Department of Materials Science and Engineering, Kyoto University, Kyoto 606-8501, Japan.
J Chem Phys. 2018 Jun 21;148(23):234106. doi: 10.1063/1.5027283.
Machine-learning interatomic potential (MLIP) has been of growing interest as a useful method to describe the energetics of systems of interest. In the present study, we examine the accuracy of linearized pairwise MLIPs and angular-dependent MLIPs for 31 elemental metals. Using all of the optimal MLIPs for 31 elemental metals, we show the robustness of the linearized frameworks, the general trend of the predictive power of MLIPs, and the limitation of pairwise MLIPs. As a result, we obtain accurate MLIPs for all 31 elements using the same linearized framework. This indicates that the use of numerous descriptors is the most important practical feature for constructing MLIPs with high accuracy. An accurate MLIP can be constructed using only pairwise descriptors for most non-transition metals, whereas it is very important to consider angular-dependent descriptors when expressing interatomic interactions of transition metals.
机器学习原子间势(MLIP)作为一种描述感兴趣系统能量学的有用方法,越来越受到关注。在本研究中,我们研究了线性对 MLIP 和角相关 MLIP 对 31 种元素金属的准确性。使用 31 种元素金属的所有最佳 MLIP,我们展示了线性化框架的稳健性、MLIP 预测能力的一般趋势以及对 MLIP 的限制。结果,我们使用相同的线性化框架为所有 31 种元素获得了准确的 MLIP。这表明,使用大量描述符是构建高精度 MLIP 的最重要的实际特征。对于大多数非过渡金属,仅使用对描述符即可构建准确的 MLIP,而对于表达过渡金属的原子间相互作用,考虑角相关描述符非常重要。