Molecular dynamics simulations of heat transport using machine-learned potentials: A mini-review and tutorial on GPUMD with neuroevolution potentials

Author:

Dong Haikuan1ORCID,Shi Yongbo1,Ying Penghua2ORCID,Xu Ke3ORCID,Liang Ting3ORCID,Wang Yanzhou4,Zeng Zezhu5ORCID,Wu Xin6ORCID,Zhou Wenjiang78ORCID,Xiong Shiyun9,Chen Shunda10ORCID,Fan Zheyong1ORCID

Affiliation:

1. College of Physical Science and Technology, Bohai University 1 , Jinzhou, People’s Republic of China

2. Department of Physical Chemistry, School of Chemistry, Tel Aviv University 2 , Tel Aviv 6997801, Israel

3. Department of Electronic Engineering and Materials Science and Technology Research Center, The Chinese University of Hong Kong 3 , Shatin, N.T. 999077, Hong Kong, People’s Republic of China

4. MSP group, QTF Centre of Excellence, Department of Applied Physics, Aalto University 4 , FI-00076 Aalto, Espoo, Finland

5. The Institute of Science and Technology Austria 5 , Am Campus 1, 3400 Klosterneuburg, Austria

6. Department of Engineering Mechanics, School of Civil Engineering and Transportation, South China University of Technology 6 , Guangzhou, Guangdong Province 510640, People’s Republic of China

7. Department of Energy and Resources Engineering, Peking University 7 , Beijing 100871, China

8. School of Advanced Engineering, Great Bay University 8 , Dongguan 523000, China

9. Guangzhou Key Laboratory of Low-Dimensional Materials and Energy Storage Devices, School of Materials and Energy, Guangdong University of Technology 9 , Guangzhou 510006, People’s Republic of China

10. Department of Civil and Environmental Engineering, George Washington University 10 , Washington, DC 20052, USA

Abstract

Molecular dynamics (MD) simulations play an important role in understanding and engineering heat transport properties of complex materials. An essential requirement for reliably predicting heat transport properties is the use of accurate and efficient interatomic potentials. Recently, machine-learned potentials (MLPs) have shown great promise in providing the required accuracy for a broad range of materials. In this mini-review and tutorial, we delve into the fundamentals of heat transport, explore pertinent MD simulation methods, and survey the applications of MLPs in MD simulations of heat transport. Furthermore, we provide a step-by-step tutorial on developing MLPs for highly efficient and predictive heat transport simulations, utilizing the neuroevolution potentials as implemented in the GPUMD package. Our aim with this mini-review and tutorial is to empower researchers with valuable insights into cutting-edge methodologies that can significantly enhance the accuracy and efficiency of MD simulations for heat transport studies.

Funder

The National Key Research and Development Project from Ministry of Science and Technology of China

the financial support from the National Natural Science Foundation of China

The science Foundation from Education Department of Liaoning Province

The Doctoral start-up Fund of Bohai University

The Israel Academy of Sciences and Humanities & Council for Higher Education Excellence Fellowship program for International Postdoctoral Researchers

Publisher

AIP Publishing

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