TY - JOUR
T1 - Applications and Advances in Machine Learning Force Fields
AU - Wu, Shiru
AU - Yang, Xiaowei
AU - Zhao, Xun
AU - Li, Zhipu
AU - Lu, Min
AU - Xie, Xiaoji
AU - Yan, Jiaxu
N1 - Publisher Copyright:
© 2023 American Chemical Society.
PY - 2023/11/27
Y1 - 2023/11/27
N2 - Force fields (FFs) form the basis of molecular simulations and have significant implications in diverse fields such as materials science, chemistry, physics, and biology. A suitable FF is required to accurately describe system properties. However, an off-the-shelf FF may not be suitable for certain specialized systems, and researchers often need to tailor the FF that fits specific requirements. Before applying machine learning (ML) techniques to construct FFs, the mainstream FFs were primarily based on first-principles force fields (FPFF) and empirical FFs. However, the drawbacks of FPFF and empirical FFs are high cost and low accuracy, respectively, so there is a growing interest in using ML as an effective and precise tool for reconciling this trade-off in developing FFs. In this review, we introduce the fundamental principles of ML and FFs in the context of machine learning force fields (MLFF). We also discuss the advantages and applications of MLFF compared to traditional FFs, as well as the MLFF toolkits widely employed in numerous applications.
AB - Force fields (FFs) form the basis of molecular simulations and have significant implications in diverse fields such as materials science, chemistry, physics, and biology. A suitable FF is required to accurately describe system properties. However, an off-the-shelf FF may not be suitable for certain specialized systems, and researchers often need to tailor the FF that fits specific requirements. Before applying machine learning (ML) techniques to construct FFs, the mainstream FFs were primarily based on first-principles force fields (FPFF) and empirical FFs. However, the drawbacks of FPFF and empirical FFs are high cost and low accuracy, respectively, so there is a growing interest in using ML as an effective and precise tool for reconciling this trade-off in developing FFs. In this review, we introduce the fundamental principles of ML and FFs in the context of machine learning force fields (MLFF). We also discuss the advantages and applications of MLFF compared to traditional FFs, as well as the MLFF toolkits widely employed in numerous applications.
UR - http://www.scopus.com/inward/record.url?scp=85174831191&partnerID=8YFLogxK
U2 - 10.1021/acs.jcim.3c00889
DO - 10.1021/acs.jcim.3c00889
M3 - 文献综述
C2 - 37751546
AN - SCOPUS:85174831191
SN - 1549-9596
VL - 63
SP - 6972
EP - 6985
JO - Journal of Chemical Information and Modeling
JF - Journal of Chemical Information and Modeling
IS - 22
ER -