The prediction of energetically stable crystal structures formed by a given chemical composition is a central problem in solid-state physics. In principle, the crystalline state of assembled atoms can be determined by optimizing the energy surface, which in turn can be evaluated using first-principles calculations. However, performing the iterative gradient descent on the potential energy surface using first-principles calculations is prohibitively expensive for complex systems, such as those with many atoms per unit cell. Here, we present a unique methodology for crystal structure prediction (CSP) that relies on a machine learning algorithm called metric learning. It is shown that a binary classifier, trained on a large number of already identified crystal structures, can determine the isomorphism of crystal structures formed by two given chemical compositions with an accuracy of approximately 96.4\%. For a given query composition with an unknown crystal structure, the model is used to automatically select from a crystal structure database a set of template crystals with nearly identical stable structures to which element substitution is to be applied. Apart from the local relaxation calculation of the identified templates, the proposed method does not use ab initio calculations. The potential of this substation-based CSP is demonstrated for a wide variety of crystal systems.
翻译:由某种化学成分构成的强力稳定的晶体结构预测是固态物理学中的一个中心问题。原则上,组装原子的晶状状态可以通过优化能源表面来确定,而能源表面的晶状状态又可以通过第一原则的计算加以评估。然而,使用一原则的计算方法在潜在能源表面进行迭代梯度梯度下降对于复杂的系统,例如每个单元细胞有多个原子的系统来说,费用太高,令人望而却步。这里,我们提出了一个依靠机器学习算法的晶体结构预测(CSP)的独特方法,该算法称为 " 矩阵学习 " 。它表明,在大量已经查明的晶体结构方面受过训练的二元分类器可以确定由两种特定化学成分组成的晶体结构的异形,其精确度约为96.4- ⁇ 。对于具有未知晶体结构的某个特定的查询结构,模型用来从一个晶体结构数据库中自动选择一套具有几乎相同稳定结构的样板晶体,以替代元素。除了对已查明的模板进行局部调算外,拟议的方法并不使用初始计算。这种晶质的晶体系统的潜力。