Affiliation:
1. SASTRA Deemed University Thanjavur, India
2. REST Labs, Kaveripattinam, Krishnagiri, Tamil Nadu, India.
Abstract
Graphene, an atomic thin two-dimensional carbonaceous nanomaterial, has exceptional electrical, mechanical and chemical properties. There is also great research interest in the development of two technologies. Since the discovery of graphene, this reliable Wide range of material applications Integrated,and many attempts have been made To modify the structure of graphene. Particular attention is paid. Graphene Derivatives Graphene Oxide Hole Graphene / Graphene oxide, recent Developments development of reduced Graphene oxide and graphene quantum points. In this chapter, the inherent properties of the definition and the different approaches to top-down and basically graphene derivatives are discussed below. This includes the formation of derivatives of graphene by chemical
oxidation. In addition, the bit and peel-out mechanism for creating graphene derivatives, which leads For a better understanding of Physics of graphene derivatives And chemical properties.
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