Forecasting water levels using the ConvLSTM algorithm in the Everglades, USA
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Abstract
Forecasting water levels in complex ecosystems like wetlands can support effective water resource management, ecological conservation, and understanding surface and groundwater hydrology. Predictive models can be used to simulate the complex interactions among natural processes, hydrometeorological factors, and human activities. The Greater Everglades in the USA is a well-known example of an ecosystem where complexity has motivated adoption of machine learning algorithms in water level prediction studies. This paper aims to contribute to extending existing machine learning algorithms by integrating spatiotemporal data with deep-learning algorithms in the forecasting process. In this study, a deep-learning model is developed to predict water levels on a regional scale, covering a large area of approximately 9,138 square kilometers in the Everglades ecosystem. This model has the architecture of Convolutional Long Short-Term Memory which can deal with spatiotemporal data by capturing both spatial and temporal dependencies in the training data. The forecasting capabilities of this model (referred to as the global model) are assessed by comparing the global model to two Artificial Neural Networks developed at two different gaging stations, referred to here as local models. One local model is developed at a gaging station directly influenced by nearby water control structures, whereas the other is developed at a gaging station located farther away from these structures. By leveraging data from the Everglades Depth Estimation Network spanning from January 2002 to May 2023, the global and local models were trained to forecast water levels with a two-day lead time. Our findings suggest that both the global and local models perform with approximately the same level of accuracy, with Mean Absolute Relative Error values ranging from 0.38% to 1.4% at the selected stations. The developed global model has demonstrated strong potential as a standalone forecasting tool for the entire study area in the Everglades and could eliminate the need for developing multiple local models. This finding also highlights how machine learning can capture complex spatial and temporal relationships to generate accurate water level predictions on a regional scale.
Study Area
Publication type | Article |
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Publication Subtype | Journal Article |
Title | Forecasting water levels using the ConvLSTM algorithm in the Everglades, USA |
Series title | Journal of Hydrology |
DOI | 10.1016/j.jhydrol.2024.132195 |
Volume | 652 |
Year Published | 2025 |
Language | English |
Publisher | Elsevier |
Contributing office(s) | FLWSC-Ft. Lauderdale, Wetland and Aquatic Research Center, Caribbean-Florida Water Science Center |
Description | 132195, 17 p. |
Country | United States |
State | Florida |
Other Geospatial | Everglades |
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