There has been a growing interest in the use of Deep Neural Networks (DNNs) to solve Partial Differential Equations (PDEs). Despite the promise that such approaches hold, there are various aspects where they could be improved. Two such shortcomings are (i) their computational inefficiency relative to classical numerical methods, and (ii) the non-interpretability of a trained DNN model. In this work we present ASPINN, an anisotropic extension of our earlier work called SPINN--Sparse, Physics-informed, and Interpretable Neural Networks--to solve PDEs that addresses both these issues. ASPINNs generalize radial basis function networks. We demonstrate using a variety of examples involving elliptic and hyperbolic PDEs that the special architecture we propose is more efficient than generic DNNs, while at the same time being directly interpretable. Further, they improve upon the SPINN models we proposed earlier in that fewer nodes are require to capture the solution using ASPINN than using SPINN, thanks to the anisotropy of the local zones of influence of each node. The interpretability of ASPINN translates to a ready visualization of their weights and biases, thereby yielding more insight into the nature of the trained model. This in turn provides a systematic procedure to improve the architecture based on the quality of the computed solution. ASPINNs thus serve as an effective bridge between classical numerical algorithms and modern DNN based methods to solve PDEs. In the process, we also streamline the training of ASPINNs into a form that is closer to that of supervised learning algorithms.
翻译:使用深神经网络(DNNS)解决部分差异(PDE)的问题引起了越来越多的兴趣。尽管这些方法有希望,但在许多方面可以加以改进。其中两个缺点是:(一) 与古典数字方法相比,它们的计算效率低下,以及(二) 训练有素的DNN模式无法解释。在这项工作中,我们提出了ASPINN,这是我们早先称为SPINN-Sparse、物理知情和可解释的神经网络(Interproducable Neal Net-DIDS)的工作的反向延伸,目的是更接近解决这两个问题。ASPINNIS将辐射基础功能网络普遍化。我们用各种各样的例子展示出我们提出的特殊结构比通用的DNNNNNNP效率更高,同时直接解释。此外,我们早先提议的SPINNM模型比使用SPNNNNNNNNNN的解决方案要少得多,在SNPNNP中,这要归功于系统化的系统化的内价化过程, 也就是将AS的内程的精度转换成。我们所训练的ASMAPIPI的系统化过程,因此, 的内精化的S的内精化过程的精化过程的精化过程的精化过程的精化为一种。