解决热弹性耦合问题的深度学习方法

Ruoshi Fang, Kai Zhang, Ke Song, Yue Kai, Yong Li, B. Zheng
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摘要

热弹性问题的研究在工程领域具有重要意义。在分析非傅里叶热弹性问题时,人们发现随着热弛豫时间的增加,有限元求解将面临收敛困难。因此,有必要采用其他方法来求解。本文提出了一种基于 DeepXDE 深度学习库的物理信息神经网络(PINN)来分析热弹性问题,包括经典热弹性问题、热弹性耦合问题和广义热弹性问题。损失函数基于方程、初始条件和边界条件构建。与传统的数据驱动方法不同,这种方法不依赖于已知解。通过与解析解和有限元解的比较,验证了深度学习方法的适用性和准确性,为热弹性问题的研究提供了新的见解。
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A deep learning method for solving thermoelastic coupling problem
The study of thermoelasticity problems holds significant importance in the field of engineering. When analyzing non-Fourier thermoelastic problems, it was found that as the thermal relaxation time increases, the finite element solution will face convergence difficulties. Therefore, it is necessary to use alternative methods to solve. This paper proposes a physics-informed neural network (PINN) based on the DeepXDE deep learning library to analyze thermoelastic problems, including classical thermoelastic problems, thermoelastic coupling problems, and generalized thermoelastic problems. The loss function is constructed based on equations, initial conditions, and boundary conditions. Unlike traditional data-driven methods, this approach does not rely on known solutions. By comparing with analytical and finite element solutions, the applicability and accuracy of the deep learning method have been validated, providing new insights for the study of thermoelastic problems.
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