Physics-Informed Deep Neural Network for Backward-in-Time Prediction: Application to Rayleigh–Bénard Convection

  • Hammoud M
  • Alwassel H
  • Ghanem B
  • et al.
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Abstract

Backward-in-time predictions are needed to better understand the underlying dynamics of physical fluid flows and improve future forecasts. However, integrating fluid flows backward in time is challenging because of numerical instabilities caused by the diffusive nature of the fluid systems and nonlinearities of the governing equations. Although this problem has been long addressed using a nonpositive diffusion coefficient when integrating backward, it is notoriously inaccurate. In this study, a physics-informed deep neural network (PI-DNN) is presented to predict past states of a dissipative dynamical system from snapshots of the subsequent evolution of the system state. The performance of the PI-DNN is investigated using several systematic numerical experiments and the accuracy of the backward-in-time predictions is evaluated in terms of different error metrics. The proposed PI-DNN can predict the previous state of the Rayleigh–Bénard convection with an 8-time-step average normalized error of less than 2% for a turbulent flow at a Rayleigh number of 10 5 .

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APA

Hammoud, M. A. E. R., Alwassel, H., Ghanem, B., Knio, O., & Hoteit, I. (2023). Physics-Informed Deep Neural Network for Backward-in-Time Prediction: Application to Rayleigh–Bénard Convection. Artificial Intelligence for the Earth Systems, 2(1). https://doi.org/10.1175/aies-d-22-0076.1

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