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Introducing time series features based dynamic...
Journal article

Introducing time series features based dynamic weights estimation framework for hydrologic forecast merging

Abstract

Accurate and reliable hydrologic forecasting through multi-model ensemble averaging is crucial for reducing uncertainty, which aids in effective water resources management and flood risk mitigation. This study addresses the research gap of the limited application of time-varying weights in hydrologic forecast merging, as existing methods rely on weights that do not adapt to changes in model performance over time. We propose a novel framework …

Authors

Sheikh R; Coulibaly P

Journal

Journal of Hydrology, Vol. 654, ,

Publisher

Elsevier

Publication Date

June 2025

DOI

10.1016/j.jhydrol.2025.132872

ISSN

0022-1694