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Published September 15, 2024 | Published
Journal Article

Learning about structural errors in models of complex dynamical systems

  • 1. ROR icon California Institute of Technology

Abstract

Complex dynamical systems are notoriously difficult to model because some degrees of freedom (e.g., small scales) may be computationally unresolvable or are incompletely understood, yet they are dynamically important. For example, the small scales of cloud dynamics and droplet formation are crucial for controlling climate, yet are unresolvable in global climate models. Semi-empirical closure models for the effects of unresolved degrees of freedom often exist and encode important domain-specific knowledge. Building on such closure models and correcting them through learning the structural errors can be an effective way of fusing data with domain knowledge. Here we describe a general approach, principles, and algorithms for learning about structural errors. Key to our approach is to include structural error models inside the models of complex systems, for example, in closure models for unresolved scales. The structural errors then map, usually nonlinearly, to observable data. As a result, however, mismatches between model output and data are only indirectly informative about structural errors, due to a lack of labeled pairs of inputs and outputs of structural error models. Additionally, derivatives of the model may not exist or be readily available. We discuss how structural error models can be learned from indirect data with derivative-free Kalman inversion algorithms and variants, how sparsity constraints enforce a “do no harm” principle, and various ways of modeling structural errors. We also discuss the merits of using non-local and/or stochastic error models. In addition, we demonstrate how data assimilation techniques can assist the learning about structural errors in non-ergodic systems. The concepts and algorithms are illustrated in two numerical examples based on the Lorenz-96 system and a human glucose-insulin model.

Copyright and License

© 2024 Elsevier.

Acknowledgement

TS, AMS, and JW were supported by Schmidt Sciences, LLC. AMS is also supported by a Department of Defense Vannevar Bush Faculty Fellowship, and by the SciAI Center, funded by the Office of Naval Research (ONR), under Grant Number N00014-23-1-2729. MEL was supported by the National Science Foundation Graduate Research Fellowship under Grant No. DGE-1745301 and by funding from the Eric and Wendy Schmidt Center at the Broad Institute of MIT and Harvard.

Contributions

Jin-Long Wu: Writing – review & editing, Writing – original draft, Software, Methodology, Investigation, Conceptualization. Matthew E. Levine: Writing – review & editing, Software, Methodology, Investigation, Conceptualization. Tapio Schneider: Writing – review & editing, Supervision, Funding acquisition, Conceptualization. Andrew Stuart: Writing – review & editing, Supervision, Funding acquisition, Conceptualization.

Code Availability

All codes are available at: https://github.com/jinlong83/Learning-Structural-Errors.git.

I have shared the link to my data/code at the Attach File step.

Conflict of Interest

The authors declare that they have no known competing financial interests or personal relationships that could have appeared to influence the work reported in this paper.

Additional details

Created:
June 26, 2024
Modified:
June 26, 2024