In this article, we propose three kinds of neural networks inspired by power method, inverse power method and shifted inverse power method to solve linear eigenvalue problem, respectively. These neural networks share similar ideas with traditional methods, in which differential operator is realized by automatic differentiation. The eigenfunction of the eigenvalue problem is learned by the neural network and the iterations are implemented by optimizing the specially defined loss function. We examine the applicability and accuracy of our methods in the numerical experiments in one dimension, two dimensions and even higher dimensions. Numerical results show that accurate eigenvalue and eigenfunction approximations can be obtained by our methods.
翻译:在本条中,我们分别提出三种由动力方法、反电法和反向电动方法所启发的神经网络,分别用于解决线性电子价值问题,这些神经网络与传统方法有着相似的想法,在传统方法中,通过自动区分实现差异操作者,神经网络学会了电子价值问题的机能,通过优化特别界定的损失功能来实施迭代。我们从一个层面、两个层面、甚至更高的层面审视我们在数字实验中的方法的适用性和准确性。数字结果显示,我们的方法可以取得准确的机能价值和机能近似。