动力系统理论
计算机科学
颂歌
常微分方程
动力系统(定义)
偏微分方程
参数化(大气建模)
可微函数
人工神经网络
应用数学
微分方程
线性动力系统
人工智能
数学
数学分析
物理
辐射传输
量子力学
作者
Andrzej Dulny,Andreas Hotho,Anna Krause
标识
DOI:10.1007/978-3-031-15791-2_8
摘要
Many physical processes such as weather phenomena or fluid mechanics are governed by partial differential equations (PDEs). Modelling such dynamical systems using Neural Networks is an active research field. However, current methods are still very limited, as they do not exploit the knowledge about the dynamical nature of the system, require extensive prior knowledge about the governing equations or are limited to linear or first-order equations. In this work we make the observation that the Method of Lines used to solve PDEs can be represented using convolutions which makes convolutional neural networks (CNNs) the natural choice to parametrize arbitrary PDE dynamics. We combine this parametrization with differentiable ODE solvers to form the NeuralPDE Model, which explicitly takes into account the fact that the data is governed by differential equations. We show in several experiments on toy and real-world data that our model consistently outperforms state-of-the-art models used to learn dynamical systems.
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