Department of Materials Science and Engineering, Texas A&M University, 3003 TAMU, College Station, TX 77843, USA.
Mechanical Engineering, Johns Hopkins University, Baltimore, MD 21218, USA.
Neural Netw. 2023 May;162:472-489. doi: 10.1016/j.neunet.2023.03.014. Epub 2023 Mar 13.
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.
本文提出了一种高效、鲁棒的数据驱动深度学习(DL)计算框架,用于解决线性连续体弹性问题。该方法基于物理信息神经网络(PINNs)的基本原理。为了准确表示场变量,提出了一种多目标损失函数。它由对应于控制偏微分方程(PDE)的残差项、由控制物理推导的本构关系、各种边界条件以及在问题域中随机选择的配置点上的基于数据的物理知识拟合项组成。为此,训练了多个密集连接的独立人工神经网络(ANNs),每个 ANN 都近似一个场变量,以获得准确的解。解决了包括弹性的 Airy 解和 Kirchhoff-Love 板问题在内的几个基准问题。在准确性和鲁棒性方面的性能表明了当前框架的优越性,它与解析解具有极好的一致性。本工作结合了基于解析关系中可用物理信息的经典方法的优点,以及在数据驱动构建轻量级、准确和鲁棒神经网络方面的 DL 技术的优越能力。本文开发的模型可以使用最小的网络参数显著提高计算速度,并且在不同的计算平台上具有易于适应性。