论文标题
通过机器学习指导性解毒剂和界面的操纵,增强同位素石墨烯纳米纤维的热电特性
Enhancing thermoelectric properties of isotope graphene nanoribbons via machine learning guided manipulation of disordered antidots and interfaces
论文作者
论文摘要
纳米级的结构操作破坏了不同能量载体传输特性之间的固有相关性,从而达到了高热电性能。但是,纳米材料设计中的耦合多功能(声子和电子)传输使热电特性的优化具有挑战性。机器学习为具有很大自由度的纳米结构的设计带来了便利。本文中,我们通过将Green的功能方法与机器学习算法相结合,对同位素扶手座石墨烯纳米骨(AGNR)(AGNR)(AGNR)进行了全面的热电优化。通过操纵解毒剂的ZT为0.894的最佳AGNR是在Aperiodic同位素超级晶格的界面上获得的,其比原始结构大5.69倍。提出的通过机器学习的最佳结构提供了物理见解,即碳-13原子倾向于形成垂直于载体传输方向的连续界面屏障,以抑制通过同位素AGNRS抑制声子的传播。与同位素取代相比,在改善AGNR的热电特性方面,解毒效应更有效。提出的方法耦合能量载体传输属性分析与机器学习算法为增强低维纳米材料的热电性能提供了高度有效的指导,并探索和获得非直觉的物理见解。
Structural manipulation at the nanoscale breaks the intrinsic correlations among different energy carrier transport properties, achieving high thermoelectric performance. However, the coupled multifunctional (phonon and electron) transport in the design of nanomaterials makes the optimization of thermoelectric properties challenging. Machine learning brings convenience to the design of nanostructures with large degree of freedom. Herein, we conducted comprehensive thermoelectric optimization of isotopic armchair graphene nanoribbons (AGNRs) with antidots and interfaces by combining Green's function approach with machine learning algorithms. The optimal AGNR with ZT of 0.894 by manipulating antidots was obtained at the interfaces of the aperiodic isotope superlattices, which is 5.69 times larger than that of the pristine structure. The proposed optimal structure via machine learning provides physical insights that the carbon-13 atoms tend to form a continuous interface barrier perpendicular to the carrier transport direction to suppress the propagation of phonons through isotope AGNRs. The antidot effect is more effective than isotope substitution in improving the thermoelectric properties of AGNRs. The proposed approach coupling energy carrier transport property analysis with machine learning algorithms offers highly efficient guidance on enhancing the thermoelectric properties of low-dimensional nanomaterials, as well as to explore and gain non-intuitive physical insights.