Uncertainty Estimation with Deep Learning for Rainfall-Runoff Modelling

December 15, 2020 Β· Declared Dead Β· πŸ› Hydrology and Earth System Sciences

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Authors Daniel Klotz, Frederik Kratzert, Martin Gauch, Alden Keefe Sampson, GΓΌnter Klambauer, Sepp Hochreiter, Grey Nearing arXiv ID 2012.14295 Category physics.geo-ph Cross-listed cs.LG Citations 144 Venue Hydrology and Earth System Sciences Last Checked 1 month ago
Abstract
Deep Learning is becoming an increasingly important way to produce accurate hydrological predictions across a wide range of spatial and temporal scales. Uncertainty estimations are critical for actionable hydrological forecasting, and while standardized community benchmarks are becoming an increasingly important part of hydrological model development and research, similar tools for benchmarking uncertainty estimation are lacking. We establish an uncertainty estimation benchmarking procedure and present four Deep Learning baselines, out of which three are based on Mixture Density Networks and one is based on Monte Carlo dropout. Additionally, we provide a post-hoc model analysis to put forward some qualitative understanding of the resulting models. Most importantly however, we show that accurate, precise, and reliable uncertainty estimation can be achieved with Deep Learning.
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