Expectile-based hydrological modelling for uncertainty estimation: Life after mean

01/14/2022
by   Hristos Tyralis, et al.
2

Predictions of hydrological models should be probabilistic in nature. Our aim is to introduce a method that estimates directly the uncertainty of hydrological simulations using expectiles, thus complementing previous quantile-based direct approaches. Expectiles are new risk measures in hydrology. They are least square analogues of quantiles and can characterize the probability distribution in much the same way as quantiles do. To this end, we propose calibrating hydrological models using the expectile loss function, which is consistent for expectiles. We apply our method to 511 basins in contiguous US and deliver predictive expectiles of hydrological simulations with the GR4J, GR5J and GR6J hydrological models at expectile levels 0.500, 0.900, 0.950 and 0.975. An honest assessment empirically proves that the GR6J model outperforms the other two models at all expectile levels. Great opportunities are offered for moving beyond the mean in hydrological modelling by simply adjusting the objective function.

READ FULL TEXT
research
10/11/2021

Quantile-based hydrological modelling

Predictive uncertainty in hydrological modelling is quantified by using ...
research
06/17/2023

Deep Huber quantile regression networks

Typical machine learning regression applications aim to report the mean ...
research
12/09/2020

Uncertainty Intervals for Graph-based Spatio-Temporal Traffic Prediction

Many traffic prediction applications rely on uncertainty estimates inste...
research
07/03/2018

Power Maxwell distribution: Statistical Properties, Estimation and Application

In this article, we proposed a new probability distribution named as pow...
research
06/17/2022

Towards Data Assimilation in Level-Set Wildfire Models Using Bayesian Filtering

The level-set method is a prominent approach to modelling the evolution ...
research
12/27/2022

Quantile Risk Control: A Flexible Framework for Bounding the Probability of High-Loss Predictions

Rigorous guarantees about the performance of predictive algorithms are n...

Please sign up or login with your details

Forgot password? Click here to reset