论文标题

通过以不变性实施的机器学习来发现管理方程

Discovering Governing Equations by Machine Learning implemented with Invariance

论文作者

Chen, Chao, Jin, Xiaowei, Li, Hui

论文摘要

部分微分方程(PDE)在许多科学和工程领域都起着显着的重要作用。 PDE推导的常规案例主要取决于第一原理和经验观察。但是,机器学习技术的开发使我们能够以新的方式从大量的存储数据中挖掘潜在的控制方程。尽管数据驱动的PDE发现取得了很大的进步,但现有的文献主要集中在发现方法的改进上,而在发现过程本身中没有实质性的突破,包括候选人的构建原则以及如何结合物理先知。在本文中,通过严格衍生公式,首先基于Galileo不变性和lorentz不变性,为构建方程式建立了候选者,首先提出了基于Galileo Invriance和Lorentz不变性的指南。强制性嵌入物理约束的嵌入与损失函数形式的根本上不同,从而确保设计的神经网络严格遵守不变性的物理先验并增强网络的解释性。通过将结果与PDE-NET进行比较,在汉堡方程和正弦方程的数值实验中,它表明,这项研究中提出的方法具有更好的准确性,简约性和解释性。

The partial differential equation (PDE) plays a significantly important role in many fields of science and engineering. The conventional case of the derivation of PDE mainly relies on first principles and empirical observation. However, the development of machine learning technology allows us to mine potential control equations from the massive amounts of stored data in a fresh way. Although there has been considerable progress in the data-driven discovery of PDE, the extant literature mostly focuses on the improvements of discovery methods, without substantial breakthroughs in the discovery process itself, including the principles for the construction of candidates and how to incorporate physical priors. In this paper, through rigorous derivation of formulas, novel physically enhanced machining learning discovery methods for control equations: GSNN (Galileo Symbolic Neural Network) and LSNN (Lorentz Symbolic Neural Network) are firstly proposed based on Galileo invariance and Lorentz invariance respectively, setting forth guidelines for building the candidates of discovering equations. The adoption of mandatory embedding of physical constraints is fundamentally different from PINN in the form of the loss function, thus ensuring that the designed Neural Network strictly obeys the physical prior of invariance and enhancing the interpretability of the network. By comparing the results with PDE-NET in numerical experiments of Burgers equation and Sine-Gordon equation, it shows that the method presented in this study has better accuracy, parsimony, and interpretability.

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