In this work, we are concerned with neural network guided goal-oriented a posteriori error estimation and adaptivity using the dual weighted residual method. The primal problem is solved using classical Galerkin finite elements. The adjoint problem is solved in strong form with a feedforward neural network using two or three hidden layers. The main objective of our approach is to explore alternatives for solving the adjoint problem with greater potential of a numerical cost reduction. The proposed algorithm is based on the general goal-oriented error estimation theorem including both linear and nonlinear stationary partial differential equations and goal functionals. Our developments are substantiated with some numerical experiments that include comparisons of neural network computed adjoints and classical finite element solutions of the adjoints. In the programming software, the open-source library deal.II is successfully coupled with LibTorch, the PyTorch C++ application programming interface.
翻译:在这项工作中,我们关注的是神经网络引导的目标导向、事后误差估计和使用双重加权剩余法的适应性。原始问题通过古典Galerkin定数元素来解决。连接问题通过使用两三个隐藏层的饲料向神经网络解决。我们的方法的主要目的是探索解决连接问题的替代办法,以更大的潜力降低数字成本。提议的算法基于一般目标错误估计方程式,包括线性和非线性定数部分方程式和目标功能。我们的发展得到了一些数字实验的证实,其中包括对神经网络计算连接和对连接的经典定数要素解决方案进行比较。在程序软件中,开源图书馆协议.II成功地与LibTorch、PyTorrch C++应用程序编程界面相结合。