A graph neural network (GCN) is employed in the deep energy method (DEM) model to solve the momentum balance equation in 3D for the deformation of linear elastic and hyperelastic materials due to its ability to handle irregular domains over the traditional DEM method based on a multilayer perceptron (MLP) network. Its accuracy and solution time are compared to the DEM model based on a MLP network. We demonstrate that the GCN-based model delivers similar accuracy while having a shorter run time through numerical examples. Two different spatial gradient computation techniques, one based on automatic differentiation (AD) and the other based on shape function (SF) gradients, are also accessed. We provide a simple example to demonstrate the strain localization instability associated with the AD-based gradient computation and show that the instability exists in more general cases by four numerical examples. The SF-based gradient computation is shown to be more robust and delivers an accurate solution even at severe deformations. Therefore, the combination of the GCN-based DEM model and SF-based gradient computation is potentially a promising candidate for solving problems involving severe material and geometric nonlinearities.
翻译:在深能方法模型中采用了一个图形神经网络(GCN),以解决3D中线性弹性材料和超弹性材料变形的动力平衡方程式,因为3D中具有在多层梯度网络基础上处理传统DEM方法的不规则域的能力。其准确性和溶解时间与基于MLP网络的DEM模型相比较。我们表明,基于GCN的模型在数字实例中运行时间较短的情况下也具有类似的准确性。还采用了两种不同的空间梯度计算技术,一种基于自动差异(AD),另一种基于形状函数(SF)梯度(SF),我们提供了一个简单的例子,以展示与基于AD的梯度计算相关的紧张本地化不稳定性,并用四个数字实例表明在更一般情况下存在这种不稳定性。基于SF的梯度计算方法显示更加稳健,甚至在严重变形时也提供一种准确的解决方案。因此,基于GCN的DEM模型和基于SF的梯度计算组合对于解决涉及严重物质和非地球测量非直线性的问题可能是一个很有希望的选择。