Comparative Analysis on Competitiveness of the Environmental Protection Industry in the Central Part of China by Using TOPSIS Method Based on Entropy Weight

Abstract:

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According to statistical yearbook of data in the provinces and cities of China in 2010, different developing level of provinces which represents environmental protection are selected as research samples from environmental protection, they are Henan, Anhui, Hubei, Hunan, Shanxi, Jiangxi and Heilongjiang. Using entropy and TOPSIS evaluating model analysis for each target to calculate weight; evaluating and analyzing competitiveness of environmental protection industry in the central region of the provinces combined with the weight. The results show that: Henan>Anhui> Hubei > Shanxi > Hunan > Jiangxi > Heilongjiang.

Info:

Periodical:

Advanced Materials Research (Volumes 347-353)

Edited by:

Weiguo Pan, Jianxing Ren and Yongguang Li

Pages:

193-196

DOI:

10.4028/www.scientific.net/AMR.347-353.193

Citation:

J. Shang and L. Zhang, "Comparative Analysis on Competitiveness of the Environmental Protection Industry in the Central Part of China by Using TOPSIS Method Based on Entropy Weight", Advanced Materials Research, Vols. 347-353, pp. 193-196, 2012

Online since:

October 2011

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$35.00

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