Physics-incorporated convolutional recurrent neural networks for source identification and forecasting of dynamical systems.

Journal: Neural networks : the official journal of the International Neural Network Society
Published Date:

Abstract

Spatio-temporal dynamics of physical processes are generally modeled using partial differential equations (PDEs). Though the core dynamics follows some principles of physics, real-world physical processes are often driven by unknown external sources. In such cases, developing a purely analytical model becomes very difficult and data-driven modeling can be of assistance. In this paper, we present a hybrid framework combining physics-based numerical models with deep learning for source identification and forecasting of spatio-temporal dynamical systems with unobservable time-varying external sources. We formulate our model PhICNet as a convolutional recurrent neural network (RNN) which is end-to-end trainable for spatio-temporal evolution prediction of dynamical systems and learns the source behavior as an internal state of the RNN. Experimental results show that the proposed model can forecast the dynamics for a relatively long time and identify the sources as well.

Authors

  • Priyabrata Saha
    School of Electrical and Computer Engineering, Georgia Institute of Technology, Atlanta, GA 30332, USA. Electronic address: priyabratasaha@gatech.edu.
  • Saurabh Dash
    School of Electrical and Computer Engineering, Georgia Institute of Technology, Atlanta, GA 30332, USA. Electronic address: saurabhdash@gatech.edu.
  • Saibal Mukhopadhyay
    GB Pant Institute of Post Graduate Education and Research, New Delhi, India.