材料科学
光电探测器
石墨烯
碳纤维
量子点
载流子
纳米技术
密度泛函理论
光电子学
杂原子
电荷(物理)
光子
红外线的
量子
电子迁移率
富勒烯
电子传输链
还原(数学)
电子转移
金属有机骨架
石墨烯纳米带
电子
作者
Jinqiu Zhang,Liangfeng Chen,Fanghao Zhu,Shanshui Lian,Genqiang Cao,Hui Ma,Hang Wang,Peng He,Guqiao Ding,Gang Wang,Caichao Ye,Siwei Yang
标识
DOI:10.1002/adfm.202518271
摘要
Abstract The growing utilization of carbon materials in infrared detection necessitates the development of precise models concerning interfacial properties within carbon frameworks. However, the inherent structural complexity of these carbon frameworks complicates the understanding of carrier transport mechanisms at interfaces. This study systematically probes carrier transport at micro/nano interfaces in 0D/3D composite carbon frameworks, uncovering that the spatial arrangement of heteroatoms in nitrogen‐doped graphene quantum dots (N‐GQDs) affects carrier transport properties. Specifically, employing C 3 N quantum dots (C 3 N QDs) that exhibit D 6h symmetry of N atoms embedded within a sp 2 carbon matrix results in a substantial reduction in the carrier transfer energy barrier between QDs and 3D‐graphene. This enhancement markedly boosts interfacial charge exchange efficiency. This finding offers a strategy for optimizing the performance of carbon‐based optoelectronic devices. It delineates a clear link between atomic‐level structural attributes and macroscopic performance, laying a theoretical foundation for future machine learning‐assisted design of carbon materials. Furthermore, by integrating electron cloud density analysis with lattice matching principles, this research establishes a novel framework for elucidating the structure‐performance relationship in carbon frameworks. This framework will facilitate the interpretation of machine learning predictions, thereby opening up new pathways for machine learning‐driven modeling of complex carbon‐based material systems.
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