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International Journal of Frontiers in Sociology, 2020, 2(8); doi: 10.25236/IJFS.2020.020801.

Analysis and Measures of Economic Operation of Power System

Author(s)

Gu Zheng, Gao Jing, Yang Bo

Corresponding Author:
Gu Zheng
Affiliation(s)

State Grid Liaoning Electric Power CO, LTD. Power Electric Research Institute, Shenyang, Liaoning110015, China

Abstract

Many people know that the power industry is closely related to the national economy and people's livelihood, which greatly promotes economic development. In the management of the power industry, it is necessary to strengthen the management of the power system, so as to ensure the economic operation of the power system and lay a solid foundation for my country's economic development. This article elaborates from the following aspects in order to improve the economic operation level of the power system and promote better economic development.

Keywords

power system; economic operation; analysis; measures

Cite This Paper

Gu Zheng, Gao Jing, Yang Bo. Analysis and Measures of Economic Operation of Power System. International Journal of Frontiers in Sociology (2020), Vol. 2, Issue 8: 1-5. https://doi.org/10.25236/IJFS.2020.020801.

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