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Medium-Range River Flood Forecasts Using a Long Short-Term Memory NetworkRiver flooding and the impacts are a concern for decision makers throughout the United States. Accurate medium-range forecasts (~3-7 days) are critical for providing advanced outlooks to emergency management officials. Unfortunately, accurately forecasting rainfall-runoff and the subsequent rise and fall within rivers remain a challenge in hydrological modeling. While complex physical modeling systems are the standard for representing the hydrological processes, they are computationally demanding and can require extensive calibration. Further, uncertainties remain in the model parameters and input data. The use of machine learning can reduce some of the computational demand while maintaining high accuracy. Therefore, this project makes use of a Long Short-Term Memory (LSTM) network which explicitly accounts for the time-dependent nature of rainfall-runoff modeling. The developed LSTM was trained to predict river gauge height, or stage height, based on time-lagged input features which include: gauge height to initialize the model, the NASA Short-term Prediction Research and Transition Center’s instance of the Land Information System (SPoRT-LIS) relative soil moisture to describe the rainfall infiltration rate, and 6-hr Multi-Radar Multi-Sensor quantitative precipitation estimate (MRMS QPE). The developed LSTM based system is then used to produce 7-day forecasts with a 6-hr temporal resolution using three different quantitative precipitation forecasts (QPF) from the NWS’s Weather Prediction Center (WPC), the NCEP Global Forecast System (GFS) model and the National Blend of Models (NBM). This trained modeling system has been implemented as an experimental product at over 100 different rivers in collaboration with at multiple National Weather Service (NWS) Forecast Offices and River Forecast Centers (RFC) across the eastern half of the United States. The developed LSTM model achieved average Nash-Sutcliffe efficiency (NSE) 0.89 higher than the equivalent medium-range National Water Model ensemble member forecast over a 7-day forecast. In addition to the initial development and evaluation, this project has continued to expand. While the initial model was developed for precipitation dominated basins, expansion of the project has taken it to basins effected by snow melt. This presentation will provide an overview of the project with focus on recent developments on incorporating snow melt processes into the model.
Document ID
20220019209
Acquisition Source
Marshall Space Flight Center
Document Type
Presentation
Authors
Andrew T. White
(University of Alabama in Huntsville Huntsville, Alabama, United States)
Kristopher D. White
(National Weather Service Silver Spring, Maryland, United States)
Christopher R. Hain
(Marshall Space Flight Center Redstone Arsenal, Alabama, United States)
Jonathan L. Case
(Ensco (United States) Falls Church, Virginia, United States)
Kevin K. Fuell
(University of Alabama in Huntsville Huntsville, Alabama, United States)
Date Acquired
December 22, 2022
Subject Category
Meteorology and Climatology
Meeting Information
Meeting: 103rd American Meteorological Society Annual Meeting
Location: Denver, CO
Country: US
Start Date: January 8, 2023
End Date: January 12, 2023
Sponsors: American Meteorological Society
Funding Number(s)
WBS: 281945.02.80.01.66
Distribution Limits
Public
Copyright
Portions of document may include copyright protected material.
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