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A Data Censoring Approach for Predictive Error Modeling of Flow in Ephemeral Rivers

Quan J. Wang, James Bennett, David Robertson, Ming Li

2020Water Resources Research59 citationsDOIOpen Access PDF

Abstract

Abstract Flow simulations of ephemeral rivers are often highly uncertain. Therefore, error models that can reliably quantify predictive uncertainty are particularly important. Existing error models are incapable of producing predictive distributions that contain >50% zeros, making them unsuitable for use in highly ephemeral rivers. We propose a new method to produce reliable predictions in highly ephemeral rivers. The method uses data censoring of observed and simulated flow to estimate model parameters by maximum likelihood. Predictive uncertainty is conditioned on the simulation in such a way that it can generate >50% zeros. Our method allows the setting of a censoring threshold above zero. Many conceptual hydrological models can only approach, but never equal, zero. For these hydrological models, we show that setting a censoring threshold slightly above zero is required to produce reliable predictive distributions in highly ephemeral catchments. Our new method allows reliable predictions to be generated even in highly ephemeral catchments.

Topics & Concepts

Ephemeral keyCensoring (clinical trials)Computer scienceStatisticsMathematicsAlgorithmHydrology and Watershed Management StudiesFlood Risk Assessment and ManagementHydrology and Sediment Transport Processes
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