Parsimony as the ultimate regularizer for physics-informed machine learning

被引:0
|
作者
J. Nathan Kutz
Steven L. Brunton
机构
[1] University of Washington,Department of Applied Mathematics
[2] University of Washington,Department of Mechanical Engineering
来源
Nonlinear Dynamics | 2022年 / 107卷
关键词
Machine learning; Dynamical systems; Parsimony; Physics;
D O I
暂无
中图分类号
学科分类号
摘要
Data-driven modeling continues to be enabled by modern machine learning algorithms and deep learning architectures. The goals of such efforts revolve around the generation of models for prediction, characterization, and control of complex systems. In the context of physics and engineering, extrapolation and generalization are critical aspects of model discovery that are empowered by various aspects of parsimony. Parsimony can be encoded (i) in a low-dimensional coordinate system, (ii) in the representation of governing equations, or (iii) in the representation of parametric dependencies. In what follows, we illustrate techniques that leverage parsimony in deep learning to build physics-based models, culminating in a deep learning architecture that is parsimonious in coordinates and also in representing the dynamics and their parametric dependence through a simple normal form. Ultimately, we argue that promoting parsimony in machine learning results in more physical models, i.e., models that generalize and are parametrically represented by governing equations.
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页码:1801 / 1817
页数:16
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