Generator of Neural Network Potential for Molecular Dynamics: Constructing Robust and Accurate Potentials with Active Learning for Nanosecond-Scale Simulations

被引:0
作者
Matsumura, Naoki [1 ]
Yoshimoto, Yuta [1 ]
Yamazaki, Tamio [2 ]
Amano, Tomohito [3 ]
Noda, Tomoyuki [4 ]
Ebata, Naoki [5 ]
Kasano, Takatoshi [4 ]
Sakai, Yasufumi [1 ]
机构
[1] Fujitsu Ltd, Fujitsu Res, Kawasaki, Kanagawa 2118588, Japan
[2] JSR UTokyo Collaborat Hub, Tokyo 1058640, Japan
[3] Univ Tokyo, Dept Phys, Tokyo 1130033, Japan
[4] Fujitsu Ltd, Adv Technol Serv Business Unit, Saiwai Ku, Kawasaki, Kanagawa 2120014, Japan
[5] Fujitsu Ltd, Publ Business Unit, Kawasaki, Kanagawa 2120014, Japan
关键词
TOTAL-ENERGY CALCULATIONS; INITIAL CONFIGURATIONS; ORBITAL METHODS; DENSITY; EXCHANGE; COMPLEX; MODEL;
D O I
暂无
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
Neural network potentials (NNPs) enable large-scale molecular dynamics (MD) simulations of systems containing >10,000 atoms with the accuracy comparable to ab initio methods and play a crucial role in material studies. Although NNPs are valuable for short-duration MD simulations, maintaining the stability of long-duration MD simulations remains challenging due to the uncharted regions of the potential energy surface (PES). Currently, there is no effective methodology to address this issue. To overcome this challenge, we developed an automatic generator of robust and accurate NNPs based on an active learning (AL) framework. This generator provides a fully integrated solution encompassing initial data set creation, NNP training, evaluation, sampling of additional structures, screening, and labeling. Crucially, our approach uses a sampling strategy that focuses on generating unstable structures with short interatomic distances, combined with a screening strategy that efficiently samples these configurations based on interatomic distances and structural features. This approach greatly enhances the MD simulation stability, enabling nanosecond-scale simulations. We evaluated the performance of our NNP generator in terms of its MD simulation stability and physical properties by applying it to liquid propylene glycol (PG) and polyethylene glycol (PEG). The generated NNPs enable stable MD simulations of systems with >10,000 atoms for 20 ns. The predicted physical properties, such as the density and self-diffusion coefficient, show excellent agreement with the experimental values. This work represents a remarkable advance in the generation of robust and accurate NNPs for organic materials, paving the way for long-duration MD simulations of complex systems.
引用
收藏
页码:3832 / 3846
页数:15
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