Forecasting water levels using machine (deep) learning to complement numerical modelling in the southern Everglades, USA

By: , and 
Edited by: Gerald A. Corzo Perez and Dimitri Solomatine

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Abstract

Water level is an important guide for water resource management and wetland ecosystems, defining one of the most basic processes in hydrology. This research seeks to investigate the possibility of complementing numerical modeling with a Machine Learning (ML) model to forecast daily water levels in the southern Everglades in Florida, USA. An exact analytical solution to water level may not be possible, but using the computational methods afforded by ML, the traditional numerical techniques may be enhanced to generate more robust, scalable predictions. Five locations were chosen for application of the Time-Delayed Neural Network (TDNN) and Long-Short Term Memory Recurrent Neural Network (LSTM-RNN) ML models, which were built to estimate water level with 1, 2, 3, 7 and 10 day forecasts using a simulation step of 1 day. The results showed that rainfall forecasts from weather models could improve water-level forecasts if the accuracy and performance of the weather models can be improved. The ML models presented here improve water-level predictions from a historical hydrologic model for a 24 hour forecast horizon.

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Publication type Book chapter
Publication Subtype Book Chapter
Title Forecasting water levels using machine (deep) learning to complement numerical modelling in the southern Everglades, USA
Chapter 7
DOI 10.1002/9781119639268.ch7
Year Published 2024
Language English
Publisher American Geophysical Union
Contributing office(s) Caribbean-Florida Water Science Center
Description 35 p.
Larger Work Type Book
Larger Work Subtype Monograph
Larger Work Title Advanced hydroinformatics: Machine learning and optimization for water resources
First page 177
Last page 211
Country United States
State Florida
Other Geospatial Everglades
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