We present a machine learning based method for learning first integrals of systems of ordinary differential equations from given trajectory data. The method is model-agnostic in that it does not require explicit knowledge of the underlying system of differential equations that generated the trajectories. As a by-product, once the first integrals have been learned, also the system of differential equations will be known. We illustrate our method by considering several classical problems from the mathematical sciences.
翻译:我们提出了一个基于机器学习的方法,用于从特定轨迹数据中首先学习普通差分方程式系统的组成部分。这种方法是模型不可知性的方法,因为它不需要对产生轨迹的差分方程式基础系统有明确的了解。作为一个副产品,一旦学会了第一个组成部分,差异方程式系统也会被人们所了解。我们通过考虑数学科学中的一些古老问题来说明我们的方法。