In this work we propose a deep adaptive sampling (DAS) method for solving partial differential equations (PDEs), where deep neural networks are utilized to approximate the solutions of PDEs and deep generative models are employed to generate new collocation points that refine the training set. The overall procedure of DAS consists of two components: solving the PDEs by minimizing the residual loss on the collocation points in the training set and generating a new training set to further improve the accuracy of current approximate solution. In particular, we treat the residual as a probability density function and approximate it with a deep generative model, called KRnet. The new samples from KRnet are consistent with the distribution induced by the residual, i.e., more samples are located in the region of large residual and less samples are located in the region of small residual. Analogous to classical adaptive methods such as the adaptive finite element, KRnet acts as an error indicator that guides the refinement of the training set. Compared to the neural network approximation obtained with uniformly distributed collocation points, the developed algorithms can significantly improve the accuracy, especially for low regularity and high-dimensional problems. We demonstrate the effectiveness of the proposed DAS method with numerical experiments.
翻译:在这项工作中,我们提出了解决部分差异方程的深适应性抽样(DAS)方法,其中利用深神经网络来接近PDE的解决方案,并采用深基因模型来产生新的合用点,以完善培训集;DAS的总体程序包括两个部分:通过尽量减少培训集合用点的剩余损失来解决PDE,并产生一套新的培训集,以进一步提高当前近似解决方案的准确性;特别是,我们把剩余作为概率密度函数处理,并把它与称为KRnet的深基因模型相近;KRnet的新样品与残余物的分布一致,即,更多的样品位于大残余物区域,较少的样品位于小残留物区域;对传统适应性适应性方法,如适应性限定要素进行模拟,KRnet作为指导完善培训集成的错误指标;与统一分布式合用点获得的神经网络近似值相比,开发的算法可以显著提高准确性,特别是对于低常规性和高维度问题而言,我们展示了拟议的DAS方法的有效性。