Predicting the dynamic behavior of the mechanical properties of platinum with machine learning

被引:3
作者
Chapman, James [1 ]
Ramprasad, Rampi [1 ]
机构
[1] Georgia Inst Technol, Dept Mat Sci & Engn, Atlanta, GA 30332 USA
基金
美国国家科学基金会;
关键词
EMBEDDED-ATOM METHOD; TEMPERATURE-DEPENDENCE; ELASTIC-CONSTANTS; SHEAR MODULUS; ENERGY; APPROXIMATION; SIMULATIONS; EQUATION; NICKEL; FIELDS;
D O I
10.1063/5.0008955
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
Over the last few decades, computational tools have been instrumental in understanding the behavior of materials at the nano-meter length scale. Until recently, these tools have been dominated by two levels of theory: quantum mechanics (QM) based methods and semi-empirical/classical methods. The former are time-intensive but accurate and versatile, while the latter methods are fast but are significantly limited in veracity, versatility, and transferability. Recently, machine learning (ML) methods have shown the potential to bridge the gap between these two chasms due to their (i) low cost, (ii) accuracy, (iii) transferability, and (iv) ability to be iteratively improved. In this work, we further extend the scope of ML for atomistic simulations by capturing the temperature dependence of the mechanical and structural properties of bulk platinum through molecular dynamics simulations. We compare our results directly with experiments, showcasing that ML methods can be used to accurately capture large-scale materials phenomena that are out of reach of QM calculations. We also compare our predictions with those of a reliable embedded atom method potential. We conclude this work by discussing how ML methods can be used to push the boundaries of nano-scale materials research by bridging the gap between QM and experimental methods.
引用
收藏
页数:8
相关论文
共 71 条
[1]  
Angelo JE, 1996, INTERFACE SCI, V4, P47
[2]  
Baretzky B, 2005, REV ADV MATER SCI, V9, P45
[3]   Gaussian approximation potentials: A brief tutorial introduction [J].
Bartok, Albert P. ;
Csanyi, Gabor .
INTERNATIONAL JOURNAL OF QUANTUM CHEMISTRY, 2015, 115 (16) :1051-1057
[4]   APPLICATION OF THE EMBEDDED ATOM METHOD TO THE FRACTURE OF INTERFACES [J].
BASKES, MI ;
FOILES, SM ;
DAW, MS .
JOURNAL DE PHYSIQUE, 1988, 49 (C-5) :483-495
[5]   General Atomic Neighborhood Fingerprint for Machine Learning Based Methods [J].
Batra, Rohit ;
Huan Doan Tran ;
Kim, Chiho ;
Chapman, James ;
Chen, Lihua ;
Chandrasekaran, Anand ;
Ramprasad, Rampi .
JOURNAL OF PHYSICAL CHEMISTRY C, 2019, 123 (25) :15859-15866
[6]   Environment-dependent interatomic potential for bulk silicon [J].
Bazant, MZ ;
Kaxiras, E ;
Justo, JF .
PHYSICAL REVIEW B, 1997, 56 (14) :8542-8552
[7]   Generalized neural-network representation of high-dimensional potential-energy surfaces [J].
Behler, Joerg ;
Parrinello, Michele .
PHYSICAL REVIEW LETTERS, 2007, 98 (14)
[8]   Modelling defects in Ni-Al with EAM and DFT calculations [J].
Bianchini, F. ;
Kermode, J. R. ;
De Vita, A. .
MODELLING AND SIMULATION IN MATERIALS SCIENCE AND ENGINEERING, 2016, 24 (04)
[9]   PROJECTOR AUGMENTED-WAVE METHOD [J].
BLOCHL, PE .
PHYSICAL REVIEW B, 1994, 50 (24) :17953-17979
[10]   A study of adatom ripening on an Al (111) surface with machine learning force fields [J].
Botu, V. ;
Chapman, J. ;
Ramprasad, R. .
COMPUTATIONAL MATERIALS SCIENCE, 2017, 129 :332-335