Inicio  /  Computation  /  Vol: 10 Par: 10 (2022)  /  Artículo
ARTÍCULO
TITULO

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

Chady Ghnatios    
Victor Champaney    
Angelo Pasquale and Francisco Chinesta    

Resumen

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.

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