作者
Suyong Kim, Weiqi Ji, Sili Deng, Yingbo Ma, Christopher Rackauckas
发表日期
2021/9/1
期刊
Chaos: An Interdisciplinary Journal of Nonlinear Science
卷号
31
期号
9
出版商
AIP Publishing
简介
Neural Ordinary Differential Equations (ODEs) are a promising approach to learn dynamical models from time-series data in science and engineering applications. This work aims at learning neural ODEs for stiff systems, which are usually raised from chemical kinetic modeling in chemical and biological systems. We first show the challenges of learning neural ODEs in the classical stiff ODE systems of Robertson’s problem and propose techniques to mitigate the challenges associated with scale separations in stiff systems. We then present successful demonstrations in stiff systems of Robertson’s problem and an air pollution problem. The demonstrations show that the usage of deep networks with rectified activations, proper scaling of the network outputs as well as loss functions, and stabilized gradient calculations are the key techniques enabling the learning of stiff neural ODEs. The success of learning stiff neural …
引用总数
2020202120222023202419405530
学术搜索中的文章
S Kim, W Ji, S Deng, Y Ma, C Rackauckas - Chaos: An Interdisciplinary Journal of Nonlinear …, 2021