NALGSYDSSep 30, 2022

Convergence of weak-SINDy Surrogate Models

arXiv:2209.15573v314 citationsh-index: 8
Originality Synthesis-oriented
AI Analysis

This work offers incremental theoretical guarantees for system identification techniques, benefiting researchers in computational mathematics and PDE modeling.

The paper provides an error analysis for surrogate models using a simplified weak-SINDy method, showing that under boundedness assumptions, the surrogate dynamics converge to the true dynamics and the solutions are reasonably close.

In this paper, we give an in-depth error analysis for surrogate models generated by a variant of the Sparse Identification of Nonlinear Dynamics (SINDy) method. We start with an overview of a variety of non-linear system identification techniques, namely, SINDy, weak-SINDy, and the occupation kernel method. Under the assumption that the dynamics are a finite linear combination of a set of basis functions, these methods establish a matrix equation to recover coefficients. We illuminate the structural similarities between these techniques and establish a projection property for the weak-SINDy technique. Following the overview, we analyze the error of surrogate models generated by a simplified version of weak-SINDy. In particular, under the assumption of boundedness of a composition operator given by the solution, we show that (i) the surrogate dynamics converges towards the true dynamics and (ii) the solution of the surrogate model is reasonably close to the true solution. Finally, as an application, we discuss the use of a combination of weak-SINDy surrogate modeling and proper orthogonal decomposition (POD) to build a surrogate model for partial differential equations (PDEs).

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