Machine learning interatomic potential: Bridge the gap between small-scale models and realistic device-scale simulations

  • Guanjie Wang
  • , Changrui Wang
  • , Xuanguang Zhang
  • , Zefeng Li
  • , Jian Zhou
  • , Zhimei Sun*
  • *Corresponding author for this work

Research output: Contribution to journalReview articlepeer-review

Abstract

Machine learning interatomic potential (MLIP) overcomes the challenges of high computational costs in density-functional theory and the relatively low accuracy in classical large-scale molecular dynamics, facilitating more efficient and precise simulations in materials research and design. In this review, the current state of the four essential stages of MLIP is discussed, including data generation methods, material structure descriptors, six unique machine learning algorithms, and available software. Furthermore, the applications of MLIP in various fields are investigated, notably in phase-change memory materials, structure searching, material properties predicting, and the pre-trained universal models. Eventually, the future perspectives, consisting of standard datasets, transferability, generalization, and trade-off between accuracy and complexity in MLIPs, are reported.

Original languageEnglish
Article number109673
JournaliScience
Volume27
Issue number5
DOIs
StatePublished - 17 May 2024

Keywords

  • Chemistry
  • Computer science
  • Materials science
  • Physics

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