Pulse Brain · Growing Health Evidence Index
Peer-reviewed

Hybrid forecasting: blending climate predictions with AI models

Louise Slater, Louise Arnal, Marie‐Amélie Boucher, Annie Y.-Y. Chang, Simon Moulds, Conor Murphy, Grey Nearing, Guy Shalev, Chaopeng Shen, Linda Speight, Gabriele Villarini, Robert L. Wilby, Andrew W. Wood, Massimiliano Zappa

Hydrology and earth system sciences · 2023

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Summary

Abstract. Hybrid hydroclimatic forecasting systems employ data-driven (statistical or machine learning) methods to harness and integrate a broad variety of predictions from dynamical, physics-based models – such as numerical weather prediction, climate, land, hydrology, and Earth system models – into a final prediction product. They are recognized as a promising way of enhancing the prediction skill of meteorological and hydroclimatic variables and events, including rainfall, temperature, streamflow, floods, droughts, tropical cyclones, or atmospheric rivers. Hybrid forecasting methods are now receiving growing attention due to advances in weather and climate prediction systems at subseasonal to decadal scales, a better appreciation of the strengths of AI, and expanding access to computati

Source type
Peer-reviewed study
DOI
10.5194/hess-27-1865-2023
Catalogue ID
SNmokeh4gv-sbur3i
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