IDENT: Identifying Differential Equations with Numerical Time evolution
Sung Ha Kang, Wenjing Liao, Yingjie Liu

TL;DR
This paper introduces IDENT, a novel method for identifying linear PDEs from discrete data using Lasso, convergence analysis, and a new error correction technique, validated through extensive numerical experiments.
Contribution
The paper develops IDENT, combining numerical PDE scheme analysis with Lasso and introduces Time Evolution Error correction for robust PDE identification.
Findings
Effective in noisy data conditions
Handles PDEs with varying coefficients
Improves accuracy with denoising and BEE techniques
Abstract
Identifying unknown differential equations from a given set of discrete time dependent data is a challenging problem. A small amount of noise can make the recovery unstable, and nonlinearity and differential equations with varying coefficients add complexity to the problem. We assume that the governing partial differential equation (PDE) is a linear combination of a subset of a prescribed dictionary containing different differential terms, and the objective of this paper is to find the correct coefficients. We propose a new direction based on the fundamental idea of convergence analysis of numerical PDE schemes. We utilize Lasso for efficiency, and a performance guarantee is established based on an incoherence property. The main contribution is to validate and correct the results by Time Evolution Error (TEE). The new algorithm, called Identifying Differential Equations with Numerical…
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Taxonomy
TopicsModel Reduction and Neural Networks · Image and Signal Denoising Methods · Control Systems and Identification
