Supermodeling: Improving Predictions with an Ensemble of Interacting Models

Author:

Schevenhoven Francine1,Keenlyside Noel2,Counillon François2,Carrassi Alberto3,Chapman William E.4,Devilliers Marion5,Gupta Alok6,Koseki Shunya7,Selten Frank8,Shen Mao-Lin7,Wang Shuo7,Weiss Jeffrey B.9,Wiegerinck Wim10,Duane Gregory S.9

Affiliation:

1. Department of Atmospheric and Oceanic Sciences, University of Colorado Boulder, Boulder, Colorado, and Geophysical Institute, University of Bergen, and Bjerknes Centre for Climate Research, Bergen, Norway;

2. Geophysical Institute, University of Bergen, and Bjerknes Centre for Climate Research, and Nansen Environmental and Remote Sensing Center, Bergen, Norway;

3. Department of Physics and Astronomy “Augusto Righi,” University of Bologna, Bologna, Italy;

4. National Center for Atmospheric Research, Boulder, Colorado;

5. Danish Meteorological Institute, Copenhagen, Denmark;

6. NORCE Norwegian Research Centre, and Bjerknes Centre for Climate Research, Bergen, Norway;

7. Geophysical Institute, University of Bergen, and Bjerknes Centre for Climate Research, Bergen, Norway;

8. Royal Netherlands Meteorological Institute, De Bilt, Netherlands;

9. Department of Atmospheric and Oceanic Sciences, University of Colorado Boulder, Boulder, Colorado;

10. SNN Adaptive Intelligence, and Department of Biophysics, Donders Institute for Brain, Cognition and Behaviour, Radboud University, Nijmegen, and HAN University of Applied Sciences, Arnhem, Netherlands

Abstract

Abstract The modeling of weather and climate has been a success story. The skill of forecasts continues to improve and model biases continue to decrease. Combining the output of multiple models has further improved forecast skill and reduced biases. But are we exploiting the full capacity of state-of-the-art models in making forecasts and projections? Supermodeling is a recent step forward in the multimodel ensemble approach. Instead of combining model output after the simulations are completed, in a supermodel individual models exchange state information as they run, influencing each other’s behavior. By learning the optimal parameters that determine how models influence each other based on past observations, model errors are reduced at an early stage before they propagate into larger scales and affect other regions and variables. The models synchronize on a common solution that through learning remains closer to the observed evolution. Effectively a new dynamical system has been created, a supermodel, that optimally combines the strengths of the constituent models. The supermodel approach has the potential to rapidly improve current state-of-the-art weather forecasts and climate predictions. In this paper we introduce supermodeling, demonstrate its potential in examples of various complexity, and discuss learning strategies. We conclude with a discussion of remaining challenges for a successful application of supermodeling in the context of state-of-the-art models. The supermodeling approach is not limited to the modeling of weather and climate, but can be applied to improve the prediction capabilities of any complex system, for which a set of different models exists.

Publisher

American Meteorological Society

Subject

Atmospheric Science

Reference63 articles.

1. Bach, E., and M. Ghil, 2022: A multi-model ensemble Kalman filter for data assimilation and forecasting. arXiv, 2202.02272v2, https://doi.org/10.48550/arXiv.2202.02272.

2. The quiet revolution of numerical weather prediction;Bauer, P.,2015

3. Stochastic parameterization: Toward a new view of weather and climate models;Berner, J.,2017

4. Quantifying progress across different CMIP phases with the ESMValTool;Bock, L.,2020

5. Combining data assimilation and machine learning to emulate a dynamical model from sparse and noisy observations: A case study with the Lorenz 96 model;Brajard, J.,2020

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