A physics‐informed machine learning prediction for thermal analysis in a convective‐radiative concave fin with periodic boundary conditions

Author:

Kumar Chandan1,Srilatha Pudhari2,Karthik Kalachar3,Somashekar Channaiah4,Nagaraja Kallur Venkat1,Varun Kumar Ravikumar Shashikala5,Shah Nehad Ali6

Affiliation:

1. Computational Science Lab Amrita School of Engineering Amrita Vishwa Vidyapeetham Bengaluru India

2. Department of Mathematics Institute of Aeronautical Engineering Hyderabad India

3. Department of Studies in Mathematics Davangere University Davangere India

4. Department of Mathematics Sir. M. V government science college Bommanakatte Bhadravathi Karnataka India

5. Department of Pure and Applied Mathematics School of Mathematical Sciences Sunway University Petaling Jaya Selangor Darul Ehsan Malaysia

6. Department of Mechanical Engineering Sejong University Seoul South Korea

Abstract

AbstractThe present research is focused on the inspection of unsteady heat dissipation through a radiative‐convective concave profiled fin along with the periodic boundary conditions. Additionally, the long‐short‐term memory machine learning (LSTM‐ML) approach is used in this study to examine the periodic fluctuation in the temperature of the fin. The current research is devoted to solving the highly non‐linear equation using a physics‐informed neural network (PINN) approach. Using the proper dimensionless terms, the associated fin problem is transformed into a non‐dimensional system, and the resulting partial differential equation (PDE) is then numerically solved using the finite difference method (FDM). Using the data‐driven LSTM‐ML technique, the time‐dependent periodic heat transmission in the concave fin is also examined. The impact of various factors on the temperature profile of the concave extended surface is explained, and the results are visually displayed. The temperature distribution in the concave fin diminishes as the convection‐conduction parameter and radiation‐conduction parameter rise. As the amplitude and thermal conductivity parameters improve, so does the temperature of the concave fin. Furthermore, it is demonstrated that although LSTM‐ML and PINN closely matched the FDM findings during the training domain, only PINN with designed characteristics has the potential to predict accurately beyond the trained region by capturing the physics of the problem.

Publisher

Wiley

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