Tuning the lattice thermal conductivity of Janus SnSSe by interlayer twisting: a machine-learning-based study

Yufeng Luo, Haibin Cao, Mengke Li, H. Yuan, Huijun Liu
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Abstract

Twisted two-dimensional materials have recently attracted tremendous interest owing to their unique structures and fantastic electronic properties. However, the effect of interlayer twisting on the phonon transport properties is less known, especially for the twist-angle-dependent lattice thermal conductivity (κL). Using the emerging Janus SnSSe bilayer as a prototypical example, we develop an accurate machine learning potential, which is adopted to efficiently predict the κL at a series of twist angles via iterative solution of the Boltzmann transport equation. It is found that the κL exhibits a distinct non-monotonous dependence on the twist angle, which can be traced back to the bonding heterogeneity between high-symmetry stacking regions inside the moiré unit cell. In contrast to the general belief, the optical phonons make a major contribution toward the κL of the twisted structures. Moreover, we demonstrate that four-phonon scattering can significantly reduce the κL of SnSSe bilayer at higher temperatures, which becomes more pronounced by interlayer twisting. Our work not only highlights the strong predictive power of machine learning potential, but also offers new insights into the design of thermal smart materials with tunable κL.
通过层间扭转调节 Janus SnSSe 的晶格热导率:基于机器学习的研究
扭曲的二维材料因其独特的结构和奇妙的电子特性最近引起了人们的极大兴趣。然而,人们对层间扭转对声子传输特性的影响知之甚少,尤其是对与扭转角度相关的晶格热导率(κL)的影响。我们以新出现的 Janus SnSSe 双层膜为原型,开发了一种精确的机器学习势能,通过迭代求解玻尔兹曼输运方程,有效地预测了一系列扭曲角度下的κL。研究发现,κL 与扭转角呈明显的非单调依赖关系,这可以追溯到摩尔单元内高对称性堆积区域之间的成键异质性。与一般看法不同的是,光学声子对扭曲结构的κL做出了重大贡献。此外,我们还证明了四声子散射能在较高温度下显著降低锡硒双分子层的κL,这一点在层间扭曲时变得更加明显。我们的工作不仅凸显了机器学习潜力的强大预测能力,还为设计具有可调κL的热智能材料提供了新的见解。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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