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Peer-reviewed

A Novel Physics‐Aware Machine Learning‐Based Dynamic Error Correction Model for Improving Streamflow Forecast Accuracy

Abhinanda Roy, K. S. Kasiviswanathan, Sandhya Patidar, Adebayo J. Adeloye, Bankaru‐Swamy Soundharajan, C. S. P. Ojha

Water Resources Research · 2023

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Summary

Abstract Occurrences of extreme events, especially floods, have become more frequent and severe in the recent past due to the global impacts of climate change. In this context, possibilities for generating a near‐accurate streamflow forecast at higher lead times, which could be utilized for developing a reliable flood warning system to minimize the effects of extreme events, are highly important. This paper aims to investigate the potential of a novel hybrid modeling framework that couples the random forest algorithm, particle filter, and the HBV model for improving the overall accuracy of forecasts at higher lead times through the dynamic error correction schematic. The new framework simulates an ensemble of streamflow for estimating uncertainty associated with the predictions and is appl

Source type
Peer-reviewed study
DOI
10.1029/2022wr033318
Catalogue ID
SNmohku38t-x6f226
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