Physics informed deep learning for computational elastodynamics without labeled data
Chengping Rao, Hao Sun, Yang Liu

TL;DR
This paper introduces a physics-informed neural network approach for elastodynamics that models displacement and stress without labeled data, improving accuracy and boundary condition enforcement through a composite DNN scheme.
Contribution
It develops a mixed-variable PINN with a composite DNN scheme to better satisfy boundary conditions in elastodynamics problems without labeled data.
Findings
Enhanced accuracy in elastodynamics modeling.
Effective enforcement of boundary conditions.
Successful application to static and dynamic problems.
Abstract
Numerical methods such as finite element have been flourishing in the past decades for modeling solid mechanics problems via solving governing partial differential equations (PDEs). A salient aspect that distinguishes these numerical methods is how they approximate the physical fields of interest. Physics-informed deep learning is a novel approach recently developed for modeling PDE solutions and shows promise to solve computational mechanics problems without using any labeled data. The philosophy behind it is to approximate the quantity of interest (e.g., PDE solution variables) by a deep neural network (DNN) and embed the physical law to regularize the network. To this end, training the network is equivalent to minimization of a well-designed loss function that contains the PDE residuals and initial/boundary conditions (I/BCs). In this paper, we present a physics-informed neural…
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Taxonomy
TopicsModel Reduction and Neural Networks · Magnetic Properties and Applications · Numerical methods in engineering
