Discovering Governing Equations in the Presence of Uncertainty
Ridwan Olabiyi, Han Hu, and Ashif Iquebal

TL;DR
This paper introduces a stochastic framework for discovering governing equations in dynamical systems that accounts for uncertainty and noise, outperforming traditional deterministic methods.
Contribution
The authors propose the SIP framework, which models unknown coefficients as random variables and infers their distributions, improving robustness and accuracy in noisy, variable data environments.
Findings
SIP outperforms SINDy in identifying correct equations.
SIP reduces coefficient RMSE by 82% on benchmark problems.
Posterior credible intervals closely match observed trajectories.
Abstract
In the study of complex dynamical systems, understanding and accurately modeling the underlying physical processes is crucial for predicting system behavior and designing effective interventions. Yet real-world systems exhibit pronounced input (or system) variability and are observed through noisy, limited data conditions that confound traditional discovery methods that assume fixed-coefficient deterministic models. In this work, we theorize that accounting for system variability together with measurement noise is the key to consistently discover the governing equations underlying dynamical systems. As such, we introduce a stochastic inverse physics-discovery (SIP) framework that treats the unknown coefficients as random variables and infers their posterior distribution by minimizing the Kullback-Leibler divergence between the push-forward of the posterior samples and the empirical data…
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