论文标题
PINN的符号差分运算符的方法,发现稀疏数据
A PINN Approach to Symbolic Differential Operator Discovery with Sparse Data
论文作者
论文摘要
鉴于来自由微分方程控制的系统的充足的实验数据,可以使用深度学习技术来构建潜在的差分运算符。在这项工作中,我们在存在稀疏实验数据的情况下对差异操作员进行象征性发现。可以通过为我们的算法提供有关基础动态的先前信息,使机器学习中的这种小型数据制度可进行处理。物理知识的神经网络(PINN)在该制度中非常成功(仅使用单点或整个PDE溶液重建整个ODE溶液,而初始条件的测量很少)。我们通过添加一个神经网络来修改Pinn方法,该神经网络在微分方程中学习了未知隐藏术语的表示。该算法既可以为微分方程提供替代解决方案,又可以产生隐藏项的黑框表示。然后,这些隐藏的术语神经网络可以使用AI Feynman等符号回归技术转换为符号方程。为了实现这些神经网络的收敛性,我们通过(嘈杂的)测量初始条件以及(综合)实验数据提供了算法。即使在ODE和PDE制度中提供了极少数嘈杂数据的测量值,我们也证明了这种方法的强劲性能。
Given ample experimental data from a system governed by differential equations, it is possible to use deep learning techniques to construct the underlying differential operators. In this work we perform symbolic discovery of differential operators in a situation where there is sparse experimental data. This small data regime in machine learning can be made tractable by providing our algorithms with prior information about the underlying dynamics. Physics Informed Neural Networks (PINNs) have been very successful in this regime (reconstructing entire ODE solutions using only a single point or entire PDE solutions with very few measurements of the initial condition). We modify the PINN approach by adding a neural network that learns a representation of unknown hidden terms in the differential equation. The algorithm yields both a surrogate solution to the differential equation and a black-box representation of the hidden terms. These hidden term neural networks can then be converted into symbolic equations using symbolic regression techniques like AI Feynman. In order to achieve convergence of these neural networks, we provide our algorithms with (noisy) measurements of both the initial condition as well as (synthetic) experimental data obtained at later times. We demonstrate strong performance of this approach even when provided with very few measurements of noisy data in both the ODE and PDE regime.