论文标题

通过深层网络增强物理模型,以预测复杂的动态

Augmenting Physical Models with Deep Networks for Complex Dynamics Forecasting

论文作者

Yin, Yuan, Guen, Vincent Le, Dona, Jérémie, de Bézenac, Emmanuel, Ayed, Ibrahim, Thome, Nicolas, Gallinari, Patrick

论文摘要

在只有对其动力学的部分知识的环境中,预测复杂的动态现象是各个科学领域的普遍问题。尽管在这种情况下,纯粹的数据驱动方法可以说是不够的,但基于标准的物理建模的方法往往过于简单化,引起了不可忽略的错误。在这项工作中,我们介绍了Aphynity框架,这是一种原则性的方法,用于增强由微分方程用深层数据驱动模型描述的不完整的物理动力学。它包括将动态分解为两个组件:一个物理组件,占我们具有一些先验知识的动态,以及一个数据驱动的组件,说明了物理模型的错误。仔细提出了学习问题,以便物理模型尽可能多地解释数据,而数据驱动的组件仅描述了物理模型无法捕获的信息,而不再,也不是。这不仅为这种分解提供了存在和独特性,而且还确保了解释性和收益概括。在三种重要用例中进行的实验,每种都代表了不同现象家族,即反应扩散方程,波动方程和非线性阻尼摆,表明aphynity可以有效利用近似物理模型来准确预测系统的演化并正确识别相关的物理参数。代码可在https://github.com/yuan-yin/aphynity上找到。

Forecasting complex dynamical phenomena in settings where only partial knowledge of their dynamics is available is a prevalent problem across various scientific fields. While purely data-driven approaches are arguably insufficient in this context, standard physical modeling based approaches tend to be over-simplistic, inducing non-negligible errors. In this work, we introduce the APHYNITY framework, a principled approach for augmenting incomplete physical dynamics described by differential equations with deep data-driven models. It consists in decomposing the dynamics into two components: a physical component accounting for the dynamics for which we have some prior knowledge, and a data-driven component accounting for errors of the physical model. The learning problem is carefully formulated such that the physical model explains as much of the data as possible, while the data-driven component only describes information that cannot be captured by the physical model, no more, no less. This not only provides the existence and uniqueness for this decomposition, but also ensures interpretability and benefits generalization. Experiments made on three important use cases, each representative of a different family of phenomena, i.e. reaction-diffusion equations, wave equations and the non-linear damped pendulum, show that APHYNITY can efficiently leverage approximate physical models to accurately forecast the evolution of the system and correctly identify relevant physical parameters. Code is available at https://github.com/yuan-yin/APHYNITY .

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