This paper introduces a deep learning method for solving an elliptic hemivariational inequality (HVI). In this method, an expectation minimization problem is first formulated based on the variational principle of underlying HVI, which is solved by stochastic optimization algorithms using three different training strategies for updating network parameters. The method is applied to solve two practical problems in contact mechanics, one of which is a frictional bilateral contact problem and the other of which is a frictionless normal compliance contact problem. Numerical results show that the deep learning method is efficient in solving HVIs and the adaptive mesh-free multigrid algorithm can provide the most accurate solution among the three learning methods.
翻译:本文介绍了一种深层次的学习方法,用以解决椭圆体的异差不平等问题。在这一方法中,期望最小化问题最初是根据HVI的变异原则拟订的,该原则是通过采用三种不同的培训战略更新网络参数的随机优化算法来解决的。该方法用于解决接触机械的两个实际问题,其中一个是摩擦性双边接触问题,另一个是无摩擦性正常合规问题。数字结果显示,深层次学习方法在解决HVI方面是有效的,适应性无网格多格计算法可以在三种学习方法中提供最准确的解决方案。