Physics-aware deep learning framework for linear elasticity
- URL: http://arxiv.org/abs/2302.09668v1
- Date: Sun, 19 Feb 2023 20:33:32 GMT
- Title: Physics-aware deep learning framework for linear elasticity
- Authors: Arunabha M. Roy and Rikhi Bose
- Abstract summary: The paper presents an efficient and robust data-driven deep learning (DL) computational framework for linear continuum elasticity problems.
For an accurate representation of the field variables, a multi-objective loss function is proposed.
Several benchmark problems including the Airimaty solution to elasticity and the Kirchhoff-Love plate problem are solved.
- Score: 0.0
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: The paper presents an efficient and robust data-driven deep learning (DL)
computational framework developed for linear continuum elasticity problems. The
methodology is based on the fundamentals of the Physics Informed Neural
Networks (PINNs). For an accurate representation of the field variables, a
multi-objective loss function is proposed. It consists of terms corresponding
to the residual of the governing partial differential equations (PDE),
constitutive relations derived from the governing physics, various boundary
conditions, and data-driven physical knowledge fitting terms across randomly
selected collocation points in the problem domain. To this end, multiple
densely connected independent artificial neural networks (ANNs), each
approximating a field variable, are trained to obtain accurate solutions.
Several benchmark problems including the Airy solution to elasticity and the
Kirchhoff-Love plate problem are solved. Performance in terms of accuracy and
robustness illustrates the superiority of the current framework showing
excellent agreement with analytical solutions. The present work combines the
benefits of the classical methods depending on the physical information
available in analytical relations with the superior capabilities of the DL
techniques in the data-driven construction of lightweight, yet accurate and
robust neural networks. The models developed herein can significantly boost
computational speed using minimal network parameters with easy adaptability in
different computational platforms.
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