论文标题
基于深度学习的经典弹性性方法
A deep learning energy-based method for classical elastoplasticity
论文作者
论文摘要
深能方法(DEM)已用于根据最小势能的原理来解决具有线性弹性,超弹性和应变梯度弹性材料模型的结构的弹性变形。在这项工作中,我们将DEM扩展到涉及路径依赖性和不可逆性的弹性性问题。提出了受可塑性的离散变异表述启发的损失函数。径向返回算法与DEM结合以更新塑料内部状态变量,而不会违反Kuhn-Tucker的一致性条件。有限元形状函数及其梯度用于近似Dem预测位移的空间梯度,而高斯正交被用于整合损耗函数。提出了四个数值示例,以证明框架的使用,例如在环状载荷中生成应力 - 应变曲线,材料异质性,与其他物理知识方法的性能进行比较以及对非结构化网格的模拟/推断。在所有情况下,与从有限元方法获得的参考解决方案相比,DEM解决方案均显示出良好的准确性。当前的DEM模型首次将基于能量的物理信息的神经网络扩展到可塑性,并提供了有希望的潜力,可以使用深层神经网络有效地从头开始解决弹性性问题。
The deep energy method (DEM) has been used to solve the elastic deformation of structures with linear elasticity, hyperelasticity, and strain-gradient elasticity material models based on the principle of minimum potential energy. In this work, we extend DEM to elastoplasticity problems involving path dependence and irreversibility. A loss function inspired by the discrete variational formulation of plasticity is proposed. The radial return algorithm is coupled with DEM to update the plastic internal state variables without violating the Kuhn-Tucker consistency conditions. Finite element shape functions and their gradients are used to approximate the spatial gradients of the DEM-predicted displacements, and Gauss quadrature is used to integrate the loss function. Four numerical examples are presented to demonstrate the use of the framework, such as generating stress-strain curves in cyclic loading, material heterogeneity, performance comparison with other physics-informed methods, and simulation/inference on unstructured meshes. In all cases, the DEM solution shows decent accuracy compared to the reference solution obtained from the finite element method. The current DEM model marks the first time that energy-based physics-informed neural networks are extended to plasticity, and offers promising potential to effectively solve elastoplasticity problems from scratch using deep neural networks.