16
1

Asymptotic Theory of 1\ell_1-Regularized PDE Identification from a Single Noisy Trajectory

Abstract

We prove the support recovery for a general class of linear and nonlinear evolutionary partial differential equation (PDE) identification from a single noisy trajectory using 1\ell_1 regularized Pseudo-Least Squares model~(1\ell_1-PsLS). In any associative R\mathbb{R}-algebra generated by finitely many differentiation operators that contain the unknown PDE operator, applying 1\ell_1-PsLS to a given data set yields a family of candidate models with coefficients c(λ)\mathbf{c}(\lambda) parameterized by the regularization weight λ0\lambda\geq 0. The trace of {c(λ)}λ0\{\mathbf{c}(\lambda)\}_{\lambda\geq 0} suffers from high variance due to data noises and finite difference approximation errors. We provide a set of sufficient conditions which guarantee that, from a single trajectory data denoised by a Local-Polynomial filter, the support of c(λ)\mathbf{c}(\lambda) asymptotically converges to the true signed-support associated with the underlying PDE for sufficiently many data and a certain range of λ\lambda. We also show various numerical experiments to validate our theory.

View on arXiv
Comments on this paper