Efficient Approximations of Complete Interatomic Potentials for Crystal Property Prediction

Yu-Ching Lin, Keqiang Yan, Youzhi Luo, Yi Liu, Xiaoning Qian, Shuiwang Ji
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引用次数: 6

Abstract

We study property prediction for crystal materials. A crystal structure consists of a minimal unit cell that is repeated infinitely in 3D space. How to accurately represent such repetitive structures in machine learning models remains unresolved. Current methods construct graphs by establishing edges only between nearby nodes, thereby failing to faithfully capture infinite repeating patterns and distant interatomic interactions. In this work, we propose several innovations to overcome these limitations. First, we propose to model physics-principled interatomic potentials directly instead of only using distances as in many existing methods. These potentials include the Coulomb potential, London dispersion potential, and Pauli repulsion potential. Second, we model the complete set of potentials among all atoms, instead of only between nearby atoms as in existing methods. This is enabled by our approximations of infinite potential summations with provable error bounds. We further develop efficient algorithms to compute the approximations. Finally, we propose to incorporate our computations of complete interatomic potentials into message passing neural networks for representation learning. We perform experiments on the JARVIS and Materials Project benchmarks for evaluation. Results show that the use of interatomic potentials and complete interatomic potentials leads to consistent performance improvements with reasonable computational costs. Our code is publicly available as part of the AIRS library (https://github.com/divelab/AIRS/tree/main/OpenMat/PotNet).
晶体性质预测中完全原子间势的有效逼近
我们研究晶体材料的性质预测。晶体结构由一个在三维空间中无限重复的最小单晶组成。如何在机器学习模型中准确地表示这种重复结构仍然没有解决。目前的方法仅通过在邻近节点之间建立边来构建图,因此无法忠实地捕获无限重复模式和遥远的原子间相互作用。在这项工作中,我们提出了一些创新来克服这些限制。首先,我们建议直接模拟物理原理原子间势,而不是像许多现有方法那样只使用距离。这些势包括库仑势、伦敦色散势和泡利斥力势。其次,我们对所有原子之间的完整电位集进行建模,而不是像现有方法那样只在附近的原子之间进行建模。这是通过我们对具有可证明误差界限的无限势和的近似实现的。我们进一步开发有效的算法来计算近似值。最后,我们建议将完整原子间势的计算结合到用于表示学习的消息传递神经网络中。我们在JARVIS和Materials Project的基准上进行实验以进行评估。结果表明,使用原子间势和完全原子间势可以在合理的计算成本下实现一致的性能改进。我们的代码作为AIRS库的一部分公开提供(https://github.com/divelab/AIRS/tree/main/OpenMat/PotNet)。
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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