JOURNAL ARTICLE

Deep learning rainfall–runoff predictions of extreme events

Abstract

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.

Keywords:
Extrapolation Computer science Deep learning Surface runoff Artificial intelligence Return period Machine learning History Statistics Ecology Mathematics

Metrics

283
Cited By
27.49
FWCI (Field Weighted Citation Impact)
36
Refs
1.00
Citation Normalized Percentile
Is in top 1%
Is in top 10%

Citation History

Topics

Hydrology and Watershed Management Studies
Physical Sciences →  Environmental Science →  Water Science and Technology
Hydrological Forecasting Using AI
Physical Sciences →  Environmental Science →  Environmental Engineering
Flood Risk Assessment and Management
Physical Sciences →  Environmental Science →  Global and Planetary Change
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