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An artificial intelligence approach for the estimation of conduction heat transfer using deep neural networks

Mohammad Edalatifar (Laboratory on Convective Heat and Mass Transfer, Tomsk State University, Tomsk, Russia)
Jana Shafi (Department of Computer Engineering and Information, College of Engineering in Wadi Alddawasir, Prince Sattam Bin Abdulaziz University, Wadi Alddawasir, Saudi Arabia)
Majdi Khalid (Department of Computer Science and Artificial Intelligence, College of Computing, Umm Al-Qura University, Makkah, Saudi Arabia)
Manuel Baro (Tecnológico Nacional de México Campus Nuevo Casas Grandes, Nuevo Casas Grandes, Mexico)
Mikhail A. Sheremet (Department of Theoretical Mechanics, Tomsk State University, Tomsk, Russia)
Mohammad Ghalambaz (Laboratory on Convective Heat and Mass Transfer, Tomsk State University, Tomsk, Russia)

International Journal of Numerical Methods for Heat & Fluid Flow

ISSN: 0961-5539

Article publication date: 1 July 2024

Issue publication date: 2 September 2024

93

Abstract

Purpose

This study aims to use deep neural networks (DNNs) to learn the conduction heat transfer physics and estimate temperature distribution images in a physical domain without using any physical model or mathematical governing equation.

Design/methodology/approach

Two novel DNNs capable of learning the conduction heat transfer physics were defined. The first DNN (U-Net autoencoder residual network [UARN]) was designed to extract local and global features simultaneously. In the second DNN, a conditional generative adversarial network (CGAN) was used to enhance the accuracy of UARN, which is referred to as CGUARN. Then, novel loss functions, introduced based on outlier errors, were used to train the DNNs.

Findings

A UARN neural network could learn the physics of heat transfer. Within a few epochs, it reached mean and outlier errors that other DNNs could never reach after many epochs. The composite outlier-mean error as a loss function showed excellent performance in training DNNs for physical images. A UARN could excellently capture local and global features of conduction heat transfer, whereas the composite error could accurately guide DNN to extract high-level information by estimating temperature distribution images.

Originality/value

This study offers a unique approach to estimating physical information, moving from traditional mathematical and physical models to machine learning approaches. Developing novel DNNs and loss functions has shown promising results, opening up new avenues in heat transfer physics and potentially other fields.

Keywords

Acknowledgements

This research of Mohammad Ghalambaz and Mikhail Sheremet was supported by the Tomsk State University Development Programme (Priority-2030). This study was supported via funding from Prince Sattam bin Abdulaziz University under Project no. PSAU/2024/R/1445.

Citation

Edalatifar, M., Shafi, J., Khalid, M., Baro, M., Sheremet, M.A. and Ghalambaz, M. (2024), "An artificial intelligence approach for the estimation of conduction heat transfer using deep neural networks", International Journal of Numerical Methods for Heat & Fluid Flow, Vol. 34 No. 8, pp. 3107-3130. https://doi.org/10.1108/HFF-11-2023-0678

Publisher

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Emerald Publishing Limited

Copyright © 2024, Emerald Publishing Limited

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