Quantification of predictive uncertainty in hydrological modelling by harnessing the wisdom of the crowd: A large-sample experiment at monthly timescale
Georgia Papacharalampous, Hristos Tyralis, Demetris Koutsoyiannis,, Alberto Montanari

TL;DR
This study introduces an ensemble post-processing approach for probabilistic hydrological predictions using 50-year monthly data from US catchments, demonstrating improved reliability and robustness over traditional methods.
Contribution
It proposes a novel ensemble quantile regression methodology that combines multiple predictions via quantile averaging, enhancing probabilistic hydrological forecasting.
Findings
Method outperforms basic two-stage approaches in reliability and robustness.
Ensemble predictions are often better than individual predictions in accuracy.
The approach effectively harnesses the 'wisdom of the crowd' for improved scores.
Abstract
Predictive hydrological uncertainty can be quantified by using ensemble methods. If properly formulated, these methods can offer improved predictive performance by combining multiple predictions. In this work, we use 50-year-long monthly time series observed in 270 catchments in the United States to explore the performances provided by an ensemble learning post-processing methodology for issuing probabilistic hydrological predictions. This methodology allows the utilization of flexible quantile regression models for exploiting information about the hydrological model's error. Its key differences with respect to basic two-stage hydrological post-processing methodologies using the same type of regression models are that (a) instead of a single point hydrological prediction it generates a large number of "sister predictions" (yet using a single hydrological model), and that (b) it relies…
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