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Academic Journal of Engineering and Technology Science, 2023, 6(1); doi: 10.25236/AJETS.2023.060105.

Evaluation of Power Grid Investment Decision-Making with Mixed Binomial Coefficient and Coefficient of Variation


Xu Qiangsheng1, Tian Biye2

Corresponding Author:
Xu Qiangsheng

1State Grid Liaoning Electric Power CO, LTD., Power Electric Research Institute, Shenyang 110015, China

2Liaoning Province Financing Guaranty Group CO, LTD, Shenyang, China


The investment evaluation of power grid construction projects is a necessary link for power grid companies to carry out power grid construction. In the traditional evaluation process, it is generally based on the original index scores or similar schemes for comparison and decision-making. There are problems of simple methods and insufficient theoretical support. Fully considering various factors in the investment process of power grid construction, a set of rating index system with three-level hierarchical structure is constructed with actual demand as the standard. The evaluation model is verified and analyzed by an example.


power grid investment; decision evaluation; level-related evaluation model

Cite This Paper

Xu Qiangsheng, Tian Biye. Evaluation of Power Grid Investment Decision-Making with Mixed Binomial Coefficient and Coefficient of Variation. Academic Journal of Engineering and Technology Science (2023) Vol. 6, Issue 1: 36-40. https://doi.org/10.25236/AJETS.2023.060105.


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