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Physics guided neural networks for modelling of non-linear dynamics

Abstract

The success of the current wave of artificial intelligence can be partly attributed to deep neural networks, which have proven to be very effective in learning complex patterns from large datasets with minimal human intervention. However, it is difficult to train these models on complex dynamical systems from data alone due to their low data efficiency and sensitivity to hyperparameters and initialisation. This work demonstrates that injection of partially known information at an intermediate layer in a DNN can improve model accuracy, reduce model uncertainty, and yield improved convergence during the training. The value of these physics-guided neural networks has been demonstrated by learning the dynamics of a wide variety of nonlinear dynamical systems represented by five well-known equations in nonlinear systems theory: the Lotka–Volterra, Duffing, Van der Pol, Lorenz, and Henon–Heiles systems.
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Category

Academic article

Language

English

Author(s)

Affiliation

  • SINTEF Digital / Mathematics and Cybernetics
  • Norwegian University of Science and Technology
  • Oklahoma State University

Year

2022

Published in

Neural Networks

ISSN

0893-6080

Volume

154

Page(s)

333 - 345

View this publication at Norwegian Research Information Repository