Title
Data Driven Governing Equations Approximation Using Deep Neural Networks.
Abstract
We present a numerical framework for approximating unknown governing equations using observation data and deep neural networks (DNN). In particular, we propose to use residual network (ResNet) as the basic building block for equation approximation. We demonstrate that the ResNet block can be considered as a one-step method that is exact in temporal integration. We then present two multi-step methods, recurrent ResNet (RT-ResNet) method and recursive ReNet (RS-ResNet) method. The RT-ResNet is a multi-step method on uniform time steps, whereas the RS-ResNet is an adaptive multi-step method using variable time steps. All three methods presented here are based on integral form of the underlying dynamical system. As a result, they do not require time derivative data for equation recovery and can cope with relatively coarsely distributed trajectory data. Several numerical examples are presented to demonstrate the performance of the methods.
Year
DOI
Venue
2018
10.1016/j.jcp.2019.06.042
Journal of Computational Physics
Keywords
DocType
Volume
Deep neural network,Residual network,Recurrent neural network,Governing equation discovery
Journal
395
ISSN
Citations 
PageRank 
0021-9991
3
0.40
References 
Authors
0
3
Name
Order
Citations
PageRank
Tong Qin130.40
Kailiang Wu271.80
Dongbin Xiu31068115.57