Computation (Oct 2022)

A Regularized Real-Time Integrator for Data-Driven Control of Heating Channels

  • Chady Ghnatios,
  • Victor Champaney,
  • Angelo Pasquale,
  • Francisco Chinesta

DOI
https://doi.org/10.3390/computation10100176
Journal volume & issue
Vol. 10, no. 10
p. 176

Abstract

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In many contexts of scientific computing and engineering science, phenomena are monitored over time and data are collected as time-series. Plenty of algorithms have been proposed in the field of time-series data mining, many of them based on deep learning techniques. High-fidelity simulations of complex scenarios are truly computationally expensive and a real-time monitoring and control could be efficiently achieved by the use of artificial intelligence. In this work we build accurate data-driven models of a two-phase transient flow in a heated channel, as usually encountered in heat exchangers. The proposed methods combine several artificial neural networks architectures, involving standard and transposed deep convolutions. In particular, a very accurate real-time integrator of the system has been developed.

Keywords