计算机科学
全局优化
软件
编码(集合论)
人工神经网络
航程(航空)
势能面
分布式计算
源代码
计算科学
人工智能
工程类
算法
航空航天工程
程序设计语言
集合(抽象数据类型)
化学
有机化学
从头算
作者
Sida Huang,Cheng Shang,Pei‐Lin Kang,Zhang Xiao-jie,Zhi‐Pan Liu
摘要
Here we introduce the LASP code, which is designed for large‐scale atomistic simulation of complex materials with neural network (NN) potential. The software architecture and functionalities of LASP will be overviewed. LASP features with the global neural network (G‐NN) potential that is generated by learning the first principles dataset of global PES from stochastic surface walking (SSW) global optimization. The combination of the SSW method with global NN potential facilitates greatly the PES exploration for a wide range of complex materials. Not limited to SSW‐NN global optimization, the software implements standard interfaces to dock with other energy/force evaluation packages and can also perform common tasks for computing PES properties, such as single‐ended and double‐ended transition state search, the molecular dynamics simulation with and without restraints. A few examples are given to illustrate the efficiency and capabilities of LASP code. Our ongoing efforts for code developing and G‐NN potential library building are also presented. This article is categorized under: Software > Simulation Methods
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