Machine learning for multi-fidelity scale bridging and dynamical simulations of materials

被引:15
作者
Batra, Rohit [1 ]
Sankaranarayanan, Subramanian [1 ,2 ]
机构
[1] Argonne Natl Lab, Ctr Nanoscale Mat, Lemont, IL 60439 USA
[2] Univ Illinois, Dept Mech & Ind Engn, Chicago, IL 60607 USA
来源
JOURNAL OF PHYSICS-MATERIALS | 2020年 / 3卷 / 03期
关键词
machine learning; multi-fidelity; molecular dynamics; force-fields; inter-atomic potentials; REACTIVE FORCE-FIELD; MOLECULAR-DYNAMICS; POTENTIALS; WATER; CONDUCTIVITY; NANOCLUSTERS; PERFORMANCE; ALGORITHMS; PARAMETERS; TRANSPORT;
D O I
10.1088/2515-7639/ab8c2d
中图分类号
TB3 [工程材料学];
学科分类号
0805 ; 080502 ;
摘要
Molecular dynamics (MD) is a powerful and popular tool for understanding the dynamical evolution of materials at the nano and mesoscopic scales. There are various flavors of MD ranging from the high fidelity albeit computationally expensiveab initioMD to relatively lower fidelity but much more efficient classical MD such as atomistic and coarse-grained models. Each of these different flavors of MD have been independently used by materials scientists to bring about breakthroughs in materials discovery and design. A significant gulf exists between the various MD flavors, each having varying levels of fidelity. The accuracy of DFT orab initioMD is generally much higher than that of classical atomistic simulations which is higher than that of coarse-grained models. Multi-fidelity scale bridging to combine the accuracy and flexibility ofab initioMD with efficiency classical MD has been a longstanding goal. The advent of big-data analytics has brought to the forefront powerful machine learning methods that can be deployed to achieve this goal. Here, we provide our perspective on the challenges in multi-fidelity scale bridging and trace the developments leading up to the use of machine learning algorithms and data-science towards addressing this grand challenge.
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页数:14
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