论文标题
具有高维演化方程的主动学习的神经Galerkin方案
Neural Galerkin Schemes with Active Learning for High-Dimensional Evolution Equations
论文作者
论文摘要
深度神经网络已显示可在高维度中提供准确的功能近似值。但是,拟合网络参数需要提供信息的培训数据,这些数据通常具有挑战性地在科学和工程应用中收集。这项工作提出了基于深度学习的神经宣传计划,该方案通过积极学习来生成培训数据,以求解高维偏微分方程。神经gallinkin方案建立在dirac-frenkel变异原理上,通过随时间依次将残差序列降低,从而可以自适应地以自我信息的方式自适应地收集新的训练数据,该方式受部分微分方程所描述的动力学指导。这与其他机器学习方法相反,该方法旨在及时及时拟合网络参数,而无需考虑培训数据获取。我们的发现是,收集所提出的神经galerkin方案的训练数据的积极形式对于从数值上实现高维度网络的表达能力的关键是。数值实验表明,神经盖金方案具有模拟现象和过程的潜力,这些变量具有许多变量,传统和其他基于深度学习的求解器失败了,尤其是当解决方案的特征在当地发展,例如在高维波传播问题中以及由fokker-planck和Kinate kinational-planck和Kinational-plancks所描述的相互作用的粒子系统中。
Deep neural networks have been shown to provide accurate function approximations in high dimensions. However, fitting network parameters requires informative training data that are often challenging to collect in science and engineering applications. This work proposes Neural Galerkin schemes based on deep learning that generate training data with active learning for numerically solving high-dimensional partial differential equations. Neural Galerkin schemes build on the Dirac-Frenkel variational principle to train networks by minimizing the residual sequentially over time, which enables adaptively collecting new training data in a self-informed manner that is guided by the dynamics described by the partial differential equations. This is in contrast to other machine learning methods that aim to fit network parameters globally in time without taking into account training data acquisition. Our finding is that the active form of gathering training data of the proposed Neural Galerkin schemes is key for numerically realizing the expressive power of networks in high dimensions. Numerical experiments demonstrate that Neural Galerkin schemes have the potential to enable simulating phenomena and processes with many variables for which traditional and other deep-learning-based solvers fail, especially when features of the solutions evolve locally such as in high-dimensional wave propagation problems and interacting particle systems described by Fokker-Planck and kinetic equations.