Olatomiwa A L, Adam Tijjani, Edet C O, Adewale A A, Chik Abdullah, Mohammed Mohammed, Gopinath Subash C B, Hashim U
Institute of Nano Electronic Engineering, Universiti Malaysia Perlis, 01000, Kangar, Perlis, Malaysia.
Faculty of Electronic Engineering and Technology, Universiti Malaysia Perlis, 02600, Arau, Perlis, Malaysia.
Heliyon. 2023 Mar 7;9(3):e14279. doi: 10.1016/j.heliyon.2023.e14279. eCollection 2023 Mar.
Graphene has received tremendous attention among diverse 2D materials because of its remarkable properties. Its emergence over the last two decades gave a new and distinct dynamic to the study of materials, with several research projects focusing on exploiting its intrinsic properties for optoelectronic devices. This review provides a comprehensive overview of several published articles based on density functional theory and recently introduced machine learning approaches applied to study the electronic and optical properties of graphene. A comprehensive catalogue of the bond lengths, band gaps, and formation energies of various doped graphene systems that determine thermodynamic stability was reported in the literature. In these studies, the peculiarity of the obtained results reported is consequent on the nature and type of the dopants, the choice of the XC functionals, the basis set, and the wrong input parameters. The different density functional theory models, as well as the strengths and uncertainties of the ML potentials employed in the machine learning approach to enhance the prediction models for graphene, were elucidated. Lastly, the thermal properties, modelling of graphene heterostructures, the superconducting behaviour of graphene, and optimization of the DFT models are grey areas that future studies should explore in enhancing its unique potential. Therefore, the identified future trends and knowledge gaps have a prospect in both academia and industry to design future and reliable optoelectronic devices.
由于其卓越的性能,石墨烯在各种二维材料中受到了极大的关注。在过去二十年中它的出现为材料研究带来了全新且独特的活力,有若干研究项目专注于利用其固有特性来制造光电器件。本综述基于密度泛函理论以及最近引入的应用于研究石墨烯电子和光学性质的机器学习方法,对几篇已发表的文章进行了全面概述。文献中报道了各种掺杂石墨烯体系的键长、带隙和形成能的综合目录,这些决定了热力学稳定性。在这些研究中,所报道结果的特殊性取决于掺杂剂的性质和类型、XC泛函的选择、基组以及错误的输入参数。阐述了不同的密度泛函理论模型,以及在机器学习方法中用于增强石墨烯预测模型的ML势的优势和不确定性。最后,热性质、石墨烯异质结构的建模、石墨烯的超导行为以及DFT模型的优化是未来研究在挖掘其独特潜力时应探索的灰色领域。因此,所确定的未来趋势和知识空白在学术界和工业界都有前景,可用于设计未来可靠的光电器件。