The Comprehensive Economic Benefits Evaluation of Power Generation Projects under the Background of Low-Carbon Economy

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Under the background of low-carbon economy, it is necessary to modify and improve the existing economic benefits evaluation system for the construction projects of power generation industries. This paper firstly built an economic benefit evaluation index system for power generation projects based on low-carbon financial benefits and carbon-emission reduction efficiency. Then, it established an economic benefits evaluation model which uses entropy and AHP to determine combined weights, and Gray Relation Method for comprehensive evaluation. Finally, the empirical analysis of the construction of wind power projects verified the feasibility and effectiveness of the evaluation model.

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999-1004

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February 2013

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© 2013 Trans Tech Publications Ltd. All Rights Reserved

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