Long short-term memory integrating moving average method for flood inundation depth forecasting based on observed data in urban area
Song-Yue Yang,
Bing-Chen Jhong,
You-Da Jhong (),
Tsung-Tang Tsai and
Chang-Shian Chen
Additional contact information
Song-Yue Yang: Feng Chia University
Bing-Chen Jhong: National Taiwan University of Science and Technology
You-Da Jhong: Feng Chia University
Tsung-Tang Tsai: Feng Chia University
Chang-Shian Chen: Feng Chia University
Natural Hazards: Journal of the International Society for the Prevention and Mitigation of Natural Hazards, 2023, vol. 116, issue 2, No 40, 2339-2361
Abstract:
Abstract Since flooding in urban areas is rarely observed using sensors, most researchers use artificial intelligence (AI) models to predict flood hazards based on model simulation data. However, there is still a gap between simulation and real flooding phenomenon due to the limitation of the model. Few studies have reported on the AI model for flood inundation depth forecasting based on observed data. This study presents a novel method integrating long short-term memory (LSTM) with moving average (MA) for flood inundation depth forecasting based on observed data. A flood-prone intersection in Rende District, Tainan, Taiwan, was adopted as the study area. This investigation compared the forecasting performance of the backpropagation neural network (BPNN), recurrent neural network (RNN) and LSTM models. Accumulated rainfall (Ra) and the moving average (MA) method were applied to enhance the LSTM model performance. The model forecast accuracy was evaluated using root mean square error, coefficient of determination (R2) and Nash–Sutcliffe efficiency (NSE). Analytical results indicated that the LSTM had better forecasting ability than the RNN and BPNN, because LSTM had both long-term and short-term memory. Since Ra was an important factor in flooding, adding the Ra to the model input upgraded the LSTM forecasting accuracy for high inundation depths. Because MA reduced the noise of the data, processing the model output using the MA also elevated the forecasting accuracy for high inundation depths. For 3-step-ahead forecasting, the NSE of the model benchmark BPNN was 0.79. Using LSTM, Ra and MA, NSEs gradually increased to 0.83, 0.88 and 0.91, respectively.
Keywords: Flood inundation depth; Flood forecasting; Deep learning; Long short-term memory; Moving average; Accumulated rainfall; Urban area (search for similar items in EconPapers)
Date: 2023
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Persistent link: https://EconPapers.repec.org/RePEc:spr:nathaz:v:116:y:2023:i:2:d:10.1007_s11069-022-05766-1
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DOI: 10.1007/s11069-022-05766-1
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