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Article ; Online: Water level prediction using long short-term memory neural network model for a lowland river

Zsolt Vizi / Bálint Batki / Luca Rátki / Szabolcs Szalánczi / István Fehérváry / Péter Kozák / Tímea Kiss

Environmental Sciences Europe, Vol 35, Iss 1, Pp 1-

a case study on the Tisza River, Central Europe

2023  Volume 18

Abstract: Abstract Background Precisely predicting the water levels of rivers is critical for planning and supporting flood hazard and risk assessments and maintaining navigation, irrigation, and water withdrawal for urban areas and industry. In Hungary, the water ...

Abstract Abstract Background Precisely predicting the water levels of rivers is critical for planning and supporting flood hazard and risk assessments and maintaining navigation, irrigation, and water withdrawal for urban areas and industry. In Hungary, the water level of rivers has been recorded since the early nineteenth century, and various water level prediction methods were developed. The Discrete Linear Cascade Model (DLCM) has been used since 1980s. However, its performance is not always reliable under the current climate-driven hydrological changes. Therefore, we aimed to test machine learning algorithms to make 7-day ahead forecasts, choose the best-performing model, and compare it with the actual DLCM. Results According to the results, the Long Short-Term Memory (LSTM) model provided the best results in all time horizons, giving more precise predictions than the Baseline model, the Linear or Multilayer Perceptron Model. Despite underestimating water levels, the validation of the LSTM model revealed that 68.5‒76.1% of predictions fall within the required precision intervals. Predictions were relatively accurate for low (≤ 239 cm) and flood stages (≥ 650 cm), but became less reliable for medium stages (240–649 cm). Conclusions The LSTM model provided better results in all hydrological situations than the DLCM. Though, LSTM is not a novel concept, its encoder–decoder architecture is the best option for solving multi-horizon forecasting problems (or “Many-to-Many” problems), and it can be trained effectively on vast volumes of data. Thus, we recommend testing the LSTM model in similar hydrological conditions (e.g., lowland, medium-sized river with low slope and mobile channel) to get reliable water level forecasts under the rapidly changing climate and various human impacts. Graphical Abstract
Keywords Discrete Linear Cascade Model ; Long short-term memory ; Multilayer Perceptron Model ; Linear Model ; Underestimation ; Environmental sciences ; GE1-350 ; Environmental law ; K3581-3598
Subject code 550
Language English
Publishing date 2023-11-01T00:00:00Z
Publisher SpringerOpen
Document type Article ; Online
Database BASE - Bielefeld Academic Search Engine (life sciences selection)

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