In our prior work [arXiv:2109.09316], neural network methods with inputs based on domain of dependence and a converging sequence were introduced for solving one dimensional conservation laws, in particular the Euler systems. To predict a high-fidelity solution at a given space-time location, two solutions of a conservation law from a converging sequence, computed from low-cost numerical schemes, and in a local domain of dependence of the space-time location, serve as the input of a neural network. In the present work, we extend the methods to two dimensional Euler systems and introduce variations. Numerical results demonstrate that the methods not only work very well in one dimension [arXiv:2109.09316], but also perform well in two dimensions. Despite smeared local input data, the neural network methods are able to predict shocks, contacts, and smooth regions of the solution accurately. The neural network methods are efficient and relatively easy to train because they are local solvers.
翻译:在我们先前的工作[arXiv: 2109.09316] 中,引入了神经网络方法,根据依赖领域和趋同序列提供投入,以解决一维保护法,特别是尤勒系统。为了预测特定时空位置的高不贞度解决方案,根据低成本数字办法和空间时间地点的当地依赖领域,从一个趋同序列计算出两种保护法解决办法,作为神经网络的输入。在目前的工作中,我们将这些方法推广到两个维尤勒系统并引入变异。数字结果显示,这些方法不仅在一个维度[arXiv: 2109.09316] 运作良好,而且还在两个方面运行良好。尽管当地输入数据被涂抹,神经网络方法能够准确预测冲击、接触和解决方案的平坦区域。神经网络方法是高效和相对容易的,因为它们是本地溶液。