论文标题
学习冷凝物质中状态的电子密度
Learning the electronic density of states in condensed matter
论文作者
论文摘要
状态的电子密度(DOS)量化了准粒子图片中电子可以占据的能级的分布,并且对现代电子结构理论是核心。它还基于实验可观察到的材料特性(例如光吸收和电导率)的计算和解释。我们讨论了构建机器学习(ML)框架固有的挑战,旨在将DOS预测为局部贡献的结合,这些贡献依赖于每个原子周围邻居的几何形态,使用密度功能理论作为训练数据的Quasiparticle能量水平。我们提出了一个具有挑战性的案例研究,其中包括跨越一系列热力学条件的硅的配置,从散装结构到簇,从半导体到金属行为。我们比较了代表DOS的不同方法,以及预测数量的准确性,例如费米水平,费米水平的DOS或频带能量,或直接或作为DOS评估的副产品。该模型的性能至关重要的是DOS的平滑性,并且在与平滑性相关的系统误差与ML模型中的误差之间进行了权衡。我们通过计算大型无形硅样品状态的密度来证明这种方法的实用性,为此,通过直接电子结构计算计算DOS的昂贵,并显示通过我们模型获得的DOS的中心分解的DOS,如何使用我们的模型获得的物理互联网,以在结构和电子功能之间提取连接。
The electronic density of states (DOS) quantifies the distribution of the energy levels that can be occupied by electrons in a quasiparticle picture, and is central to modern electronic structure theory. It also underpins the computation and interpretation of experimentally observable material properties such as optical absorption and electrical conductivity. We discuss the challenges inherent in the construction of a machine-learning (ML) framework aimed at predicting the DOS as a combination of local contributions that depend in turn on the geometric configuration of neighbours around each atom, using quasiparticle energy levels from density functional theory as training data. We present a challenging case study that includes configurations of silicon spanning a broad set of thermodynamic conditions, ranging from bulk structures to clusters, and from semiconducting to metallic behavior. We compare different approaches to represent the DOS, and the accuracy of predicting quantities such as the Fermi level, the DOS at the Fermi level, or the band energy, either directly or as a side-product of the evaluation of the DOS. The performance of the model depends crucially on the smoothening of the DOS, and there is a tradeoff to be made between the systematic error associated with the smoothening and the error in the ML model for a specific structure. We demonstrate the usefulness of this approach by computing the density of states of a large amorphous silicon sample, for which it would be prohibitively expensive to compute the DOS by direct electronic structure calculations, and show how the atom-centred decomposition of the DOS that is obtained through our model can be used to extract physical insights into the connections between structural and electronic features.