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JOURNALS // Dal'nevostochnyi Matematicheskii Zhurnal // Archive

Dal'nevost. Mat. Zh., 2022 Volume 22, Number 2, Pages 190–194 (Mi dvmg487)

Predicting subdifferential switching surface in a steady-state complex heat transfer problem using deep learning

K. S. Kuznetsova, E. V. Amosovaab

a Far Eastern Federal University, Vladivostok
b Institute for Applied Mathematics, Far Eastern Branch, Russian Academy of Sciences, Vladivostok

Abstract: A boundary value problem of complex heat transfer have been considered in the work. A method for determination of a switching surface with subdifferential boundary conditions based on the use of deep learning has been proposed. A method uses a neural network trained on a dataset of numerical solutions of the steady-state complex heat transfer forward problems. The obtained results are verified by comparison with the numerical experiments.

Key words: Subdifferential boundary value problem, deep learning, neural networks, complex heat transfer.

UDC: 519.632.4

MSC: Primary 65N12; Secondary 35J25

Received: 15.06.2022

Language: English

DOI: 10.47910/FEMJ202224



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