论文标题
在应变下基于机器学习的电子结构的预测
Machine learning based prediction of the electronic structure of quasi-one-dimensional materials under strain
论文作者
论文摘要
我们提出了一个基于机器学习的模型,该模型可以预测准二维材料的电子结构,同时它们会受到变形模式,例如扭转和扩展/压缩。此处描述的技术适用于重要的材料类别,例如纳米管,纳米管,纳米线,杂物性手性结构和纳米组件,所有这些都对机械变形和电子领域的相互作用进行了调整。我们的模型结合了全球结构对称性和原子放松效应,从使用螺旋坐标来指定电子场,并利用这些坐标中KOHN-SHAM密度功能理论的专门数据生成过程。使用扶手椅单壁碳纳米管作为一个典型的例子,我们证明了该模型的使用来预测与基态电子密度和核伪费相关的场,当三个参数(即纳米管的半径),即轴向拉伸的半径,其轴向拉伸的半径,其每单位长度为输入。然后,可以通过低离心的后加工来评估其他感兴趣的电子特性,包括基态电子自由能,通常为化学精度。我们还展示了如何使用基于聚类的技术从伪外电场可靠地确定核坐标。值得注意的是,只有大约120个数据点足以预测问题设置中的对称性的三维电子字段,使用低静止的序列进行采样,以及在电子场中存在内在的低维特征。我们评论机器学习模型的解释性,并讨论其未来应用。
We present a machine learning based model that can predict the electronic structure of quasi-one-dimensional materials while they are subjected to deformation modes such as torsion and extension/compression. The technique described here applies to important classes of materials such as nanotubes, nanoribbons, nanowires, miscellaneous chiral structures and nano-assemblies, for all of which, tuning the interplay of mechanical deformations and electronic fields is an active area of investigation in the literature. Our model incorporates global structural symmetries and atomic relaxation effects, benefits from the use of helical coordinates to specify the electronic fields, and makes use of a specialized data generation process that solves the symmetry-adapted equations of Kohn-Sham Density Functional Theory in these coordinates. Using armchair single wall carbon nanotubes as a prototypical example, we demonstrate the use of the model to predict the fields associated with the ground state electron density and the nuclear pseudocharges, when three parameters - namely, the radius of the nanotube, its axial stretch, and the twist per unit length - are specified as inputs. Other electronic properties of interest, including the ground state electronic free energy, can then be evaluated with low-overhead post-processing, typically to chemical accuracy. We also show how the nuclear coordinates can be reliably determined from the pseudocharge field using a clustering based technique. Remarkably, only about 120 data points are found to be enough to predict the three dimensional electronic fields accurately, which we ascribe to the symmetry in the problem setup, the use of low-discrepancy sequences for sampling, and presence of intrinsic low-dimensional features in the electronic fields. We comment on the interpretability of our machine learning model and discuss its possible future applications.