求解非线性偏微分方程的牛顿通知神经算子。

Wenrui Hao, Xinliang Liu, Yahong Yang
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摘要

求解具有多个解的非线性偏微分方程 (PDE) 在物理学、生物学和工程学等多个领域都至关重要。然而,有限元法和有限差分法等传统数值方法在处理非线性求解器时往往面临挑战,尤其是在存在多解的情况下。这些方法的计算成本可能会变得很高,尤其是在依赖牛顿法等求解器时,可能会在分岔点附近出现难以解决的问题。在本文中,我们提出了一种新方法--牛顿信息神经算子,它可以学习非线性 PDE 的牛顿求解器。我们的方法将传统数值技术与牛顿非线性求解器相结合,在每次迭代时有效地学习非线性映射。与现有的神经网络方法相比,这种方法只需较少的监督数据点,就能在单个学习过程中计算多个解决方案。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Newton Informed Neural Operator for Solving Nonlinear Partial Differential Equations.

Solving nonlinear partial differential equations (PDEs) with multiple solutions is essential in various fields, including physics, biology, and engineering. However, traditional numerical methods, such as finite element and finite difference methods, often face challenges when dealing with nonlinear solvers, particularly in the presence of multiple solutions. These methods can become computationally expensive, especially when relying on solvers like Newton's method, which may struggle with ill-posedness near bifurcation points. In this paper, we propose a novel approach, the Newton Informed Neural Operator, which learns the Newton solver for nonlinear PDEs. Our method integrates traditional numerical techniques with the Newton nonlinear solver, efficiently learning the nonlinear mapping at each iteration. This approach allows us to compute multiple solutions in a single learning process while requiring fewer supervised data points than existing neural network methods.

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