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Academic Journal of Materials & Chemistry, 2024, 5(3); doi: 10.25236/AJMC.2024.050314.

A Brief Discussion on the Performance Enhancement of Graphene-Modified FCM Porous Materials and Their Application Potential in Intelligent Manufacturing

Author(s)

Enming Zhang1,2, Guotai Sun2

Corresponding Author:
Enming Zhang
Affiliation(s)

1Mechatronics Engineering, Quzhou College of Technology, Quzhou, China

2Mechatronics Engineering, Wuhan University of Technology, Wuhan, China

Abstract

With the rapid development of nanomaterial technology, graphene has become a research hotspot in the field of materials science due to its unique physical and chemical properties. This review paper aims to explore the performance enhancement of graphene-modified carbon fiber composite (FCM) porous materials and their application potential in intelligent manufacturing. By systematically analyzing the interaction mechanisms between graphene and carbon fibers, this paper reveals how graphene modification can significantly improve the mechanical strength, thermal conductivity, electromagnetic shielding effectiveness, and tribological performance of FCMs. Furthermore, this paper discusses the applications of graphene-modified FCMs in the field of smart materials, including their use as high-performance strain sensors, piezoresistive nanocomposites, and electrode materials for energy storage systems.This paper first reviews the preparation methods of graphene-modified FCMs, including chemical vapor deposition, in situ growth, and surface modification techniques. It then provides a detailed discussion of the performance testing results of these composites, including experimental data on their mechanical, thermal, and electrical properties. Through comparative analysis, this paper demonstrates the significant advantages of graphene-modified FCMs in enhancing material properties. Furthermore, it explores the integration of these materials in intelligent manufacturing systems, such as their potential applications in flexible electronics, sensor technologies, and energy storage devices. Finally, the paper looks ahead to the future research directions and challenges in graphene-modified FCM porous materials, including large-scale production, cost-effectiveness analysis, and environmental impact assessments. This review provides a comprehensive perspective on the design, preparation, and application of graphene-modified FCM materials, offering valuable insights for materials scientists and engineers working in the fields of high-performance composites and intelligent manufacturing.

Keywords

Graphene, Carbon Fiber Reinforced Composites, Intelligent Manufacturing, Porous Materials

Cite This Paper

Enming Zhang, Guotai Sun. A Brief Discussion on the Performance Enhancement of Graphene-Modified FCM Porous Materials and Their Application Potential in Intelligent Manufacturing. Academic Journal of Materials & Chemistry (2024) Vol. 5, Issue 3: 94-98. https://doi.org/10.25236/AJMC.2024.050314.

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