Litcius/Paper detail

Quantile-Based Hydrological Modelling

Hristos Tyralis

2021MDPI (MDPI AG)38 citationsDOIOpen Access PDF

Abstract

Predictive uncertainty in hydrological modelling is quantified by using post-processing or Bayesian-based methods. The former methods are not straightforward and the latter ones are not distribution-free (i.e., assumptions on the probability distribution of the hydrological model’s output are necessary). To alleviate possible limitations related to these specific attributes, in this work we propose the calibration of the hydrological model by using the quantile loss function. By following this methodological approach, one can directly simulate pre-specified quantiles of the predictive distribution of streamflow. As a proof of concept, we apply our method in the frameworks of three hydrological models to 511 river basins in the contiguous US. We illustrate the predictive quantiles and show how an honest assessment of the predictive performance of the hydrological models can be made by using proper scoring rules. We believe that our method can help towards advancing the field of hydrological uncertainty.

Topics & Concepts

QuantileStreamflowBayesian probabilityComputer scienceHydrological modellingCalibrationField (mathematics)Quantile functionEconometricsProbability density functionStatisticsMathematicsCumulative distribution functionDrainage basinArtificial intelligenceGeologyGeographyClimatologyCartographyPure mathematicsHydrology and Watershed Management StudiesHydrology and Drought AnalysisHydrological Forecasting Using AI
Quantile-Based Hydrological Modelling | Litcius