Roadmap for the development of machine learning-based interatomic potentials

被引:0
|
作者
Zhang, Yong-Wei [1 ]
Sorkin, Viacheslav [1 ]
Aitken, Zachary H. [1 ]
Politano, Antonio [2 ]
Behler, Joerg [3 ,4 ]
Thompson, Aidan [5 ]
Ko, Tsz Wai [6 ]
Ong, Shyue Ping [6 ]
Chalykh, Olga [7 ]
Korogod, Dmitry [8 ]
Podryabinkin, Evgeny [7 ]
Shapeev, Alexander [7 ]
Li, Ju [9 ,10 ]
Mishin, Yuri [11 ]
Pei, Zongrui [12 ]
Liu, Xianglin [13 ]
Kim, Jaesun [14 ]
Park, Yutack [14 ]
Hwang, Seungwoo [14 ]
Han, Seungwu [14 ,15 ]
Sheriff, Killian [10 ]
Cao, Yifan [10 ]
Freitas, Rodrigo [10 ]
机构
[1] ASTAR, Inst High Performance Comp IHPC, 1 Fusionopolis Way,16-16 Connexis, Singapore 138632, Singapore
[2] Univ Aquila, Dept Phys & Chem Sci, Via Vetoio, I-67100 Laquila, Italy
[3] Ruhr Univ Bochum, Lehrstuhl Theoret Chem 2, D-44780 Bochum, Germany
[4] Res Alliance Ruhr, Res Ctr Chem Sci & Sustainabil, D-44780 Bochum, Germany
[5] Sandia Natl Labs, Ctr Comp Res, Livermore, CA USA
[6] Univ Calif San Diego, Aiiso Yufeng Li Family Dept Chem & Nano Engn, Hanford, CA USA
[7] Skolkovo Inst Sci & Technol, Bolshoy Blvd 30,Bld 1, Skolkovo, Russia
[8] Moscow Inst Phys & Technol, Institutsky Lane 9, Dolgoprudnyi, Moscow Region, Russia
[9] MIT CSAIL, Cambridge, MA USA
[10] MIT, Dept Mat Sci & Engn, Cambridge, MA 02139 USA
[11] George Mason Univ, Dept Phys & Astron, 4400 Univ Dr,MSN 3F3, Fairfax, VA 22030 USA
[12] NYU, New York, NY 10012 USA
[13] Peng Cheng Lab, Shenzhen 518066, Peoples R China
[14] Seoul Natl Univ, Dept Mat Sci & Engn, Seoul 08826, South Korea
[15] Korea Inst Adv Study, Seoul 02455, South Korea
关键词
machine learning; interatomic potentials; neural networks; atomic simulations; ALLOYS;
D O I
10.1088/1361-651X/ad9d63
中图分类号
T [工业技术];
学科分类号
08 ;
摘要
An interatomic potential, traditionally regarded as a mathematical function, serves to depict atomic interactions within molecules or solids by expressing potential energy concerning atom positions. These potentials are pivotal in materials science and engineering, facilitating atomic-scale simulations, predictive material behavior, accelerated discovery, and property optimization. Notably, the landscape is evolving with machine learning transcending conventional mathematical models. Various machine learning-based interatomic potentials, such as artificial neural networks, kernel-based methods, deep learning, and physics-informed models, have emerged, each wielding unique strengths and limitations. These methods decode the intricate connection between atomic configurations and potential energies, offering advantages like precision, adaptability, insights, and seamless integration. The transformative potential of machine learning-based interatomic potentials looms large in materials science and engineering. They promise tailor-made materials discovery and optimized properties for specific applications. Yet, formidable challenges persist, encompassing data quality, computational demands, transferability, interpretability, and robustness. Tackling these hurdles is imperative for nurturing accurate, efficient, and dependable machine learning-based interatomic potentials primed for widespread adoption in materials science and engineering. This roadmap offers an appraisal of the current machine learning-based interatomic potential landscape, delineates the associated challenges, and envisages how progress in this domain can empower atomic-scale modeling of the composition-processing-microstructure-property relationship, underscoring its significance in materials science and engineering.
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页数:54
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