期刊论文详细信息
JOURNAL OF COMPUTATIONAL PHYSICS 卷:434
Peridynamics enabled learning partial differential equations
Article
Bekar, Ali C.1  Madenci, Erdogan1 
[1] Univ Arizona, Dept Aerosp & Mech Engn, Tucson, AZ 85721 USA
关键词: Partial differential equations;    Machine learning;    Peridynamics;    Sparse optimization;   
DOI  :  10.1016/j.jcp.2021.110193
来源: Elsevier
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【 摘 要 】

This study presents an approach to discover the significant terms in partial differential equations (PDEs) that describe particular phenomena based on the measured data. The relationship between the known field data and its continuous representation of PDEs is achieved through a linear regression model. It specifically employs the peridynamic differential operator (PDDO) and sparse linear regression learning algorithm. The PDEs are approximated by constructing a feature matrix, velocity vector and unknown coefficient vector. Each candidate term (derivatives) appearing in the feature matrix is evaluated numerically by using the PDDO. The solution to the regression model with regularization is achieved through Douglas-Rachford (D-R) algorithm which is based on proximal operators. This coupling performs well due to their robustness to noisy data and the calculation of accurate derivatives. Its effectiveness is demonstrated by considering several fabricated data associated with challenging nonlinear PDEs such as Burgers, Swift-Hohenberg (S-H), Korteweg-de Vries (KdV), Kuramoto-Sivashinsky (K-S), nonlinear Schrodinger (NLS) and Cahn-Hilliard (C-H) equations. (C) 2021 Elsevier Inc. All rights reserved.

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