Abstract
The most accurate rainfall-runoff predictions are currently based on deep learning. There is a concern among hydrologists that the predictive accuracy of data-driven models based on deep learning may not be reliable in extrapolation or for predicting extreme events. This study tests that hypothesis using long short-term memory (LSTM) networks and an LSTM variant that is architecturally constrained to conserve mass. The LSTM network (and the mass-conserving LSTM variant) remained relatively accurate in predicting extreme (high-return-period) events compared with both a conceptual model (the Sacramento Model) and a process-based model (the US National Water Model), even when extreme events were not included in the training period. Adding mass balance constraints to the data-driven model (LSTM) reduced model skill during extreme events. Copyright:
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CITATION STYLE
Frame, J. M., Kratzert, F., Klotz, D., Gauch, M., Shelev, G., Gilon, O., … Nearing, G. S. (2022). Deep learning rainfall-runoff predictions of extreme events. Hydrology and Earth System Sciences, 26(13), 3377–3392. https://doi.org/10.5194/hess-26-3377-2022
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