Li Jian, Zhang Jin
School of Science, Harbin Institute of Technology, Shenzhen 518055, PR China.
Nanoscale. 2024 Oct 3;16(38):17992-18004. doi: 10.1039/d4nr02120g.
Two-dimensional (2D) all-carbon van der Waals (vdW) heterostructures consisting of graphene and graphyne component layers are reported to have enormous application prospects. Understanding the thermal transport properties of such graphene/graphyne (G/GY) heterostructures is critical to control their performance and stability in prospective applications. In this study, using molecular dynamics simulations and a machine learning (ML) method, we investigate the thermal conductivity of pristine G/GY heterostructures and their defective counterparts. Our simulation results show a significant reduction in the thermal conductivity of G/GY heterostructures due to the presence of vacancies, which become more aggressive as the defect concentration increases. Besides the concentration, the distribution of defects is another important factor affecting the thermal conductivity of defective G/GY heterostructures. Moreover, the defect effect on the thermal conductivity of G/GY heterostructures is majorly determined by the defect characteristics of their graphene layer. Such an impact is found to originate from the changes in both phonon scattering and heat flux. Based on the ML method together with a transfer learning strategy, we also develop a convolutional neural network that can be used to quickly and effectively predict the thermal conductivities of massive possible structures of defective G/GY heterostructures.
据报道,由石墨烯和石墨炔组成层构成的二维(2D)全碳范德华(vdW)异质结构具有巨大的应用前景。了解此类石墨烯/石墨炔(G/GY)异质结构的热输运特性对于控制其在预期应用中的性能和稳定性至关重要。在本研究中,我们使用分子动力学模拟和机器学习(ML)方法,研究了原始G/GY异质结构及其有缺陷对应物的热导率。我们的模拟结果表明,由于空位的存在,G/GY异质结构的热导率显著降低,并且随着缺陷浓度的增加,这种降低变得更加明显。除了浓度之外,缺陷的分布是影响有缺陷G/GY异质结构热导率的另一个重要因素。此外,缺陷对G/GY异质结构热导率的影响主要由其石墨烯层的缺陷特性决定。发现这种影响源于声子散射和热流的变化。基于ML方法并结合迁移学习策略,我们还开发了一种卷积神经网络,可用于快速有效地预测大量可能的有缺陷G/GY异质结构的热导率。