M. Amir Bazrafshan, Farhad Khoeini, Catherine Stampfl
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引用次数: 0
摘要
为了采用高效方法确定物理系统的传输特性,本文提出了一种有效而精确的带计数算法,可直接从带结构中提取低维系统的传输谱。这种方法比依赖哈密顿形式的方法(如标准格林函数 (GF) 或传递矩阵方法)更有效。该方法的唯一限制条件是带不应该混杂,即 k 路径中的每个带都应该有一组特征值。该方法的效率与格林函数法不相上下,适用于任何输出为带状结构的计算方法,无论是粒子还是准粒子(如电子和声子)。由于每个能带的输运系数都是单独计算的,因此该算法可以捕捉到同一 k 点出现的特征值。所提出的算法将有助于研究依赖于传输系数的量,如热电相关量,以及兰道尔-比提克形式主义中的电流。
Efficient Algorithm for Extracting Transmission Spectrum From Band Structure in Low‐Dimensional Systems
Aiming at an efficient method to determine the transport properties of a physical system, an effective and accurate band‐counting algorithm is presented to extract the transmission spectrum of a low‐dimensional system, directly from the band structure. This approach is more efficient than Hamiltonian‐dependent formalisms such as the standard Green's function (GF) or the transfer matrix methods. The only constraint of the approach is that the bands should not be mixed, i.e., for each band in the k‐path, there should be a set of eigenvalues. The efficiency of the approach is comparable to that of Green's function method, and it is applicable to any computational approach whose output is a band structure, whether for particles or quasiparticles such as electrons and phonons. Since the transport coefficient is calculated separately for each band, the occurrence of eigenvalues at the same k‐point can be captured by the algorithm. The proposed algorithm will be useful for studying transmission coefficient‐dependent quantities, such as thermoelectric‐related quantities, and also the electric current within the Landauer–Büttiker formalism.
期刊介绍:
Advanced Theory and Simulations is an interdisciplinary, international, English-language journal that publishes high-quality scientific results focusing on the development and application of theoretical methods, modeling and simulation approaches in all natural science and medicine areas, including:
materials, chemistry, condensed matter physics
engineering, energy
life science, biology, medicine
atmospheric/environmental science, climate science
planetary science, astronomy, cosmology
method development, numerical methods, statistics