A REVIEW OF THE APPLICATION OF EDGE COMPUTING IN SMART GRIDS
Volume 1, Issue 2, Pp 7-15, 2023
DOI:10.61784/wjit231261
Author(s)
Lily Law
Affiliation(s)
The Hong Kong Polytechnic University, Hong Kong, People's Republic of China.
Corresponding Author
Lily Law
ABSTRACT
In recent years, with the rapid development of Internet of Things technology, edge computing has received more and more attention and has been used in many application fields. Certain research results have been achieved. The development of the Internet of Things has promoted the development of smart grids, and the surge in data volume in smart grids has given rise to edge computing. applied research in computing. The relationship between edge computing and smart grid is analyzed, the supporting technology after edge computing is introduced into smart grid is discussed, and the development This paper expounds the typical applications of edge computing in smart grids from four aspects: electricity, power transmission and transformation, power distribution and power consumption. Finally, it puts forward the current application of edge computing in smart grids. pressing issues facing the energy grid.
KEYWORDS
Internet of Things; Edge computing; Smart grid; Artificial intelligence; 5G
CITE THIS PAPER
Lily Law. A review of the application of edge computing in smart grids. World Journal of Information Technology. 2023, 1(2): 7-15. DOI:10.61784/wjit231261.
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