Ordinary differential equations (ODEs), commonly used to characterize the dynamic systems, are difficult to propose in closed-form for many complicated scientific applications, even with the help of domain expert. We propose a fast and accurate data-driven method, MAGI-X, to learn the unknown dynamic from the observation data in a non-parametric fashion, without the need of any domain knowledge. Unlike the existing methods that mainly rely on the costly numerical integration, MAGI-X utilizes the powerful functional approximator of neural network to learn the unknown nonlinear dynamic within the MAnifold-constrained Gaussian process Inference (MAGI) framework that completely circumvents the numerical integration. Comparing against the state-of-the-art methods on three realistic examples, MAGI-X achieves competitive accuracy in both fitting and forecasting while only taking a fraction of computational time. Moreover, MAGI-X provides practical solution for the inference of partial observed systems, which no previous method is able to handle.
翻译:通常用于描述动态系统特征的普通差分方程式(ODs)很难以封闭形式提出许多复杂的科学应用,即使有域专家的帮助。我们提议一种快速和准确的数据驱动方法,MAGI-X,以非参数性的方式,在不需要任何域知识的情况下,从观测数据中学习未知的动态。与主要依赖昂贵数字集成的现有方法不同,MAGI-X利用神经网络的强大功能近似器,学习在Monicfoldy-crocked Gaussian过程推论(MAGI)框架内完全绕过数字集成的未知的非线性动态。与三个现实实例相比,MAGI-X在装配和预测方面都具有竞争性的准确性,而只用了一小部分计算时间。此外,MAGI-X为部分观察系统的推论提供了实际解决办法,而以前没有方法能够处理。