基于张量的偏微分方程数据驱动识别

Wanting Lin, Xiaofan Lu, Linan Zhang
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引用次数: 0

摘要

我们提出了一种基于张量的模型选择方法,该方法仅使用时空测量就能确定支配动态系统的未知偏微分方程。该方法规避了基于矩阵的标准方法通常会消耗大量存储空间的缺点。利用最近开发的非线性动力学系统多维近似法,我们收集了测量数据的非线性和偏导数项,并以张量-训练格式构建了低秩字典张量。然后建立一个基于张量的线性回归问题,在学习精度、模型复杂性和计算效率之间取得平衡。可以提取未知方程的代数表达式。在波方程、伯格斯方程和一些参数偏微分方程生成的数据集上演示了数值结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Tensor-Based Data-Driven Identification of Partial Differential Equations
We present a tensor-based method for model selection which identifies the unknown partial differential equation that governs a dynamical system using only spatiotemporal measurements. The method circumvents a disadvantage of standard matrix-based methods which typically have large storage consumption. Using a recently developed multidimensional approximation of nonlinear dynamical systems, we collect the nonlinear and partial derivative terms of the measured data and construct a low-rank dictionary tensor in the tensor-train format. A tensor-based linear regression problem is then built, which balances the learning accuracy, model complexity, and computational efficiency. An algebraic expression of the unknown equations can be extracted. Numerical results are demonstrated on datasets generated by the wave equation, the Burgers' equation, and a few parametric partial differential equations.
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