Machine-learned potentials for next-generation matter simulations

被引:373
作者
Friederich, Pascal [1 ,2 ,3 ,7 ]
Hase, Florian [1 ,2 ,4 ,5 ]
Proppe, Jonny [1 ,2 ,8 ]
Aspuru-Guzik, Alan [1 ,2 ,4 ,5 ,6 ]
机构
[1] Univ Toronto, Dept Chem, Chem Phys Theory Grp, Toronto, ON, Canada
[2] Univ Toronto, Dept Comp Sci, Toronto, ON, Canada
[3] Karlsruhe Inst Technol, Inst Nanotechnol, Eggenstein Leopoldshafen, Germany
[4] Vector Inst Artificial Intelligence, Toronto, ON, Canada
[5] Harvard Univ, Dept Chem & Chem Biol, Cambridge, MA 02138 USA
[6] Canadian Inst Adv Res CIFAR, Toronto, ON, Canada
[7] Karlsruhe Inst Technol, Inst Theoret Informat, Karlsruhe, Germany
[8] Georg August Univ, Inst Phys Chem, Gottingen, Germany
基金
欧盟地平线“2020”;
关键词
NEURAL-NETWORK POTENTIALS; MOLECULAR-DYNAMICS; ENERGY SURFACES; FORCE-FIELD; MODELS; REPRESENTATIONS; COMMUNICATION; CHEMISTRY;
D O I
10.1038/s41563-020-0777-6
中图分类号
O64 [物理化学(理论化学)、化学物理学];
学科分类号
070304 ; 081704 ;
摘要
The choice of simulation methods in computational materials science is driven by a fundamental trade-off: bridging large time- and length-scales with highly accurate simulations at an affordable computational cost. Venturing the investigation of complex phenomena on large scales requires fast yet accurate computational methods. We review the emerging field of machine-learned potentials, which promises to reach the accuracy of quantum mechanical computations at a substantially reduced computational cost. This Review will summarize the basic principles of the underlying machine learning methods, the data acquisition process and active learning procedures. We highlight multiple recent applications of machine-learned potentials in various fields, ranging from organic chemistry and biomolecules to inorganic crystal structure predictions and surface science. We furthermore discuss the developments required to promote a broader use of ML potentials, and the possibility of using them to help solve open questions in materials science and facilitate fully computational materials design. Materials simulations are now ubiquitous for explaining material properties. This Review discusses how machine-learned potentials break the limitations of system-size or accuracy, how active-learning will aid their development, how they are applied, and how they may become a more widely used approach.
引用
收藏
页码:750 / 761
页数:12
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