Hybrid forecasting: blending climate predictions with AI models

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 computational resources and methods. Such systems are attractive because they may avoid the need to run a computationally expensive offline land model, can minimize the effect of biases that exist within dynamical outputs, benefit from the strengths of machine learning, and can learn from large datasets, while combining different sources of predictability with varying time horizons. Here we review recent developments in hybrid hydroclimatic forecasting and outline key challenges and opportunities for further research. These include obtaining physically explainable results, assimilating human influences from novel data sources, integrating new ensemble techniques to improve predictive skill, creating seamless prediction schemes that merge short to long lead times, incorporating initial land surface and ocean/ice conditions, acknowledging spatial variability in landscape and atmospheric forcing, and increasing the operational uptake of hybrid prediction schemes.

Location
Deutsche Nationalbibliothek Frankfurt am Main
Extent
Online-Ressource
Language
Englisch

Bibliographic citation
Hybrid forecasting: blending climate predictions with AI models ; volume:27 ; number:9 ; year:2023 ; pages:1865-1889 ; extent:25
Hydrology and earth system sciences ; 27, Heft 9 (2023), 1865-1889 (gesamt 25)

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

DOI
10.5194/hess-27-1865-2023
URN
urn:nbn:de:101:1-2023051804212004818765
Rights
Open Access; Der Zugriff auf das Objekt ist unbeschränkt möglich.
Last update
14.08.2025, 10:55 AM CEST

Data provider

This object is provided by:
Deutsche Nationalbibliothek. If you have any questions about the object, please contact the data provider.

Associated

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

Other Objects (12)