Structure and Dynamics of Energy Materials from Machine Learning Simulations: A Topical Review(dagger)
文献类型: 外文期刊
作者: Guan, Shu-Hui 1 ; Shang, Cheng 2 ; Liu, Zhi-Pan 2 ;
作者机构: 1.Shanghai Acad Agr Sci, Shanghai 201403, Peoples R China
2.Fudan Univ, Collaborat Innovat Ctr Chem Energy Mat, Shanghai Key Lab Mol Catalysis & Innovat Mat, Key Lab Computat Phys Sci,Dept Chem, Shanghai 200438, Peoples R China
关键词: Machine learning; Materials science; Atomic simulation; Thermodynamics; Kinetics
期刊名称:CHINESE JOURNAL OF CHEMISTRY ( 影响因子:6.0; 五年影响因子:3.19 )
ISSN: 1001-604X
年卷期: 2021 年 39 卷 11 期
页码:
收录情况: SCI
摘要: Energy materials featuring the capability to store and release chemical energy reversibly involve generally complex geometrical structures with multiple elements. It has been a great challenge to establish the quantitative relationship between the structure of materials and their dynamic physicochemical properties. In recent years, machine learning (ML) technique has demonstrated its great power in accelerating the research on energy materials. This topical review introduces the key ingredients and typical applications of ML to energy materials. We mainly focus on the ML based atomic simulation via ML potentials in different architectures/implementations, including high dimensional neural networks (HDNN), Gaussian approximation potential (GAP), moment tensor potentials (MTP) and stochastic surface walking global optimization with global neural network potential (SSW-NN) method. Three cases studies, namely, Si, LiC and LiTiO systems, are presented to demonstrate the ability of ML simulation in assessing the thermodynamics and kinetics of complex material systems. We highlight that the SSW-NN method provides an automated solution for global potential energy surface data collection, ML potential construction and ML simulation, which boosts the current ability for large-scale atomic simulation and thus holds the great promise for fast property evaluation and material discovery.
- 相关文献
作者其他论文 更多>>
-
Theoretical aspects on doped-zirconia for solid oxide fuel cells: From structure to conductivity
作者:Guan, Shu-hui;Guan, Shu-hui;Liu, Zhi-pan
关键词:Solid oxide fuel cells; Yttria stabilized zirconia; Conductivity; Atomistic structure; Theoretical aspects
-
Stability and anion diffusion kinetics of Yttria-stabilized zirconia resolved from machine learning global potential energy surface exploration
作者:Guan, Shu-Hui;Guan, Shu-Hui;Zhang, Ke-Xiang;Shang, Cheng;Liu, Zhi-Pan
关键词:
-
Resolving the Temperature and Composition Dependence of Ion Conductivity for Yttria-Stabilized Zirconia from Machine Learning Simulation
作者:Guan, Shu-Hui;Shang, Cheng;Liu, Zhi-Pan;Guan, Shu-Hui
关键词:
-
Two-Stage Solid-Phase Transition of Cubic Ice to Hexagonal Ice: Structural Origin and Kinetics
作者:Guan, Shu-hui;Guan, Shu-hui;Shang, Cheng;Huang, Si-Da;Liu, Zhi-Pan
关键词: