Engineering Mathematics

NOAA Affiliation: NESDIS Satellite Applications and Research

Research Title

Atmospheric River Identification Neural Network (ARINN) for SmallSat Observations

Abstract

In recent years the development of small-form satellites, such as CubeSats, has reduced the cost and complexity of missions, providing new opportunities for satellite  research. However, these missions in turn necessitate smaller instrumentation. In the case of microwave atmospheric sounders, this translates into fewer channels  limited to higher frequencies, as is the case for the Temporal Experiment for Storms and Tropical Systems Technology Demonstration (TEMPEST-D) and its follow-on  STP-H8 mission payload TEMPEST aboard the International Space Station (ISS). At the same time, the emergent technology of neural networks is becoming an  increasingly useful tool for analyzing satellite data. Here, we develop and assess an Atmospheric River-Identification Neural Network (ARINN) applicable to SmallSat atmospheric sounder data. Atmospheric rivers (ARs) are dynamic atmospheric structures that transport significant quantities of water vapor, resulting in weather events  that range from the critical replenishment of water resources to dangerous flooding. ARs may be identified through Total Precipitable Water (TPW) data retrieved from  brightness temperature measurements from SmallSats such as TEMPEST-D, making it a beneficial case study to investigate the potential of neural networks applied to  small satellite data. In this study, we train ARINN with historical TPW-based AR data from operational satellites such as SNPP/ATMS, evaluate the model accuracy, and  apply it to the TEMPEST-D TPW data. Results demonstrate ARINN’s successful identification of ARs from sample data sets with high accuracy, prompting its use for data  classification of TEMPEST-generated images to be released from the STP-H8 mission.

Portrait of Nicole

Nicole Luchau

Nicole Luchau is entering her senior year of undergrad at NYU studying environmental studies and public policy and management. She hopes to graduate in the  Spring of 2023 and continue her academic career with pursuing a masters in Marine Biology. Apart from her passion for the environmental field, Nicole loves cooking,  sewing, and fashion. 

School: New York University

Major: Environmental Studies

NOAA Affiliation: OAR/Atlantic Oceanographic and Meteorology Lab

Research Title

Improvements on the Subsurface Automated Sampler for eDNA (SASe)

Abstract

This summer, Nicole concentrated on the revival and improvements on the Subsurface Automated Sampler for eDNA (SASe). This machine is a recently invented water  sampler that is programmed to filter seawater on site at a specific time and day. After weeks of trouble shooting previously built SASe's, Nicole and her co-intern were  able to get 3 fully functioning units. These units were deployed at the Coral City Camera to collect eDNA samples from the reef under restoration. Nicole was also able to  build upon her microbiology lab skills by aiding one of her mentors in extracting DNA from samples, running PCR tests, and preparing DNA plates for sequencing. The  future of the SASes are bright as they allow for efficient eDNA collection without the need of a researcher being present. With a batch of 20 new SASes with peristaltic  pump and motor upgrades being built in the coming months, this sampler will be distributed to scientists at AOML to facilitate eDNA research.

Portrait of Olivia

Olivia Lee

Olivia is a rising senior at the University of Washington. She is pursuing a degree in atmospheric sciences with a concentration in meteorology. Olivia serves as an  officer of the UW chapter of AMS and is a student volunteer at the NWS office in Seattle. She is involved in undergraduate research in which she studies turbulence in  the boundary layer. Having grown up in Texas, Olivia has experienced some pretty interesting weather and developed an interest in meteorology at a young age.  Outside of her studies, Olivia enjoys playing the piano and bass and playing with her dogs. 

School: University of Washington - Seattle

Major: Meteorology

NOAA Affiliation: OAR/ESRL Global Monitoring Laboratory

Research Title

Calibration of the SPN1 Sunshine Pyranometer against Reference Radiometric Measurements Using a Shading and Unshading Methodology

Abstract

The demand for precise and reliable solar radiation measurements while minimizing cost and maintenance has increased as the applications of solar renewable energy  become more ubiquitous. Containing no moving parts and requiring no complex alignments, the Sunshine Pyranometer (SPN1) estimates Global Horizontal Irradiance  (GHI) and Diffuse Horizontal Irradiance (DHI) via seven thermopiles that measure solar irradiance under a unique shading mask. Along with low power requirements and  minimal maintenance, the absence of moving parts allows the measurement of solar components with the SPN1 on moving platforms like aircraft, ships, and  autonomous vehicles with less maintenance and points of failure than an instrument that requires a rotating shadowband or tracking system. As opposed to a  radiometer with a single sensor, the SPN1 is subject to several sources of error such as detector mismatching and the dome lensing effect. Understanding and  accounting for these uncertainties is essential to data quality. Because this instrument uses seven sensors that are shaded at different times, it is more challenging to  calibrate the SPN1 than a typical pyranometer. This project proposes a method to calibrate each of the seven sensors individually using a method of shading and  unshading. The SPN1 rotates on a platform and a minimum and maximum irradiance are selected for each sensor per cycle. The Direct Normal Irradiance (DNI) is  obtained and compared against a standard reference and a calibration factor is determined.

Portrait of Joshua

Joshua Kumm

Josh is a rising senior at Embry-Riddle Aeronautical University in Daytona Beach, FL, pursuing a B.S. degree in Meteorology, a second major in Computational  Mathematics, and a minor in GIS. He’s been interested in the weather since he was little, and growing up in New England, with its unpredictable weather and crazy  nor’easters, certainly fueled that passion. Completing this internship has reinforced his desire to work for NOAA in the future, specifically at EMC building the models  used to forecast our weather. Outside of school and work, Josh enjoys working out at the gym, watching/playing sports, partying, and going to the beach. 

School: Embry-Riddle Aeronautical University

Major: Meteorology Computational Math

NOAA Affiliation: NWS NCEP Environmental Modeling Center

Research Title

Validation of JEDI Software for Observational Data Assimilation

Abstract

Data Assimilation (DA) is a critical component of model initialization, or providing models with a best estimate of the initial state of the atmosphere by incorporating  weather observations into the numerical weather prediction (NWP) models used for weather forecasting. DA involves taking a real observation in a specific location,  sampling the model state and using a forward operator to interpolate to that location, which produces a model-simulated observation, then comparing it with the real  observation, and adjusting the model by the difference between the two, called the innovation. The Environmental Modeling Center (EMC) uses the Gridpoint Statistical  Interpolation (GSI) system to perform data assimilation, but the Joint Effort for Data assimilation Integration (JEDI) project aims to overhaul existing software  infrastructure and replace it with a new system. It is very important that the results of the JEDI data assimilation software are consistent with the existing GSI system.  Here we seek to contribute to the greater JEDI project at EMC by validating the JEDI software infrastructure for use in a future version of the Global Forecast System  (GFS). Validation is done primarily by examining plots of: 1) JEDI simulated observations, compared with those produced by GSI, and 2) difference between JEDI  simulated values and the true observations, compared with the difference between the same observations but with GSI simulated values. These sets of plots are  examined to verify that there are no significant discrepancies or errors present in the JEDI data. The end goal of this work is to ensure the JEDI software is working  properly, producing results that are in line with those produced by GSI, and to report any glaring errors/discrepancies so that they may be corrected by EMC at a later  date.

Portrait of Nikki

Nicole “Nikki” Kozel

Nikki is a rising senior at Purdue University working on a degree in Electrical Engineering. She very much enjoyed her internship with the GOES-R Office and hopes  to continue working for NOAA in the future. In her spare time she enjoys drawing and playing video games. 

School: Purdue University

Major: Electrical Engineering

NOAA Affiliation: NESDIS GOES-R Office

Research Title

AWIPS Analytics Analysis

Abstract

Forecasters across the country are using the Advanced Weather Interactive Processing System (AWIPS) every day to make informed weather predictions. Many products  exist in AWIPS for forecasters to use but having so many in the program makes the interface difficult to navigate and takes up bandwidth to provide. In order to reduce  the number of products that are not useful, the team working with theGeostationary Operational Environmental Satellites (GOES-R) need a way to view the usage of  their products. This will also help them provide products that better fit the forecasters’ needs. Utilizing Amazon’s DynamoDB that stores AWIPS session information in  ten-minute intervals, a graphical user interface (GUI) was created—named the AWIPS Analytics Atlas (AAA)—to make sorting through the data easier and more  understandable. The creation of the GUI was done through the VLab User-Defined Graphical Framework (VUGraF)—the Total Operational Weather Readiness-Satellites  (TOWR-S) team’soriginal software. During the creation of AAA, VUGraF also received several updates to improve the capabilities of the software to display the different  data processing methods. Based on a user’s inputted time range and a selected sorting method by weather forecasting office (WFO) or product, data is queried from the database and analyzed to create multiple different displays that can be toggled. The displays include a timeline to find trends in users’ usage as well as a table  and graph showing different products’ or sites’ percent usage of the total selected time. With AAA, the GOES-R team can better understand the usage of their products  and determine what products do not need to be provided to AWIPS.

Portrait of Lydia

Lydia Knox

Lydia has worked as a broadcast meteorologist since graduating from Penn State in 2017 with a degree in meteorology. While working, she recognized she wanted  to do more to combat climate change and decided to pursue a master’s degree in environmental studies at SUNY ESF (Environmental Science & Forestry). Throughout  her coursework, Lydia gained knowledge about climate change and climate related risks, sustainability practices, and renewable energy and technologies. Her goal is to  find a position where she can have a pivotal role in climate action and mitigating the effects of a warming planet. Additionally, Lydia loves being outdoors. She has skied  since she was two and Irish danced for 10 years. She also loves to swim, bike, workout, and play tennis. 

School: SUNY College of Environmental Science and Forestry

Major: Environmental Studies

NOAA Affiliation: OAR Climate Program Office

Research Title

Steps to Accelerating Community Climate Action – An Innovative Toolkit Engaging Whole Communities through Inter and Trans-disciplinary Work

Abstract

Addressing climate change with the speed and scale that science and justice demand requires a massive mobilization of individuals, institutions, businesses, organizations, and governments. Tools, resources, knowledge, and effort from disparate fields will be critical to meeting the challenge. Leaders at all levels have been  and continue to implement climate action plans to address climate threats. However, many fail to encourage organic, community-driven climate action or the specific  practices communities and individuals can take to work towards meeting climate goals. This session will discuss the lessons that can be learned from these plans and  opportunities to accelerate just, locally-driven climate action by educating students and educators, providing training and workforce development, communicating  effectively, providing public access to climate information, and engaging the public in decision making. Under the NOAA Climate Program Office, the Steps to  Accelerating Community Climate Action toolkit was created to bring together reflections and address these opportunities. The goal was to create an easier way for  communities to reach their climate goals and enhance community action through inter and trans-disciplinary work. This toolkit was based off of NOAA’s U.S. Climate  Resilience Toolkit and through its use, community leaders and institutions can mobilize available resources across their community to engage residents, businesses, schools, and other institutions to accelerate action towards climate goals. Leaders will be able to assess resources and the potential impacts of different practices. The  toolkit and supplementary guide provide best practices on how to integrate different knowledges and disciplines and engage in inter and trans-disciplinary work.  Through the use of the guide and toolkit, community leaders can enhance engagement in climate action and build healthier, more equitable, more resilient and  regenerative communities in an effective way.

Portrait of Gabriela

Gabriela Jeliazkov

Gabriela is a rising senior at the University of California Berkeley with a very keen interest in research at GLERL. She enjoyed exciting research while in the Lapenta internship, inclusive of going in a small plane to take hyperspectral imagery of Lake Erie. She loves traveling, hiking and scuba diving. 

School: University of California at Berkeley

Major: Molecular Environmental Biology

NOAA Affiliation: OAR Great Lakes Environ Research Lab

Research Title

Rapid Detection of Cyanobacteria Blooms in the Great Lakes with Emerging Technologies

Abstract

Phytoplankton play an important role in the formation of episodic harmful algal blooms (HABs), which plague the Great Lakes during the late spring to fall period. Water  treatment is informed by the presence of both harmful and non-harmful algal blooms; proper differentiation between the two is essential to ensuring proper water  treatment. Current monitoring of the Great Lakes is inadequate for differentiating between toxic and non-toxic phytoplankton groups, and only indicates presence or  absence of HABs. A phytoplankton community composition algorithm previously only applied to Monterey Bay, CA will be applied to airborne hyperspectral imagery  taken over Lake Erie in order to assess how accurately it detects and identifies phytoplankton community composition types. This algorithm, called Phytoplankton  Detection with Optics (PHYDOTax), takes a spectral library based on laboratory optical measurements and uses them to decompose the signal into phytoplankton groups. Accuracy will be assessed by comparing PHYDOTax outputs to both in situ water samples for pigment analysis and Fluoroprobe data. The accurate detection and  identification of phytoplankton groups informs the ecology of the Great Lakes by characterizing phytoplankton community composition, and is crucial to ensuring  effective water treatment and ecosystem modeling efforts.

Portrait of Alexander

Alexander Hrabski

Alex is a graduate student who loves to study wave physics and computational fluid physics. He became interested in NOAA after learning about its mission and  the way it uses fluid physics and software engineering to solve important problems. Alex has been working with MDL to improve post processing for the Extratropical  Storm Surge product via Fourier analysis. He enjoys outdoorsy activities like hiking and climbing, likes visiting museums and historic places. He hopes to make a career  of blending physics and data-based modeling. 

School: University of Michigan – Ann Arbor

Major: Naval Architecture Marine Engineering

NOAA Affiliation: NWS OSTI Meteorological Dev Lab

Research Title

A Fourier-based Post-processing Scheme for Improving NWS Extra-tropical Storm Surge Guidance

Abstract

The National Weather Service's (NWS) Extra-Tropical Storm Surge (ETSS) model provides Total Water Level (TWL) guidance in coastal areas due to storm surges and  tides. TWL observations at nearly 300 stations are used by the ETSS model, and these measurements are applied to assess error in the model’s station-based guidance  (i.e., anomaly). A closer look at the anomaly time series reveals that, for a subset of stations, the ETSS error is dominated by oscillations at the tidal constituent  frequencies. At many of the affected stations, this type of error is always present, and these erroneous oscillations can sometimes exceed 1 foot in peak-to-trough  amplitude. 
To address the issue, we developed a post-processing methodology that detects and mitigates this form of error. First, we established a Fourier-based signal-to-noise  indicator that determines when a station has clear oscillations in its anomaly. We then designed a filtering strategy that connects the station anomaly signal to the tidal  signal using time series data from the recent past. Once generated, the filter can be used to remove the erroneous oscillations from the TWL guidance. To assess the  filter's skill, we measured performance against historical data, with special attention placed on storm surge events. The result is a reduction of the root mean square  error of several inches to a foot, depending on the severity of the erroneous oscillations at a given station. These improvements correspond to a reduction in the  average relative error of station-based TWL guidance of approximately 5% to over 50% when compared to the operational ETSS post-processing scheme. This  presentation will detail this work and will conclude with comments on the cause of the erroneous oscillations and suggestions for future work.

Portrait of Harrison

Harrison Hayes

Harrison is a rising senior at the University of Miami working on a major in Meteorology. He has a lot of interest in NOAA inclusive of not just NHC but also WPC and SPC. 

School: University of Miami

Major: Meteorology

NOAA Affiliation: NWS NCEP National Hurricane Center

Research Title

50-Knot Wind Radii Comparisons: SAR and NHC

Abstract

Forecasters at the National Hurricane Center rely on radar, model consensus, and satellite references to construct the wind radii profiles of storms in real time. Synthetic Aperture Radar (SAR) from the Center for Satellite Applications & Research (STAR) measures the surface winds of tropical cyclones due to its ability to peer through the clouds down to lower levels. Incorporating more SAR observations (when applicable) may facilitate the forecasting process. Thus, the project showcases the similarities  and discrepancies of 50-knot wind radii data between SAR observations and the National Hurricane Center’s HURricane DATabase 2nd Generation (HURDAT2) archive by superimposing data in the form of quadrant wedges onto SAR subplots using Python.

Portrait of Holly

Holly Haught

Growing up in Las Vegas, Nevada, and eventually moving to Frederick, Maryland, the different climate conditions really sparked Holly’s interest in weather and the  ocean (since water does not really exist in Las Vegas). She has always been fascinated by climate change and wants to improve the planet’s current conditions. At  NOAA, she is working with unstructured grids for the spectral wave model WAVEWATCH III. In addition to being a student at UMD, Holly is also an Intramural Sports  Supervisor and referees many sports such as flag football, soccer, and softball. In her free time, she likes to hike, play sports, and binge-watch TV shows with her cat. 

School: University of Maryland – College Park

Major: Atmospheric and Ocean Science

NOAA Affiliation: NWS NCEP Environmental Modeling Center

Research Title

Towards a Global Wave Model System on Unstructured Meshes

Abstract

WW3 is a third-generation spectral wave model that can be used in large-scale modeling of wave behavior and climate (WW3DG 2019). The WW3 model first began  using single rectilinear grids and was later expanded to support multi-grid capabilities. However, a single unstructured grid can be utilized instead. Unstructured meshes  have allowed the model to run more efficiently due to the geographical domain decomposition parallelization algorithm and its implicit numerical solver. The domain  decomposition method enables us to distribute the workload to several computational nodes efficiently in parallel environments. The implicit numerical solver allows larger time step without violating CFL constraints for small element sizes. As a result, it will enable the ability to resolve nearshore physics, leading to more  accurate model outputs (Abdolali et al. 2020). However, unstructured meshes are currently being used for coastal applications and it is not widely assessed for global  applications. Within this study, three global unstructured meshes have been tested in stand-alone mode (forced by hourly wind and current and daily ice) for the period  of Sep 24 - Oct 24 2021. In addition to contemporary physics for the global application including ST4 source term, discrete interaction approximation (DIA), bottom  friction, and depth-induced breaking, obstructions are considered to incorporate the dissipative effects of unresolved islands and geometries. In this study, the  Unresolved Obstacles Source Term (UOST), a term that parametrizes the dissipative effects of unresolved features in the ocean is utilized. To incorporate the UOST,  meshes were post-processed with alphaBetaLab, and obstruction files were generated (Mentaschi et al. 2020). Comparison between the model outputs on different  meshes (with and without the use of UOST) and satellite and buoy observations will be presented at the conference. For validation, we will utilize ww3-tools to  generate statistics including RMSE, bias, relative bias, scatter index, Hanna and Heinold parameter (HH), correlation coefficient, and standard deviation for the satellite  and buoy data.

Portrait of Clara

Clara Haughey-Gramazio

Clara is currently a master’s student at the University of Miami working on an artificial reef project, in which she will alter alkalinity levels within varying concretes  to see which will attract the settlement of coral larvae. She graduated from Stony Brook University with a B.S. in marine science. Being exposed to research at sea, and  seeing how our waters are effecting organisms as small as bivalves pushed Clara to want to further her education and career in OA and oceanography. She was  fortunate enough to be a part of the OAR Department of NOAA working on the analyzation of the temporal and spatial coverage of NOAA’s Ships of Opportunity  Program. Her hobbies include surfing, traveling and hiking. She hopes to travel the world while also doing what she loves, which is studying the ocean and its changes  throughout a climate crises, and educating others on why it is so important. Clara loves scuba diving, hiking and surfing. 

School: University of Miami

Major: Marine Conservation

NOAA Affiliation: OAR Ocean Acidification Program

Research Title

Spatiotemporal Coverage of Surface Underway pCO2 Data within U.S. Large Marine

Abstract

NOAA’s Ships of Opportunity program provides underway sea surface data including pCO2 , temperature, and salinity in an effort to better constrain air-sea CO 2 flux  and track ocean acidification. These observations span across 6 decades helping us document and predict how oceans respond to and impact the earth’s climate system  and better understand the risk ocean acidification poses to the nation’s living marine resources. They serve as a critical element to NOAA’s carbon observing and ocean  acidification monitoring networks providing foundational carbonate chemistry data globally. Here we report on the findings from an analysis examining the historical  coverage of these observations obtained explicitly within the U.S. coastal Large Marine Ecosystems to understand how the network has expanded over the past decade,  identify persistent coverage gaps, and better understand the factors controlling coverage dynamics. In this project, spatiotemporal data coverage is examined using Surface Ocean CO2 Atlas (SOCAT) from January 2017 to December 2021. The data is collected from government research, fishing, and other recreational vessels at two  minute intervals with thermosalinographs and other sensors maintained by NOAA PMEL and AOML with support from NOAA’s OAP and GOMO program offices. The  analysis targets the U.S. Coastal Large Marine Ecosystems: East Bering Sea, Gulf of Alaska, California Current, Gulf of Mexico, Southeast and Northeast U.S. Continental  Shelves, Beaufort Sea, Chukchi Sea, West Bering Sea, Insular Pacific- Hawaiian, and Caribbean Sea. These areas encompass river basins, estuaries and continental shelves and house the nation’s fisheries. The data was downloaded, binned and sorted using R-Studio. A .25 x .25 degree grid was created on GIS and mapped to each of  the LME’s to determine how many cells contained valid SOOP retrievals in each of these areas both annually and seasonally from the overall grid count versus how many grid boxes contained a point within them. Valid revivals within the project were considered flag 2 which contains a salinity, temperature and CO2 measurement making it a complete data set. Preliminary finds show that the greatest spatial coverage over the period of analysis has been within the California Current and Northern  Bering while the California Current, Gulf of Mexico and Gulf of Alaska provided the greatest seasonal resolution. Findings also demonstrate a robust expansion of  coverage throughout the network as continued to grow. Major gaps remain in the coverage of the Insular-Pacific, Aleutian Island, and SE US Continental Shelf.

Portrait of Victoria

Victoria Grisson

Victoria Grisson is a rising senior at the University of Texas at Austin, majoring in freshwater and marine science. Growing up, she has always had an interest in marine and environmental science so working with NOAA has given her the perfect opportunity to explore these interests more. Furthermore, this organization has  allowed her to apply her knowledge to real world scenarios. Although she has not found her specific niche in research yet, she plans to attend graduate school once  that particular field she wishes to study is found. 

School: University of Texas at Austin

Major: Freshwater and Marine Science

NOAA Affiliation: OAR Atlantic Ocean Meteorology Lab

Research Title

MST of Fecal Bacteria in South Florida Beaches to Investigate the Impacts of Changes to Beach Management and Bather Activity during COVID-19

Abstract

Microbial Source Tracking (MST) is the technique of identifying the host animal sources that contribute to fecal contamination by measuring the relative abundance of  their specific Fecal Indicator Bacteria (FIB) in the environment. It has been observed that exposure to fecal contamination in areas from different host sources can have  different levels of potential pathogen exposure risk to humans who are using these waters for recreational activities. Over time, risk-based water quality thresholds for  abundance of different FIB genetic markers have been derived from past quantitative microbial risk assessment (QMRA) studies to assess the relative risk of exposure  during recreational beach use and to establish recommended risk-based thresholds (RBT) of exposure to particular genetic markers to guide water quality management.  This study used an array of quantitative PCR assays to measure the levels of host-specific FIB genetic markers in environmental water and sand samples in an effort to  identify and quantitate host sources of fecal contamination at popular beaches in South Florida that had undergone changes in beachgoer behavior and beach management due to COVID-19. Furthermore, recommended RBT were used to determine how changes in beachgoer activity and bather density due to the pandemic  has impacted microbial contamination of beaches in Miami, as well as to investigate the exposure risk of these beaches by measuring the levels of FIBs for three gene  markers: HF183, DogBact, and Gull2. Observed results supported the hypothesis that beaches should be cleaner of human and dog FIB markers during beach closure as a  majority of the sites had low or undetectable levels of their respective markers during the shut down. However, levels exceeding the RBT of HF183 were observed on  certain dates when beaches were reopened and had high bather density levels, highlighting the idea that bather shedding may be one of the major sources of  contamination, especially in the near-shore water column. Additionally, elevated levels of Gull2 were found during closure times across all sites and dates,supporting the hypothesis that beaches were dominated by seagulls in the absence of humans. These findings will help the Division of Environmental Resources Management  with future beach action and management decisions.

Portrait of Alyssa

Alyssa Griffin

Alyssa will be a senior at Plymouth State University studying Meteorology with a minor in Technical Mathematics. She was born and raised in Londonberry NH and  has always had an interest in weather. Alyssa had an opportunity to be an intern with the Emergency Management Dept of Nashua NH; she also participated in a  summer research program creating a specialized climatology. She does plan on attending graduate school and hopes to do her thesis on a topic related to climate  change. She enjoys knitting, going for walks, and beating her family in cribbage.

School: Plymouth State

Major: Meteorology

NOAA Affiliation: NWS NCEP Weather Prediction Center

Research Title

Analysis of the Maximum Rainfall and Timing Product Forecast Activity during the Flash Flooding and Intense Rainfall Experiment 2022

Abstract

The Flash Flooding and Intense Rainfall Experiment (FFaIR) experiment is run annually through the HydroMeteorology Testbed. One of the goals of the experiment is to  utilize real time experimental guidance to forecast flash flooding and intense rainfall. This is done through various forecasting activities such as the Maximum Rainfall  and Timing Product (MRTP). The MRTP required participants to draw contours that represented six hour rainfall accumulation for a domain and time that was  determined collaboratively by the participants. Performance diagrams were created for each of the participants as well as for the models being evaluated in FFaIR to  compare in which situations does one outperform the other. For each participants’ MRTP forecast and the corresponding model forecasts, statistics such as the Critical Success Index (CSI), Probability of Detection (POD) and False Alarm Ratio (FAR) were calculated to create the performance diagram. This presentation will summarize  participant and model performance for valid MRTP times, both daily and weekly, and discuss factors that influenced forecasters CSI scores. For instance, an impacting  factor on forecaster performance was the spatial coverage of the rainfall event; when spatial coverage was larger, CSI scores were generally higher and vice versa for  smaller spatial areas.

Portrait of Elena

Elena Goodspeed

Elena is a rising senior at the University of Colorado at Boulder where she is studying Atmospheric and Oceanic Science. As an active environmentalist, she enjoys  spending time outdoors and educating people on climate change. Working under the guidance of Dr. Yung-Kuen Lee, she is analyzing the atmospheric waves produced  by the Hunga Tonga-Hunga Ha'apai volcano which erupted on January 15, 2022. Elena’s hobbies include snowboarding and hiking. 

School: University of Colorado Boulder

Major: Atmospheric Ocean Science

NOAA Affiliation: NESDIS Satellite Applications and Research

Research Title

Hunga Tonga-Hunga Ha’apai Eruption Observed by Satellite Microwave Measurement

Abstract

On January 15, 2022, the Hunga Tonga-Hunga Ha’apai submarine volcano erupted in the south Pacific Ocean. The pressure and acoustic gravity waves produced by this  powerful volcano propagated outward in concentric circles around the Earth for several days in both the troposphere and stratosphere. Using the MIRS (Microwave  Integrated Retrieval System), and the satellites NOAA-20 and SNPP ATMS measurements, the retrieved atmospheric temperature fields are analyzed to determine how  the Hunga Tonga-Hunga Ha’apai eruption was reflected in satellite microwave radiation and the MiRS retrieval based on the microwave observation.

Portrait of Cristian

Cristian Gonzalez Hernandez

Cristian is working on his degree in Meteorology in western North Carolina. He plays tennis for UNC Charlotte; in that respect he plays tennis almost every day. He is also an amateur photographer who loves landscape and street photography. 

School: University of North Carolina – Charlotte

Major: Meteorology

NOAA Affiliation: OAR ESRL Global Systems Lab

Research Title

Development of scale-aware boundary layer turbulence schemes for use in operational models

Abstract

TBD

Portrait of Skylar

Skylar Gertonson

Skylar is completing her Meteorology degree and has the intent of working on an MS. Her lifelong work of helping others, love of severe weather, and specific  interests in forecasting and research led her to interning with the Storm Prediction Center. She hopes to offer her services to the National Weather Service to help local  populations with all things weather! And, eventually, she would love to work with the Storm Prediction Center or another national center. When Skylar isn’t working or  studying, she enjoys playing her favorite games, going on long walks/drives, and spending time with her pets. She also loves going to the beach and taking photos of the  clouds and sky! 

School: Valparaiso University

Major: Meteorology

NOAA Affiliation: NWS NCEP Storm Prediction Center

Research Title

Tornado Outbreak Predictability: How Far Can We Take It?

Abstract

Many definitions of tornado outbreaks exist in scientific literature, and their definitions become more complex with improving science. Tornado outbreaks present a  significant threat to life and property necessitating further analysis of their predictability. In this study, tornado outbreaks are identified from 2000-2019, using a  Practically Perfect Hindcast (PPH) technique, which uses tornado reports to define probability contours that would resemble a “perfect” outlook from the Storm  Prediction Center (SPC) . An outbreak day is defined as one containing a 45% PPH contour created from an analysis of all tornado reports or a 15% PPH contour created  from an analysis of only EF2 and greater tornado reports. A climatology of tornado outbreak events is created to investigate their spatial distributions and seasonal  frequencies. From this set of outbreak days, predictability is assessed using the Global Ensemble Forecast System (GEFS) reanalysis and reforecast data for a 16-day  period leading up to each event. Predictability of these tornado outbreaks is evaluated through an analysis of 500-mb geopotential height anomaly correlations over  the contiguous United States. An anomaly correlation coefficient (ACC) of 0.6 or higher is used to determine a skillful forecast, and the GEFS shows forecast skill out to 7- 8 days on average for these outbreaks . The predictability of the five largest outbreaks in our dataset is compared to that of the five smallest outbreaks. Results show  that the largest outbreaks are associated with skillful forecasts at longer lead times when compared to the average of all outbreaks. This result may give forecasters  greater confidence in the GEFS’ predictions, which could lead to improved forecasts in advance of dangerous outbreak events.

Portrait of James

James Frech

James is a rising senior at UMD majoring in Mathematics with concentration on Statistics, graduating in late 2023. He enjoys analyzing data through programming  languages such as Python and R. He plans on working on an MS degree in Machine Learning. He has profound interests in climate change and renewable energy  inclusive of offshore wind energy. In his free time he enjoys guitar, skiing, working out, golf and much more. 

School: University of Maryland College Park

Major: Mathematics and Statistics

NOAA Affiliation: NESDIS National Centers for Env Info (NCEI)

Research Title

NOAA/NCEI Blended Winds for Offshore Wind Energy

Abstract

Offshore wind farms are a low cost, efficient technology for green energy. They deliver significant economic benefits through manufacturing and operation, and  importantly can be deployed rapidly at scale. Offshore wind also offers a route to opening up access to renewable energy for a global population, majorly clustered  around coastal locations. Few studies have shown that the offshore winds at the hub height (of the wind turbines), is on an average 90% higher than over land.  America’s fledgling offshore wind sector has been growing over the past few years. There are two operating projects on the East Coast and 12 projects in the  development phase. According to the Wind Vision document of the Department of Energy, the contribution of offshore wind energy will be ~22 GW by 2030 and ~86  GW by 2050 in the US. The US National Oceanic and Atmospheric Administration's (NOAA’s) National Centers for Environmental Information (NCEI’s) Blended Seawinds (NBS) product is an important element in NOAA’s Blue Economy Strategic Plan, offshore renewable energy, marine transportation, marine ecosystem and fisheries,  among others. The NBS version 2.0 uses multiple satellite resources, and reanalysis data to develop a blended sea surface (10m) vector winds on a global 0.25 deg regular grid for several time resolutions: (6-h, daily, monthly, and climatology) andcan resolve hurricane scale winds. A suite of wind field resources is proposed and  developed over the USA coastal region, that includes wind roses, wind speed maps, wind speed frequency distribution, Wind Power Density, Effective Wind Speed  Occurrence, and Rich Level Occurrence and their Trends. These wind energy resources will help stakeholders in their decision making related to renewable energy  development. Results show wind speeds at ~100 m (hub height) in these offshore stations have a mean bias of ~0.62 m/s with a standard deviation of ~3.29 m/s relative  to ERA5 reanalysis data. The wind speeds at several heights are also validated against the National Renewable Energy Laboratory (NREL) Wind Integration National  Dataset (WIND) toolkit, that includes meteorological conditions and turbine power over major offshore locations. Comparison with NREL 100 m winds gives a mean  bias of ~1.42 m/s and standard deviations of ~3.25 m/s over the currently operational wind farms off the US coast.

Portrait of Rebecca

Rebecca Foody

Rebecca Foody is a rising senior at Cornell University, where she is studying to receive her B.S. in Earth and Atmospheric Sciences with a concentration in Climate  Science and a minor in Climate Change. In addition to her studies, she is President of Engineers for a Sustainable World at Cornell, an undergraduate researcher studying  the reliability of offshore wind power, and a dog sitter with Guiding Eyes for the Blind. Her hobbies are dog sitting with Guiding Eyes for the Blind and painting. 

School: Cornell University

Major: Earth and Atmospheric Sciences

NOAA Affiliation: OAR Atlantic Oceanographic Meteorology Lab

Research Title

Improving Air-Sea Surface Turbulent Heat Fluxes Using Concurrent Shipboard Measurements

Abstract

Air-sea surface turbulent heat fluxes are crucial to forming accurate weather and climate predictions. However, there is considerable disagreement among current  reanalysis products. The goal of this study is to assess biases in these products using concurrent shipboard measurements of surface air temperature (SAT), barometric  pressure, relative humidity (RH), and upper ocean temperature that have been taken along two transects in the North Atlantic since 2020 as part of the eXpendable Bathy Thermograph (XBT) project. Following a quality control procedure, the hourly averaged data from shipboard measurements were compared with hourly ERA5 and  6-hourly NCEP2 reanalysis data, which were interpolated to the locations and time of the XBT profile data. Mean biases among the three products are not statistically  significant for all variables except a cold bias in the NCEP2 SAT. In addition, the correlation between the shipboard measurements and the reanalyses are high (r>0.9) for  all variables except for RH, which is slightly lower between shipboard and ERA5 data (r~0.78), and much smaller between NCEP2 and the other two products (r=0.44 for  shipboard and r=0.41 for ERA5 data). The collocated data were then used to compute the surface latent and sensible heat fluxes in three scenarios: using 1) a  combination of XBT, meteorological stations, and ERA5 data, 2) exclusively ERA5 data, and 3) exclusively NCEP2 data. Compared to the shipboard-based estimates,  ERA5- and NCEP2-based fluxes show positive biases of 34 ± 41 W/m2 (ERA5) and 71 ± 61 W/m2 (NCEP2) for the latent heat flux and 5 ± 9 W/m2 (ERA5) and 22± 25  W/m2 (NCEP2) for the sensible heat flux. However, only the bias in the NCEP2 sensible heat flux is statistically significant due to cold bias in NCEP2 SAT. Overall, ERA5- based fluxes agree better with the shipboard estimates with correlations of about 0.9 for both latent and sensible fluxes, whereas the correlations of NCEP2-based  fluxes with the shipboard estimates are somewhat lower at about 0.75.

Portrait of Conor

Conor Finneran

Conor is a rising junior at the University of Washington, one of many interns who is a Huskie. He is very much interested in satellites and Java scripting and sees so  much potential with the STAR program of NESDIS. In his spare time Conor enjoys gardening and sewing.

School: University of Washington - Seattle

Major: Atmospheric Science

NOAA Affiliation: NESDIS Satellite Applications and Research (STAR)

Research Title

AI-based Voice Control Frame Development for a Web-based Integrated Calibration and Validation System Long-term Monitoring System in NOAA STAR

Abstract

Conor could not present at workshop due to health concerns not related to COVID. He did a great mount of work through late July and we are proud of him.

Portrait of Rachel

Rachel Fadaka

Rachel is working on her BS in Computer Science at UMBC. She will also pursue an MS in Cybersecurity starting in late 2023. Rachel has always loved computers and enjoyed her opportunity with NWS. In her spare time she enjoys watching TV, reading, baking and cooking. 

School: UMD Baltimore County

Major: Computer Science

NOAA Affiliation: NWS OPPSD Central Processing AWIPS

Research Title

Developing and Implementing Software Solutions for AWIPS

Abstract

Weather forecasters at more than 130 National Weather Service (NWS) offices around the country have relied on Advanced Weather Interactive Processing System  (AWIPS) software to make weather forecasts and dispense highly reliable advisories. AWIPS is a computer system that ingests and displays meteorological, hydrological,  satellite, and radar data. It’s a mission-critical system, often referred to as the National Oceanic and Atmospheric Administration’s (NOAA) Cornerstone IT system,  meaning recurring updates and new releases are needed as time goes on and new requirements arise. As far as architecture goes, AWIPS is primarily written in Java and  consists of a frontend and a backend. Common AWIPS Visualization Environment (CAVE) is the frontend, used for rendering and analyzing data for AWIPS, and  Environmental Data Exchange (EDEX) is the backend data server, the main AWIPS application for ingesting, decoding, and storing data. During my ten weeks as a Lapenta intern at the NWS’ Office of Central Processing, I learned how to develop and implement software solutions for small defects. With help from the NWS Office of Central  Processing’s AWIPS Software Development Team (ASDT), I was able to work on four changes to the AWIPS software baseline. These changes were in response to  Discrepancy Reports (DRs), documented describing issues found when using AWIPS. The DRs described information like the issue’s priority and impact, the required  behavior of the solution, and testing instructions. I used this key information when examining multiple DRs to decide which would be best suited for my skill set.  Ultimately, I was able to reduce the DR backlog, and by working on DRs that have been unresolved for up to two years, I was also able to provide long-awaited fixes. Fixes  that will be put into an upcoming AWIPS release and hopefully eliminate the need for overrides put in place in sites across the country. Another significant outcome  would be the reduced amount of manual editing forecasters will do moving forward, saving valuable forecaster time.

Portrait of Lexy

Lexy Elizalde

Lexy recently obtained her B.S. in Atmospheric and Environmental Sciences from SDSMT. She will be working on her MS in Atmospheric Science at SDSMT researching the effects of wildfire smoke on ozone levels along CO Front Range. She spent 2 years volunteering at the NWSFO at Amarillo TX, was an REU intern in Norman OK in 2021, is a member of AMS, and works with a Complex Incident Management Team. In her free time, Lexy likes to chase storms, cook, fish and hike. 

School: South Dakota School of Mines and Technology

Major: Atmospheric and Environmental Science

NOAA Affiliation: NWS NCEP Aviation Weather Center

Research Title

Automated Determination of Tropopause Heights for Improved Aviation Warnings and Forecasts (Recorded)

Abstract

Knowing the location of the tropopause is necessary for aviation weather forecasting, although this can be a laborious task and is subject to forecaster bias. Currently,  the Aviation Weather Center (AWC) is responsible for issuing Significant Meteorological Information (SIGMET) bulletins for a variety of weather hazards including  turbulence, the altitude of which the tropopause level plays a key role in. AWC meteorologists can use GFS-derived determinations of the tropopause on the NAWIPS  software, including the World Meteorological Association (WMO) lapse-rate, potential vorticity, and hybrid of the two to create hand-drawn depictions of the transition  layer. The end-result is meant to aid pilots in averting regions of turbulence and entrance to the stratosphere, as this could allow ozone infiltrated air to enter the cabin  leading to ozone scrubbers needing to be turned on. This project investigates several tropopause-level clear air turbulence SIGMET cases for verification and investigates  the application of current and new tropopause definitions for use in improving the prediction of turbulence altitude.

Portrait of Brian

Brian D’Souza

Brian is double majoring in Geophysics and English at the University of Illinois in Urbana-Champaign about 100 miles south of Chicago. He very much enjoyed his research into sail drones and has some interest into OMAO. He loves to bike and actually went cross country from New York to Northwest US to raise money for cancer research; he also did an STP race with his mentor in Seattle. Brian will be participating in a research cruise from Seattle to the Gulf of Alaska (reason for recording). He  also likes running, cooking and music. 

School: University of Illinois Urbana Champaign

Major: Geophysics and English

NOAA Affiliation: OAR Pacific Marine Environment Lab

Research Title

The Use of Saildrones to Investigate Hurricanes (Recorded)

Abstract

Our ability to predict the direction of propagation of a fully formed hurricane is commendable but there is still work to be done when considering intensity. The recent development of uncrewed sea surface vehicles, manufactured for NOAA by Saildrone, allow researchers to gather previously inaccessible data within hurricanes. During  the 2021 Atlantic hurricane season, 5 such saildrones were deployed in hurricane prone areas, and were able to infiltrate 6 tropical cyclones. This included saildrone SD1045, which was able to transmit footage and measurements from the sea surface within the eye of Hurricane Sam, a mere 34 km from its center. The recorded video  brought greater attention to the saildrone program. Saildrone data is publicly available on NOAA’s ERDDAP server and satellite images of past hurricanes are available  through NESDIS. However, the data in its raw format is complex and difficult to visualize for both researchers and the general public. My project this summer was to develop a program that can make a compiled animation tracking the saildrone against synchronous GOES-16 satellite images, while simultaneously presenting  concurrent data readouts graphically. I was able to create data visualizations that combine visible and infrared satellite imagery, location tracking, and data plotting,  which makes measurement comparisons easier across hurricanes. This aids NOAA’s saildrone team in their efforts to acquire and analyze newly available hurricane data,  which will allow us to understand and predict hurricane intensity during formation with greater accuracy.

Portrait of Hank

Charles “Hank” Dolce

Charles, who typically goes by “Hank”, has been exposed to all types of weather throughout his life. His interest in meteorology was sparked by the Texas  hurricanes of 2008 and a hailstorm in March 2009. Hank’s interests center primarily around hurricanes, though he also serves as a lead forecaster for the Texas Aggie  Storm Chasers and often leads several types of weather briefings within the Department of Atmospheric Sciences. His undergraduate research focuses on analyzing  rapid intensification phases of Atlantic hurricanes and their interaction with the oceanic thermal state and atmospheric modifications. Hank also serves as an officer for  A&M’s AMS student chapter. He is dedicated to providing pertinent and thorough forecasts and analysis to help keep the public safe from any type of hazardous  weather phenomena. Outside of meteorology, Hank enjoys playing Nintendo games, being at the lake, spending time with friends and family, and exploring other fields  of science

School: Texas A&M University

Major: Meteorology

NOAA Affiliation: OAR Atlantic Ocean Meteorological Lab

Research Title

Examining the Response of Upper Ocean Velocity to a February 2022 Wind Event in the Tropical North Atlantic Ocean

Abstract

In the tropical North Atlantic Ocean, sea surface temperature patterns have significant influences on the weather and climate patterns of nearby regions. Specifically, ocean-atmosphere interactions in this region of the Atlantic have a profound influence on the development and intensification of tropical cyclones, which can bring  major impacts to the Caribbean region and North America. The Prediction and Research Moored Array in the Tropical Atlantic (PIRATA) program was implemented to  study these air-sea interactions. PIRATA was established as an array of 10 moorings in 1997 by France, Brazil, and the United States and has since expanded to include 8  additional moorings. Data from the PIRATA Northeast Extension (PNE) station at 20°N, 38°W was examined for this particular study. This mooring was augmented on  November 24, 2021 with fifteen additional current meters as part of the ongoing TACOS (Tropical Atlantic Current Observation Study) experiment. The hourly  atmospheric variables examined here include winds, air temperature, and sea level pressure. For the ocean variables, hourly currents and temperature were examined  at several depths between 7 and 97 m. While no tropical cyclones passed the mooring during the TACOS deployment, several wind events peaking at 10 m/s were  observed, with one notable event that persisted throughout February and March 2022. On February 7, 2022, an extratropical low pressure system passed within 500km  of the mooring, which was followed by a strong ridging regime beginning 5 days later that launched a prolonged period of wind speeds around 10 m/s across the  mooring lasting into the middle of March. Ocean currents responded swiftly as the winds increased, increasing in magnitude and shifting directions from westward with  a weak northward component to northward with a weak eastward component consistent with an Ekman ocean current response given easterly winds. Inertial currents  were triggered with a mean oscillation period of 32 hours, consistent with the theoretical inertial period of 35 hours, and amplitudes of 10 cm/sec increased due to the  onset of this wind event. The passage of ocean eddies had some influence on the evolution of these currents, though the primary forcing was from the wind event itself.

Portrait of Alex

Alex Alvin Cheung

Alvin will be a first year Ph.D. student at the University of Maryland, College Park, working with Dr. Maria Molina using machine learning to study tropical  cyclones. Alvin has worked with the National Weather Service in State College, PA studying the detectability of snow squalls using radar. Alvin hopes that his work can  be applied directly for operational meteorology purposes, hence an interest in NOAA. Outside meteorology, Alvin is an avid biker, traveler, loves driving his manual  transmission car, a foodie, and a fast alpine skier. 

School: University of Maryland College Park

Major: Meteorology

NOAA Affiliation: NESDIS Satellite Applications and Research (STAR)

Research Title

Documenting the Progressions of Secondary Eyewall Formations

Abstract

Intense tropical cyclones (TCs) can form secondary eyewalls (SE). Some SEs partake in an eyewall replacement cycle (ERC), which is when a SE replaces the inner eyewall.  An example of a commonly known ERC pathway involves three phases: (1) the initial identification of a SE, (2) when the SE equals in strength to the inner eyewall, and (3) the disappearance of the inner eyewall caused by the replacement from a SE. We refer to this as the classic pathway. However, we found that secondary eyewall  formations (SEF) are not a singular process and can result in multiple possibilities beyond an ERC. Anecdotally, we know that there are multiple entrances and exits (pathways) into and out of a SEF with significant deviations from the classic ERC paradigm. Hence, this study supplements this gap in understanding by documenting the various SE progressions and identifying certain environmental conditions and storm metrics that may provide others insights into the evolution of a SEF in real-time. Here, we use 89–92 GHz passive microwave imagery (PMI) from the NOAA Cooperative Institute for Research in the Atmosphere’s Tropical Cyclone Precipitation, Infrared, Microwave, and Environmental Dataset (TC PRIMED) to subjectively identify SE patterns related to deep convection. In the SE identification, we include an estimated satellite analyst’s confidence ranging from low confidence (1) to high confidence (5). Next, using our developed dataset of SE labels, we tracked the progression of 115 SE appearances in TCs with at least one high confidence (4+) SEF (42 storms), noting various patterns in entrances, SEs, and exits in the PMI. With the SEF progressions identified, we test environmental variables (e.g., wind shear, sea- surface temperature) and storm metrics (e.g., intensity, storm motion) for statistical significance between various SE evolutions. We found that two common pathways exist: (1) no replacement of the inner eyewall by the outer eyewall and (2) the  replacement of the inner eyewall by the SE. Interestingly, we found that the environmental conditions in the classic path are typically in environments that are highly  conducive to TC intensification (weak vertical wind shear, greater mid-level RH, and greater SSTs), indicating that a certain set of conditions must occur for an ERC to occur. In summary, this study captures the diverse scenarios for SEF pathways beyond the classic ERC paradigm. The details of this work will be presented along with improvements to the study on the secondary eyewall labels and environmental variables made between now and the conference.

Portrait of Brannon

McKenzie Brannon

McKenzie is a PhD student at Syracuse University in the department of Earth and Environmental Sciences. She graduated with a B.S. in Geological Science from the University of Kentucky in 2019. Her current research is studying nutrient cycling and harmful algal blooms in Skaneateles Lake (NY), the fifth largest Finger Lake. She uses shallow sediment samples collected around the lake to characterize the lake sediment and understand the role it plays in supplying nutrients to the algal blooms. During her NOAA internship, McKenzie is using satellite data to track eutrophication and algal blooms in Lake Erie. She is excited to take her skills learned at NOAA back to Syracuse and apply them to her own PhD research. After graduation, she hopes to either be involved in informing policy makers on the latest science research or  to continue into academia and become a professor. In her free time, she enjoys hiking, kayaking, camping with friends, and reading. 

School: Syracuse University

Major: Earth and Env Science

NOAA Affiliation: NWS NCEP Environmental Modeling Center

Research Title

Utilizing JEDI Software to Observe Lake Erie Eutrophication and Seasonal Algal Blooms

Abstract

The Joint Effort for Data assimilation Integration (JEDI) framework is a system aimed at improving the versatility and efficiency of data assimilation. This project utilizes  the Regional Ocean Modeling System (ROMS) and JEDI’s Sea-Ice Ocean and Coupled Assimilation (SOCA) project to test and learn the compilation of 3D and 4D models  on a high-performance computing system. One use of these models is exploring the relationship of harmful algal blooms with different parameters such as water depth, surface temperatures, and nutrient loading. Another use is to assimilate chlorophyll concentration data in these models and assess their impact on forecasting harmful algal blooms. While a forecast impact study requires a long- term continuous effort on model compilation, marine observations, especially chlorophyll concentration are currently written into the JEDI observation system, i.e., IODA (Interface for Observational Data Access). In this system, eutrophication and harmful algal blooms are  tracked using ocean color data collected by NASA’s Moderate Resolution Imaging Spectroradiometer (MODIS) aboard the Aqua satellite. This project uses this MODIS ocean color data in JEDI/IODAformat to observe harmful algal blooms and eutrophication in Lake Erie, the southernmost great lake. Lake Erie is impacted by these  blooms that release toxins and pose a health risk for humans and the lake’s ecosystem. Understanding bloom patterns in the lake is paramount for future prediction and  mitigation. Preliminary results demonstrated through SOCA-diagnostics (marine JEDI visualization tool box) reveal blooms in the western basin of Lake Erie peaking in late summer.

Portrait of Ricardo Bourdon

Ricardo Bourdon

Ricardo is a rising senior at Cornell University who has a great interest in harmful algae bloom research. In his spare time he loves to work out, swim and play basketball. 

School: Cornell University

Major: Earth and Atmospheric Science

NOAA Affiliation: NESDIS National Centers for Env Information

Research Title

Examining the Importance of Physical Processes on the Termination of Harmful Algal Blooms on the West Florida Shelf

Abstract

On the West Shelf of Florida (WSF), there are seasonal blooms of the dinoflagellate Karenia brevis, known as red tide events. These seasonal blooms often become  Harmful Algal Blooms when the cell counts of the K. brevis reach numbers greater than 104 cells per liter (McCulloch, 2013). The blooms of K. brevis are seasonal,  typically occurring within the fall and winter, and lasting 2 to 4 months, although a duration of 8-12 months is not uncommon (Vargo, 2009). The initiation of the bloom  is thought to begin about 18 to 74 km offshore at depth. These waters are oligotrophic waters, meaning that they are generally low in nutrients. However, the time  period of the blooms coincides with the changing of the wind and current conditions on the WSF. During the late fall months, the winds become more upwelling  favorable (Maze 2015). The upwelling allows for K. brevis to get nutrients from the deep water, meaning upwelling is important for the bloom initiation (Wesiberg et al,  2014). The offshore blooms make their way onto the WSF through the process of Eckman transport and upwelling that advects them on-shore (Wesiberg et al., 2014).  Once advected on-shore, the blooms are maintained by upwelling that brings more of the offshore K. brevis to the onshore bloom, and also river discharges that dump  out into the coastal waters, bringing more nutrients to the bloom (Maze 2015). There is a lack of knowledge on how these blooms get terminated. Macrozooplankton grazing does not appear to be a major factor for Karenia brevis bloom termination (Vargo 2009). Nutrient limitation, normal cell death rates, and grazing may not play a  significant role in bloom termination due to the length that some blooms have been known to last (Vargo 2009). It is hypothesized that physical processes may be the primary mechanism for the termination of red tides. The point of this project is to investigate the role of physical processes in the termination of these blooms. After  exploring the available NCEI HABSOS data, a spike in the cell count of K. brevis was identified from September 2019 to December 2019. In order to better understand  the conditions which can facilitate the termination of the red tide blooms, I examined the physical and biological conditions before the bloom, during the bloom and  after the bloom (early 2020) in order to assess possible factors that lead to the termination of red tides. Physical conditions include surface water temperature, salinity,  wind speed and direction, and currents. I utilized data from two buoys from the National Data Buoy Center (NDBC) to gain in situ wind data and I took geostrophic  current data from the NOAA CoastWatch data portal. I used this data to understand the wind and current strength, creating images in Python. In order to better understand the conditions that are important for the termination of the red tides, I conducted a Primary Component Analysis to determine the factors that are most  important. For this PCA, I used the cell count data collected from HABSOS, buoy data from locations surrounding the location where most of the cell counts were taken.  From this PCA and the images of the current and wind conditions, I identified that the V component (north south direction of the wind) and the wind speed were highly  correlated with the first principal component and also correlated with cell counts of K. brevis. Therefore, for the HAB of 2019, winds and currents played an important role in the termination of the bloom.

Portrait of Esha Bharadwaj

Esha Bharadwaj

She was born in Denver, Colorado, and grew up abroad in India. She has been fascinated by geography since middle school and studying it as an elective all four  years in high school helped solidify this interest. She is interested in studying climate change and its impact on vulnerable communities and ecosystems, mapping  previously unmapped/poorly mapped areas, and participating in international collaboration. She also hopes to work closely with communities and stakeholders.  During her free time, she loves to hike, travel, play board games, watch Bollywood movies, and spend time with family and friends. 

School: Clark University

Major: Geography

NOAA Affiliation: OAR Climate Program Office

Research Title

Climate Smart Actions: A Database of Flood Resilience Strategies for the United States

Abstract

Flooding is one of the leading causes of damage to property, natural areas, and people, and due to climate change, it is increasing in both frequency and intensity in  many parts of the country. Even without climate change, one would expect more damage from floods simply due to people moving infrastructure, housing, and other  resources near coastlines and water bodies. This project laid the foundation for a searchable database containing strategies to address flooding – and ultimately other  hazards – that have been used by state governments. We extracted strategies related to flooding from state climate action plans and state agency plans downloaded  from the Georgetown Climate Center State Adaptation Progress Tracker. California is not within the scope of this study because another NOAA-funded team is focusing  on efforts there. Also, local plans were not considered; the emphasis here is on plans made at the state level. More than 1/3 of the nation’s states do not have a state level climate adaptation plan, and very few states (around 1/4) have a state agency-led plan published within the last four years. Climate adaptation appears to be a low  priority at the state level in many parts of the country. However, plans have been put in place in most regions where FEMA has documented a high risk of impacts from  flooding. I extracted 400 strategies from those plans that address the impacts of flooding. The bulk of the flood protection solutions address natural areas where  watershed and floodplain management are essential to protecting assets downstream. A large number of strategies focus on directly protecting property since people  value assets that are exposed to flooding. Examples of strategies include managing floodplains, encouraging water infiltration through watershed protection, and  limiting property construction within a certain distance from the coastline or a water body. Protecting lives is perhaps the highest priority for addressing the impacts of flooding. Most of those strategies fall within three categories: coastal ecosystem protection; education, outreach, and engagement; and flood insurance. As part of its  mission to support a Climate Ready Nation by 2030, NOAA has a responsibility to interpret climate information and assist communities and tribes as they address  climate-related hazards. It is critical to plan now to reduce the dramatic impacts of climate change and protect current and future generations. To scale up and  accelerate climate adaptation practice, NOAA hopes to train climate practitioners to carry out this mission. Building a database with strategies to address flooding and  other climate- related hazards will help those practitioners serve communities through planning and by tracking progress toward protecting lives, property, and  resources.

Portrait of Jacklynn Beck

Jacklynn Beck

Jackie is a graduate student at Ohio State University. She enjoys hiking and spending time with her dog Fujiwhara. 

School: Ohio State University

Major: Atmospheric Science

NOAA Affiliation: OAR Climate Program Office

Research Title

Inventory of Federal Climate Engagement and Capacity-building Programs

Abstract

Engaging the public in climate action is vital to ensure that equitable climate actions are taken to combat the impacts of climate change. To ensure that the public is  prepared for the scale of the climate crisis, the U.S. Federal government must support national initiatives to educate, train and engage citizens. Since the introduction of  Executive Order 14008: Tackling the Climate Crisis at Home and Abroad in 2021, federal departments and agencies have been tasked with addressing climate solutions  and justice, leading to an explosion of society-focused climate programs. This session will present the results of the 2023 inventory of 520 U.S. federal climate  education, training, communication, access to information, engagement, and coordination programs across 12 federal departments and 9 agencies, covering both  existing and proposed programs in the 2023 budget. The inventory covers all aspects of climate work, from K-12 education to applied science, workforce development to Tribal adaptation. Additionally, the inventory includes programs funded through the Build Back America bipartisan infrastructure  budget. The foundation laid by this research will encourage coordination of resources, knowledge, and best practices amongst the Biden administration, federal  agencies, and non-federal partners. This ecosystem of federal action-focused climate policy will ensure that society is receiving necessary resources to take action and  build a climate ready nation.

Portrait of Evan Belkin

Evan Belkin

Growing up in the Northeast, Evan has a visceral interest in forecasting all types of weather from snowstorms to severe thunderstorms. This year, he is excited to  be the Vice President of the Capital Region Chapter of the AMS, where he hopes to grow the chapter further and strengthen the community. Evan also partakes in  research with the University at Albany Center of Excellence affiliated with the New York State Mesonet where he is looking to develop and share hypotheses on  categories of weather events that result in particular types of power outages. Evan enjoys spikeball, backyard baseball, karaoke, and spending time with family in the Adirondacks.  

School: State University of New York at Albany

Major: Atmospheric Science

NOAA Affiliation: NWS NCEP Storm Prediction Center

Research Title

2021 NOAA/NWS SPC Day 1 Fire Weather Outlook Verification

Abstract

The NOAA/NWS Storm Prediction Center (SPC) is responsible for forecasting meteorological conditions that, when combined with antecedent dry fuels, result in a  significant threat for the rapid growth and spread of wildfires across the contiguous United States (CONUS). The SPC issues three categorical risk areas in the Day 1 and 2  (defined as 12-12 UTC) Fire Weather Outlook Products: “elevated”, “critical”, or “extremely critical” for dry and windy conditions. The risk category depends on both the  severity of the forecast weather and the fuel conditions relative to a given geographic region. A “critical” outlook will be issued when, in the judgment of the forecaster,  sustained winds of 20 mph or greater (15 mph in Florida) are forecast, the minimum relative humidity is at or below the regional threshold, temperatures are above 50- 60oF (depending on the season), and the fuels are dry, all for a duration of at least three consecutive hours. This study aims to quantify and document the performance  characteristics of the SPC Day 1 Fire Weather Outlook during the entirety of 2021. Using surface data from the SPC’s operational surface objective analysis system  (sfcOA) archive and Energy Release Component (ERC) climatological percentile data from the Gridded Surface Meteorological (gridMET) dataset, the SPC “critical” fire  definition was evaluatedacross the CONUS. Since “extremely critical” delineations are reserved for significant deviations from climatological normal, this study did not  verify “extremely critical” conditions any differently from “critical” conditions. The Probability of Detection (POD), False Alarm Rate (FAR), and Critical Success Index  (CSI) were calculated for each individual day in 2021 as well as the year as a whole. Performance diagrams were then created using these data and these results will be  shown and discussed.