SPACIER: On-Demand Polymer Design with Fully Automated All-Atom Classical Molecular Dynamics Integrated into Machine Learning Pipelines

Shun Nanjo, Arifin, Hayato Maeda, Yoshihiro Hayashi, Kan Hatakeyama-Sato, Ryoji Himeno, Teruaki Hayakawa, Ryo Yoshida
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Abstract

Machine learning has rapidly advanced the design and discovery of new materials with targeted applications in various systems. First-principles calculations and other computer experiments have been integrated into material design pipelines to address the lack of experimental data and the limitations of interpolative machine learning predictors. However, the enormous computational costs and technical challenges of automating computer experiments for polymeric materials have limited the availability of open-source automated polymer design systems that integrate molecular simulations and machine learning. We developed SPACIER, an open-source software program that integrates RadonPy, a Python library for fully automated polymer property calculations based on all-atom classical molecular dynamics into a Bayesian optimization-based polymer design system to overcome these challenges. As a proof-of-concept study, we successfully synthesized optical polymers that surpass the Pareto boundary formed by the tradeoff between the refractive index and Abbe number.
SPACIER:将全自动全原子经典分子动力学集成到机器学习管道中的按需聚合物设计
机器学习迅速推动了新材料的设计和发现,并在各种系统中得到了有针对性的应用。第一原理计算和其他计算机实验已被集成到材料设计流水线中,以解决实验数据缺乏和插值机器学习预测器局限性的问题。然而,高分子材料自动化计算机实验的巨大计算成本和技术挑战限制了集成分子模拟和机器学习的开源自动化聚合物设计系统的可用性。为了克服这些挑战,我们开发了一款开源软件程序 SPACIER,它将基于全原子经典分子动力学的全自动聚合物性能计算 Python 库 RadonPy 集成到基于贝叶斯优化的聚合物设计系统中。作为概念验证研究,我们成功合成了超越折射率和阿贝数权衡所形成的帕累托边界的光学聚合物。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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