A review on supercapacitors based on plasma enhanced chemical vapor deposited vertical graphene arrays

JOURNAL OF ENERGY STORAGE(2022)

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摘要
Vertical graphene (VG) or vertical graphene arrays have attracted the attention of researchers in recent years, as electrode materials for supercapacitor application due to its unique properties. Although significant progress has been made in growth and supercapacitor application of VG, still many recent developments not yet been reviewed. By attuning the growth of the graphene from horizontal to vertical, its electronic band structure and bandgap can be controlled which is evident from the theoretical and experimental findings. In VG electrolyte ions could smoothly transport through regions of one-dimensional structures and access the electroactive material's surface, and electrons can successfully move in the highly conductive VG to reach the current collector. Furthermore, high surface area can also accelerate other kinetic reactions and the one dimensional structure diminishes strain through volume expansion and contraction. These superiority make VG electrodes captivating in various future energy storage devices including lithium-ion batteries and supercapacitors. Herein, the importance of the structure, overview of various plasma enhanced chemical vapor deposition (PECVD) method of synthesis and the progress in bare and hybrid VG structures are reviewed. Afterward, the important strategies to enhance the energy storage performance by changing the morphology, surface engineering/functionalization and doping of VG are discussed. Furthermore, the challenges and future perspectives for achieving good struc-tural quality with outstanding capacitance performance are listed. This review summarises the importance of vertical graphene structure, PECVD growth and mechanism of VG with recent progress and application towards efficient supercapacitor electrode material.
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关键词
Vertical graphene, Plasma enhanced chemical vapor deposition, Morphology, Supercapacitors
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