MRS Meetings and Events

 

DS03.05.01 2022 MRS Spring Meeting

Physics-Informed Deep Learning for Solving Phonon Boltzmann Transport Equation

When and Where

May 12, 2022
3:30pm - 4:00pm

Hawai'i Convention Center, Level 3, 313B

Presenter

Co-Author(s)

Tengfei Luo1,Ruiyang Li1,Eungkyu Lee2

University of Notre Dame1,Kyung Hee University2

Abstract

Tengfei Luo1,Ruiyang Li1,Eungkyu Lee2

University of Notre Dame1,Kyung Hee University2
Boltzmann transport equation (BTE) is an ideal tool to describe the multiscale phonon transport phenomena, which are critical to applications like microelectronics cooling. Numerically solving phonon BTE is extremely computationally challenging due to the high dimensionality of such problems, especially when mode-resolved properties are considered. In this work, we demonstrate a data-free deep learning scheme, physics-informed neural network (PINN), to efficiently solve phonon BTE for multiscale thermal transport problems with the consideration of phonon dispersion and polarization. In particular, a PINN framework is devised to predict the phonon energy distribution by minimizing the residuals of governing equations and boundary conditions, without the need for any labeled training data. Moreover, geometric parameters, such as the characteristic length scale, are included as a part of the input to PINN, which enables learning BTE solutions in a parametric setting. In addition, this deep learning scheme can effectively eliminate the need of the usually implemented small temperature assumption to linearize the BTE. The effectiveness of the present scheme is demonstrated by solving a number of phonon transport problems in different spatial dimensions (from 1D to 3D). Compared to existing numerical BTE solvers, the proposed method exhibits superiority in efficiency and accuracy, showing great promises for practical applications, such as the thermal design of electronic devices.

Keywords

diffusion | electron-phonon interactions | thermal conductivity

Symposium Organizers

Sanghamitra Neogi, University of Colorado Boulder
Ming Hu, University of South Carolina
Subramanian Sankaranarayanan, Argonne National Laboratory
Junichiro Shiomi, The University of Tokyo

Publishing Alliance

MRS publishes with Springer Nature