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From the CoverPNAS Plus: Reconstruction of normal forms by learning informed observation geometries from data

机译:来自CoverPNAS Plus:通过从数据中学习明智的观察几何形状来重构正常形式

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摘要

The discovery of physical laws consistent with empirical observations is at the heart of (applied) science and engineering. These laws typically take the form of nonlinear differential equations depending on parameters; dynamical systems theory provides, through the appropriate normal forms, an “intrinsic” prototypical characterization of the types of dynamical regimes accessible to a given model. Using an implementation of data-informed geometry learning, we directly reconstruct the relevant “normal forms”: a quantitative mapping from empirical observations to prototypical realizations of the underlying dynamics. Interestingly, the state variables and the parameters of these realizations are inferred from the empirical observations; without prior knowledge or understanding, they parametrize the dynamics intrinsically without explicit reference to fundamental physical quantities.
机译:与经验观察一致的物理定律的发现是(应用的)科学和工程学的核心。这些定律通常根据参数采用非线性微分方程的形式。动力学系统理论通过适当的范式提供了给定模型可访问的动力学类型的“内在”原型表征。使用数据通知的几何学习的实现,我们直接重建了相关的“正常形式”:从经验观察到基本动力学的原型实现的定量映射。有趣的是,状态变量和这些实现的参数是根据经验观察得出的。在没有先验知识或理解的情况下,它们会固有地对动力学进行参数化,而无需明确参考基本物理量。

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