The External Performance Appraisal of China Energy Regulation: An Empirical Study Using a TOPSIS Method Based on Entropy Weight and Mahalanobis Distance
Abstract
:1. Introduction
2. Literature Review
2.1. Research on the Energy Regulation
2.2. Research Related to TOPSIS Appraisal Method
3. The Method for Appraising the External Performance of Energy Regulation
3.1. Traditional TOPSIS Method
3.2. An Improved TOPSIS Method Based on Entropy Weight and Mahalanobis Distance
3.2.1. Definition of Mahalanobis Distance
3.2.2. E-M-TOPSIS Method
3.2.3. Properties of the E-M-TOPSIS Method
4. Appraisal Indexes and Data Concerning External Performances of Energy Regulation
4.1. The Appraisal Indexes Concerning External Performance of Energy Regulation
4.2. Descriptive Statistical Analysis
5. Empirical Results of the External Performance Appraisal of China Energy Regulation
5.1. The External Performance Appraisal of China Energy Regulation Based on the E-M-TOPSIS Method
5.2. Discussion and Policy Implications
6. Conclusions
Future Work
Acknowledgments
Author Contributions
Conflicts of Interest
References
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Methods | Properties | Advantages | Limitations |
---|---|---|---|
Traditional TOPSIS | The relative closeness degree is changed for non-singular linear transformation | 1.Rational and understandable logic 2. Limited subjective input 3.The ability to identify the best alternative quickly and incorporate relative weights of criterion importance | 1. Subjective weight-determining process 2. The correlation between indexes cannot be eliminated |
E-TOPSIS | The relative closeness degree is unchanged for non-singular linear transformation | 1. Objective weight-determining process 2. Other advantages are the same as traditional TOPSIS | The correlation between indexes cannot be eliminated |
E-M-TOPSIS | 1. The relative closeness degree is unchanged for non-singular linear transformation 2.When the appraisal indexes are independent of each other, the weighted Mahalanobis distance is equivalent to the weighted Euclidean distance | 1. Objective weight-determining process 2. Scale-invariant property 3. Elimination of the linear correlation among indicators 4. Other advantages are the same as traditional TOPSIS | The nonlinear correlation between indexes cannot be eliminated |
Class | Index | Calculation Method | Unit | |
---|---|---|---|---|
External economic performance | Energy consumption elasticity index | Average annual growth rate of energy consumptions/average annual growth rate of GDP | No | |
Power consumption elasticity index | Average annual growth rate of power consumptions/average annual growth rate of GDP | No | ||
Output of energy consumption per unit | GDP/total energy consumption | 104 CNY/tons standard coal | ||
Output of power consumption per unit | GDP/total power consumptions | CNY/kW·h | ||
Social responsibility performance | Environmental performance | SO2 emission amount per GDP | SO2 emission amount/GDP | Tons/104 CNY |
Dust emission amount per GDP | Dust emission amount/GDP | Tons/104 CNY | ||
Wastewater discharge amount per GDP | Wastewater discharge amount/GDP | Tons/CNY | ||
Energy safety performance | External dependence | Energy import amount/total energy consumption | No | |
Proportion of primary energy yield in the worldwide yield | Primary energy yield/total world energy yield | No | ||
Primary energy self-sufficient rate | No |
Index | Mean | Median | Mode | Standard Deviation | Minimum | Maximum | Skewness | Kurtosis |
---|---|---|---|---|---|---|---|---|
Energy consumption elasticity index | 0.714 | 0.610 | 0.130 a | 0.433 | 0.130 | 1.670 | 1.154 | 0.875 |
Power consumption elasticity index | 1.008 | 1.120 | 1.120 | 0.380 | 0.070 | 1.560 | −0.857 | 0.865 |
Output of energy consumption per unit | 0.756 | 0.729 | 0.644 a | 0.085 | 0.644 | 0.910 | 0.368 | −1.276 |
Output of power consumption per unit | 6.599 | 6.409 | 6.172 a | 0.400 | 6.172 | 7.360 | 0.925 | −0.547 |
SO2 emission amount per GDP | 0.012 | 0.012 | 0.005 | 0.005 | 0.005 | 0.021 | 0.051 | −1.535 |
Dust emission amount per GDP | 0.006 | 0.005 | 0.003 | 0.003 | 0.003 | 0.013 | 0.851 | −0.394 |
Wastewater discharge amount per GDP | 0.003 | 0.003 | 0.002 | 0.001 | 0.002 | 0.004 | 0.373 | −1.277 |
External dependence | 0.135 | 0.125 | 0.068 a | 0.038 | 0.068 | 0.184 | −0.035 | −1.314 |
Proportion of primary energy yield in the worldwide yield | 0.141 | 0.144 | 0.094 a | 0.032 | 0.094 | 0.185 | −0.169 | −1.387 |
Primary energy self-sufficient rate | 0.872 | 0.885 | 0.818 a | 0.036 | 0.818 | 0.932 | −0.218 | −1.276 |
1 | 0 .835 ** | − 0 .559 * | − 0 .094 | 0 .487 * | 0 .295 | 0 .423 | − 0 .350 | − 0 .440 | 0 .397 | |
0 .835 ** | 1 | − 0 .563 * | − 0 .060 | 0 .504 * | 0 .316 | 0 .455 | − 0 .356 | − 0 .458 | 0 .408 | |
− 0 .559 * | − 0 .563 * | 1 | − 0 .334 | − 0 .932 ** | − 0 .768 ** | − 0 .873 ** | 0 .908 ** | 0 .859 ** | − 0 .916 ** | |
− 0 .094 | − 0 .060 | − 0 .334 | 1 | 0 .609 ** | 0 .798 ** | 0 .718 ** | − 0 .625 ** | − 0 .708 ** | 0 .539 * | |
0 .487 * | 0 .504 * | − 0 .932 ** | 0 .609 ** | 1 | 0 .917 ** | 0 .986 ** | − 0 .961 ** | − 0 .979 ** | 0 .954 ** | |
0 .295 | 0 .316 | − 0 .768 ** | 0 .798 ** | 0 .917 ** | 1 | 0 .955 ** | − 0 .873 ** | − 0 .914 ** | 0 .819 ** | |
0 .423 | 0 .455 | − 0 .873 ** | 0 .718 ** | 0 .986 ** | 0 .955 ** | 1 | − 0 .954 ** | − 0 .988 ** | 0 .933 ** | |
− 0 .350 | − 0 .356 | 0 .908 ** | − 0 .625 ** | − 0 .961 ** | − 0 .873 ** | − 0 .954 ** | 1 | 0 .956 ** | − 0 .986 ** | |
− 0 .440 | − 0 .458 | 0 .859 ** | − 0 .708 ** | − 0 .979 ** | − 0 .914 ** | − 0 .988 ** | 0 .956 ** | 1 | − 0 .946 ** | |
0 .397 | 0 .408 | − 0 .916 ** | 0 .539 * | 0 .954 ** | 0 .819 ** | 0 .933 ** | − 0 .986 ** | − 0 .946 ** | 1 |
Year | Mahal+ | Mahal− | E-M-TOPSIS | E-TOPSIS | Traditional TOPSIS | |||
---|---|---|---|---|---|---|---|---|
Closeness | Order | Closeness | Order | Closeness | Order | |||
1999 | 10.307 | 13.397 | 0.565 | 1 | 0.461 | 10 | 0.456 | 11 |
2000 | 11.416 | 12.644 | 0.526 | 4 | 0.387 | 13 | 0.408 | 13 |
2001 | 11.044 | 12.544 | 0.532 | 2 | 0.414 | 12 | 0.417 | 12 |
2002 | 11.482 | 12.202 | 0.515 | 5 | 0.383 | 14 | 0.371 | 15 |
2003 | 11.198 | 12.420 | 0.526 | 3 | 0.304 | 16 | 0.260 | 17 |
2004 | 13.080 | 10.555 | 0.447 | 17 | 0.291 | 17 | 0.267 | 16 |
2005 | 12.302 | 11.128 | 0.475 | 9 | 0.380 | 15 | 0.374 | 14 |
2006 | 12.530 | 10.987 | 0.467 | 13 | 0.454 | 11 | 0.504 | 10 |
2007 | 12.753 | 10.783 | 0.458 | 15 | 0.532 | 7 | 0.596 | 7 |
2008 | 12.198 | 11.329 | 0.482 | 8 | 0.655 | 2 | 0.735 | 2 |
2009 | 12.016 | 11.607 | 0.491 | 6 | 0.594 | 4 | 0.680 | 4 |
2010 | 12.398 | 11.204 | 0.475 | 10 | 0.511 | 8 | 0.592 | 8 |
2011 | 12.587 | 11.057 | 0.468 | 12 | 0.497 | 9 | 0.565 | 9 |
2012 | 12.860 | 10.713 | 0.454 | 16 | 0.583 | 5 | 0.680 | 5 |
2013 | 12.631 | 10.854 | 0.462 | 14 | 0.558 | 6 | 0.646 | 6 |
2014 | 12.442 | 11.015 | 0.470 | 11 | 0.628 | 3 | 0.731 | 3 |
2015 | 11.999 | 11.433 | 0.488 | 7 | 0.681 | 1 | 0.788 | 1 |
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Wang, Z.-X.; Li, D.-D.; Zheng, H.-H. The External Performance Appraisal of China Energy Regulation: An Empirical Study Using a TOPSIS Method Based on Entropy Weight and Mahalanobis Distance. Int. J. Environ. Res. Public Health 2018, 15, 236. https://doi.org/10.3390/ijerph15020236
Wang Z-X, Li D-D, Zheng H-H. The External Performance Appraisal of China Energy Regulation: An Empirical Study Using a TOPSIS Method Based on Entropy Weight and Mahalanobis Distance. International Journal of Environmental Research and Public Health. 2018; 15(2):236. https://doi.org/10.3390/ijerph15020236
Chicago/Turabian StyleWang, Zheng-Xin, Dan-Dan Li, and Hong-Hao Zheng. 2018. "The External Performance Appraisal of China Energy Regulation: An Empirical Study Using a TOPSIS Method Based on Entropy Weight and Mahalanobis Distance" International Journal of Environmental Research and Public Health 15, no. 2: 236. https://doi.org/10.3390/ijerph15020236
APA StyleWang, Z. -X., Li, D. -D., & Zheng, H. -H. (2018). The External Performance Appraisal of China Energy Regulation: An Empirical Study Using a TOPSIS Method Based on Entropy Weight and Mahalanobis Distance. International Journal of Environmental Research and Public Health, 15(2), 236. https://doi.org/10.3390/ijerph15020236