ABSTRACT Deep learning has advanced flood forecasting through its strong nonlinear modeling capabilities. However, accuracy declines and robustness remain insufficient at longer forecast lead times. Therefore, an evolutionary deep learning model for flood forecasting was developed by integrating time-varying filter-based empirical mode decomposition (TVFEMD), sample entropy-based signal reconstruction (SE), and a CNN-BiLSTM network in this study. Meanwhile, the model's hyperparameters were optimized using a modified whale optimization algorithm (MWOA). Taking the Zhangshui Basin (upper Ganjiang River, China) as a case study, performance and robustness were evaluated and compared between the established model, namely TVFEMD-SE-CNN-MWOA-BiLSTM, with six other benchmark models from both overall flood forecasting and specific flood event prediction. For 6-, 9-, and 12-h lead times, the TVFEMD-SE-CNN-MWOA-BiLSTM model consistently delivered the best forecast performance. Compared with the results of the CNN-MWOA-BiLSTM model, it showed average improvements of 0.04 in NSE, 0.037 in KGE, and reductions of 33.82 m3/s in RMSE and 7.62 m3/s in MAE. Compared with results of the BiLSTM model, improvements were even greater: +0.147 (NSE), +0.153 (KGE), −72.22 m3/s (RMSE), and −25.42 m3/s (MAE). The model significantly enhances flood forecasting accuracy and robustness across lead times, providing a more reliable foundation for river basin flood control and risk management.
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Zhenxin Liu
Tianfu Wen
Jianxu Zhou
Journal of Hydroinformatics
Lund University
Hohai University
Jiangxi Academy of Environmental Sciences
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Liu et al. (Tue,) studied this question.
www.synapsesocial.com/papers/69a67ec3f353c071a6f0a2bb — DOI: https://doi.org/10.2166/hydro.2026.132