Wavelet Enhanced LSTM for Accurate Streamflow Modeling Addressing Nonlinearity and Nonstationarity in Hydrological Data
Wavelet Enhanced LSTM for Accurate Streamflow Modeling Addressing Nonlinearity and Nonstationarity in Hydrological Data
Flood prediction is challenging due to increasing climate variability and nonlinear, nonstationary hydrological data. We propose a novel hybrid model, Wavelet Long Short-Term Memory (WLSTM), combining wavelet transforms with LSTM networks. Wavelet decomposition allows separation of frequency components, enhancing LSTM’s ability to learn both short- and long-term dependencies. Applied to streamflow data from 16 stations in Hessen (2000–2017), WLSTM reduced RMSE by 66.43% and MAPE by 45.49%, while increasing R² by 2.06%. These improvements highlight its effectiveness in modeling complex hydrological dynamics. WLSTM offers a robust tool for adaptive flood risk management under climate change.

