AA2UA: Converting all-atom models into their united atom coarse grained counterparts for use in LAMMPS

IF 1.3 Q3 COMPUTER SCIENCE, SOFTWARE ENGINEERING Software Impacts Pub Date : 2024-07-19 DOI:10.1016/j.simpa.2024.100686
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Abstract

Atomistic simulations are crucial for understanding material properties at the molecular level but are limited by high computational costs, especially for large, complex systems like bituminous materials. Our team developed a Force-matched United Atom (UA) Coarse Graining (CG) force field to enhance computational efficiency while retaining atomic detail. However, converting all-atom models to CG models is complex, requiring detailed atom-to-bead mapping and compatibility with molecular dynamics (MD) engines like LAMMPS. To address this, we introduce AA2UA, an open-source software that simplifies the conversion of PDB files into LAMMPS-readable structure topology files, facilitating broader use of the developed UA force field.

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AA2UA:用于将全原子 PDB 模型转换为 LAMMPS 中使用的联合原子粗粒度对应模型的 Python 工具
原子模拟对于理解分子水平的材料特性至关重要,但却受限于高昂的计算成本,尤其是对于像沥青材料这样的大型复杂系统。我们的团队开发了力匹配联合原子(UA)粗粒化(CG)力场,以提高计算效率,同时保留原子细节。然而,将全原子模型转换为 CG 模型非常复杂,需要详细的原子到珠子映射,并与 LAMMPS 等分子动力学(MD)引擎兼容。为了解决这个问题,我们推出了 AA2UA,这是一款开源软件,可以简化将 PDB 文件转换为 LAMMPS 可读结构拓扑文件的过程,从而促进更广泛地使用开发的 UA 力场。
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来源期刊
Software Impacts
Software Impacts Software
CiteScore
2.70
自引率
9.50%
发文量
0
审稿时长
16 days
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