| Literature DB >> 34948654 |
Lei Wang1, Wei Li1, Guomin Li1, Guozhen Zhang1.
Abstract
In order to clarify the evolution characteristics and direction of urban energy performance concepts, reveal the research dimensions, determine the performance results and differences, and clarify the reference benchmark, this study depicts the main systems involved in the process of urban energy utilization, demonstrates their relevance guided by the system view, and proposes the measurement indicators in the economic, environmental, and well-being dimensions. The measurement model of each dimension is constructed using the corresponding models of Data Envelopment Analysis. Taking 142 prefecture level cities in China as examples, the energy performance in different dimensions is measured and compared. The energy performance levels are close in the economic and environmental dimensions. However, the results of the well-being dimension are different from these first two dimensions, and the performance levels among cities differ more. In the economic, environmental, and well-being dimension, 22, 28 and 16 cities have reached the effective frontier, respectively, and the performance benchmark cities of 15, 15 and 5 provinces are non-provincial capital cities, respectively. Based on the above analysis, the "chain" framework evolution direction of concept and measurement is proposed, and this study provides benchmarks and policy suggestions to improve energy performance.Entities:
Keywords: concept evolution; multi-dimensional measurement comparison; system association; urban energy performance
Mesh:
Year: 2021 PMID: 34948654 PMCID: PMC8701393 DOI: 10.3390/ijerph182413046
Source DB: PubMed Journal: Int J Environ Res Public Health ISSN: 1660-4601 Impact factor: 3.390
Figure 1Multi-system network relationships of urban energy utilization impacts.
Figure 2Concept evolution and dimension of urban energy performance.
Figure 3The measurement indicators of urban energy performance in different dimensions. Note: the blue, green and yellow arrow lines represent the measurement indicators of economic, environmental, and well-being dimensions, respectively. The solid lines represent the input indicators, and the dotted lines represent the output indicators.
The descriptive statistical analysis of indicator data.
| Indicator | Unit | Minimum | Maximum | Mean | Standard Deviation |
|---|---|---|---|---|---|
| Energy consumption | 10,000 tons of standard coal | 11.87 | 18,102.33 | 2041.73 | 2653.59 |
| Labor input | Person | 138,105.00 | 15,696,019.00 | 1,989,929.00 | 2,420,450.00 |
| Fixed capital investment | Million Yuan | 119.20 | 18,661.41 | 2958.72 | 2543.64 |
| Economic output | Ten thousand Yuan | 2,996,200.00 | 326,798,700.00 | 44,685,392.00 | 52,717,490.00 |
| Environmental pollution | Ton | 412.00 | 249,071.00 | 37,880.48 | 39,823.75 |
| Environmental capital investment | Ten thousand Yuan | 440.71 | 190,731.81 | 27,999.97 | 31,410.93 |
| Medical and health level | Person | 993.00 | 109,376.00 | 15,814.42 | 15,111.48 |
| Education level | Year | 7.46 | 11.76 | 8.76 | 1.11 |
The measurement results of energy performance of prefecture level cities in China in the economic dimension.
| City | Performance | City | Performance | City | Performance |
|---|---|---|---|---|---|
| Beijing | 0.9952 | Longyan | 0.8362 | Zhuhai | 0.7241 |
| Tianjin | 1.0000 | Ningde | 0.6474 | Shantou | 0.3843 |
| Tangshan | 1.0000 | Nanchang | 0.6634 | Foshan | 1.0000 |
| Handan | 0.4883 | Jingdezhen | 0.5420 | Maoming | 0.7352 |
| Baoding | 0.6988 | Jiujiang | 0.6147 | Zhaoqing | 0.4492 |
| Cangzhou | 0.7934 | Ganzhou | 0.4643 | Shanwei | 0.5271 |
| Taiyuan | 0.6504 | Shangrao | 0.5841 | Dongguan | 1.0000 |
| Yangquan | 0.9334 | Jinan | 0.6936 | Zhongshan | 1.0000 |
| Changzhi | 0.5866 | Qingdao | 0.9620 | Jieyang | 0.8280 |
| Jincheng | 0.7376 | Zaozhuang | 0.6863 | Yunfu | 0.6764 |
| Shuozhou | 1.0000 | Yantai | 0.9976 | Nanning | 0.5456 |
| Jinzhong | 0.5200 | Weifang | 0.7912 | Liuzhou | 0.5520 |
| Xinzhou | 0.9677 | Weihai | 1.0000 | Guilin | 1.0000 |
| Hohhot | 0.7383 | Rizhao | 0.8191 | Fangchenggang | 0.8655 |
| Dalian | 1.0000 | Linyi | 0.4770 | Haikou | 1.0000 |
| Changchun | 0.7893 | Dezhou | 0.8379 | Sanya | 1.0000 |
| Siping | 1.0000 | Binzhou | 0.5409 | Chongqing | 0.7198 |
| Harbin | 0.9292 | Zhengzhou | 0.7933 | Chengdu | 0.8506 |
| Shanghai | 1.0000 | Luoyang | 0.6096 | Zigong | 0.9024 |
| Nanjing | 0.7063 | Pingdingshan | 0.5014 | Luzhou | 0.5563 |
| Wuxi | 0.9395 | Anyang | 0.4886 | Deyang | 0.9686 |
| Xuzhou | 0.7498 | Xinxiang | 0.5141 | Guangyuan | 0.5952 |
| Suzhou | 0.9169 | Puyang | 0.5439 | Suining | 0.7210 |
| Nantong | 0.7495 | Sanmenxia | 0.7258 | Neijiang | 0.9033 |
| Lianyungang | 0.7166 | Nanyang | 0.6128 | Leshan | 0.7260 |
| Huai’an | 0.7018 | Shangqiu | 0.5447 | Guiyang | 0.7262 |
| Zhenjiang | 0.9858 | Xinyang | 0.6210 | Liupanshui | 0.6984 |
| Taizhou (in Jiangsu province) | 1.0000 | Zhoukou | 0.9780 | Bijie | 0.5826 |
| Suqian | 0.9322 | Wuhan | 0.8874 | Kunming | 0.4679 |
| Hangzhou | 0.9355 | Huangshi | 0.4241 | Xi’an | 0.6929 |
| Ningbo | 0.6082 | Shiyan | 0.5512 | Baoji | 0.6891 |
| Wenzhou | 0.5971 | Yichang | 0.7037 | Xianyang | 1.0000 |
| Shaoxing | 0.7270 | Xiangyang | 0.8009 | Weinan | 0.5876 |
| Jinhua | 0.5588 | Jingmen | 0.5513 | Yan’an | 0.6431 |
| Taizhou (in Zhejiang province) | 0.7415 | Suizhou | 0.6085 | Hanzhong | 0.4882 |
| Hefei | 0.6893 | Changsha | 1.0000 | Yulin | 1.0000 |
| Wuhu | 0.6829 | Zhuzhou | 0.6900 | Ankang | 0.6999 |
| Huainan | 0.5241 | Xiangtan | 0.9192 | Shangluo | 0.5693 |
| Bozhou | 0.4784 | Shaoyang | 0.4815 | Lanzhou | 0.5247 |
| Chizhou | 0.6979 | Changde | 0.6805 | Jiayuguan | 1.0000 |
| Xuancheng | 0.5629 | Zhangjiajie | 1.0000 | Zhangye | 1.0000 |
| Fuzhou | 0.6558 | Yiyang | 0.9264 | Yinchuan | 0.5326 |
| Xiamen | 0.6723 | Chenzhou | 0.6192 | Shizuishan | 0.8587 |
| Putian | 0.4777 | Yongzhou | 0.5855 | Urumqi | 0.5936 |
| Sanming | 0.6734 | Huaihua | 0.6570 | Karamay | 0.9855 |
| Quanzhou | 0.7297 | Guangzhou | 1.0000 | Turpan | 1.0000 |
| Zhangzhou | 0.8130 | Shaoguan | 0.6634 | Hami | 0.9850 |
| Nanping | 0.6183 |
The measurement results of energy performance of prefecture level cities in China in the environmental dimension.
| City | Performance | City | Performance | City | Performance |
|---|---|---|---|---|---|
| Beijing | 1.0000 | Longyan | 0.8313 | Zhuhai | 0.7665 |
| Tianjin | 1.0000 | Ningde | 0.6442 | Shantou | 0.3819 |
| Tangshan | 1.0000 | Nanchang | 0.6638 | Foshan | 1.0000 |
| Handan | 0.5803 | Jingdezhen | 0.5387 | Maoming | 0.9919 |
| Baoding | 0.6992 | Jiujiang | 0.6148 | Zhaoqing | 0.4242 |
| Cangzhou | 1.0000 | Ganzhou | 0.4655 | Shanwei | 0.5842 |
| Taiyuan | 0.6408 | Shangrao | 0.5851 | Dongguan | 1.0000 |
| Yangquan | 0.9216 | Jinan | 0.6935 | Zhongshan | 1.0000 |
| Changzhi | 0.5856 | Qingdao | 1.0000 | Jieyang | 0.8596 |
| Jincheng | 0.7568 | Zaozhuang | 0.7604 | Yunfu | 0.6651 |
| Shuozhou | 1.0000 | Yantai | 0.9977 | Nanning | 0.5461 |
| Jinzhong | 0.5303 | Weifang | 0.9160 | Liuzhou | 0.5519 |
| Xinzhou | 0.9839 | Weihai | 1.0000 | Guilin | 1.0000 |
| Hohhot | 0.7294 | Rizhao | 0.8932 | Fangchenggang | 0.8428 |
| Dalian | 1.0000 | Linyi | 0.4755 | Haikou | 1.0000 |
| Changchun | 0.7904 | Dezhou | 0.8752 | Sanya | 1.0000 |
| Siping | 1.0000 | Binzhou | 0.5964 | Chongqing | 0.7469 |
| Harbin | 0.9323 | Zhengzhou | 0.7941 | Chengdu | 0.8576 |
| Shanghai | 1.0000 | Luoyang | 0.6809 | Zigong | 0.9404 |
| Nanjing | 0.7045 | Pingdingshan | 0.5524 | Luzhou | 0.5564 |
| Wuxi | 0.9391 | Anyang | 0.5155 | Deyang | 0.9687 |
| Xuzhou | 0.7512 | Xinxiang | 0.5187 | Guangyuan | 0.5647 |
| Suzhou | 0.9202 | Puyang | 0.7783 | Suining | 0.8994 |
| Nantong | 0.7810 | Sanmenxia | 0.7460 | Neijiang | 0.8997 |
| Lianyungang | 0.7150 | Nanyang | 0.6271 | Leshan | 0.7230 |
| Huai’an | 0.7022 | Shangqiu | 0.5487 | Guiyang | 0.7262 |
| Zhenjiang | 1.0000 | Xinyang | 0.6220 | Liupanshui | 0.6859 |
| Taizhou (in Jiangsu province) | 1.0000 | Zhoukou | 0.9958 | Bijie | 0.5793 |
| Suqian | 0.9324 | Wuhan | 0.9350 | Kunming | 0.4666 |
| Hangzhou | 0.9382 | Huangshi | 0.4199 | Xi’an | 0.8617 |
| Ningbo | 0.6511 | Shiyan | 0.5939 | Baoji | 0.7023 |
| Wenzhou | 0.6038 | Yichang | 0.7023 | Xianyang | 1.0000 |
| Shaoxing | 0.7302 | Xiangyang | 0.8117 | Weinan | 0.5740 |
| Jinhua | 0.5460 | Jingmen | 0.5789 | Yan’an | 0.6469 |
| Taizhou (in Zhejiang province) | 0.7532 | Suizhou | 1.0000 | Hanzhong | 0.4886 |
| Hefei | 0.7062 | Changsha | 1.0000 | Yulin | 1.0000 |
| Wuhu | 0.6830 | Zhuzhou | 0.6906 | Ankang | 0.8596 |
| Huainan | 0.5013 | Xiangtan | 0.9157 | Shangluo | 0.5744 |
| Bozhou | 0.4732 | Shaoyang | 0.4829 | Lanzhou | 0.5134 |
| Chizhou | 0.6260 | Changde | 0.6812 | Jiayuguan | 1.0000 |
| Xuancheng | 0.5604 | Zhangjiajie | 1.0000 | Zhangye | 1.0000 |
| Fuzhou | 0.6572 | Yiyang | 0.9264 | Yinchuan | 0.5954 |
| Xiamen | 0.9238 | Chenzhou | 0.6199 | Shizuishan | 0.8117 |
| Putian | 0.4820 | Yongzhou | 0.5868 | Urumqi | 0.5833 |
| Sanming | 0.6721 | Huaihua | 0.6585 | Karamay | 1.0000 |
| Quanzhou | 0.7435 | Guangzhou | 1.0000 | Turpan | 1.0000 |
| Zhangzhou | 0.8133 | Shaoguan | 0.6360 | Hami | 0.9779 |
| Nanping | 0.6197 |
The measurement results of energy performance of prefecture level cities in China in the well-being dimension.
| City | Performance | City | Performance | City | Performance |
|---|---|---|---|---|---|
| Beijing | 1.0000 | Longyan | 0.1824 | Zhuhai | 0.3899 |
| Tianjin | 0.3127 | Ningde | 0.1538 | Shantou | 0.2447 |
| Tangshan | 0.0380 | Nanchang | 1.0000 | Foshan | 0.4797 |
| Handan | 0.0745 | Jingdezhen | 0.1022 | Maoming | 0.2421 |
| Baoding | 0.5150 | Jiujiang | 0.1174 | Zhaoqing | 0.2481 |
| Cangzhou | 0.1121 | Ganzhou | 0.3186 | Shanwei | 0.2829 |
| Taiyuan | 0.4589 | Shangrao | 0.1434 | Dongguan | 0.5231 |
| Yangquan | 0.0356 | Jinan | 0.5153 | Zhongshan | 0.5476 |
| Changzhi | 0.0311 | Qingdao | 0.4436 | Jieyang | 0.2679 |
| Jincheng | 0.0302 | Zaozhuang | 0.0783 | Yunfu | 0.2765 |
| Shuozhou | 0.0351 | Yantai | 0.1927 | Nanning | 0.8244 |
| Jinzhong | 0.0750 | Weifang | 0.1163 | Liuzhou | 0.2296 |
| Xinzhou | 0.0356 | Weihai | 0.1619 | Guilin | 0.4853 |
| Hohhot | 0.5614 | Rizhao | 0.0760 | Fangchenggang | 0.2533 |
| Dalian | 0.3811 | Linyi | 0.1995 | Haikou | 1.0000 |
| Changchun | 1.0000 | Dezhou | 0.0988 | Sanya | 1.0000 |
| Siping | 0.5447 | Binzhou | 0.0759 | Chongqing | 0.7621 |
| Harbin | 0.6618 | Zhengzhou | 0.8720 | Chengdu | 1.0000 |
| Shanghai | 1.0000 | Luoyang | 0.1377 | Zigong | 0.1842 |
| Nanjing | 1.0000 | Pingdingshan | 0.1082 | Luzhou | 0.1853 |
| Wuxi | 0.1845 | Anyang | 0.1180 | Deyang | 0.2442 |
| Xuzhou | 0.2349 | Xinxiang | 0.2667 | Guangyuan | 0.2609 |
| Suzhou | 0.2153 | Puyang | 0.2461 | Suining | 0.1845 |
| Nantong | 0.3050 | Sanmenxia | 0.1007 | Neijiang | 0.1711 |
| Lianyungang | 0.1311 | Nanyang | 0.2980 | Leshan | 0.1757 |
| Huai’an | 0.1622 | Shangqiu | 0.2901 | Guiyang | 0.7076 |
| Zhenjiang | 0.1515 | Xinyang | 0.2032 | Liupanshui | 0.1550 |
| Taizhou (in Jiangsu province) | 0.9732 | Zhoukou | 1.0000 | Bijie | 0.1602 |
| Suqian | 0.2514 | Wuhan | 1.0000 | Kunming | 0.6240 |
| Hangzhou | 0.8437 | Huangshi | 0.1936 | Xi’an | 1.0000 |
| Ningbo | 0.1420 | Shiyan | 0.3394 | Baoji | 0.1480 |
| Wenzhou | 0.4891 | Yichang | 0.2776 | Xianyang | 0.1573 |
| Shaoxing | 0.2426 | Xiangyang | 0.3591 | Weinan | 0.1050 |
| Jinhua | 0.3012 | Jingmen | 0.1936 | Yan’an | 0.1055 |
| Taizhou (in Zhejiang province) | 0.2200 | Suizhou | 1.0000 | Hanzhong | 0.1059 |
| Hefei | 0.2469 | Changsha | 1.0000 | Yulin | 0.1016 |
| Wuhu | 0.1628 | Zhuzhou | 0.4248 | Ankang | 0.1907 |
| Huainan | 0.1111 | Xiangtan | 1.0000 | Shangluo | 0.1641 |
| Bozhou | 0.1110 | Shaoyang | 0.8496 | Lanzhou | 1.0000 |
| Chizhou | 0.1106 | Changde | 0.7089 | Jiayuguan | 0.1805 |
| Xuancheng | 0.1089 | Zhangjiajie | 0.5134 | Zhangye | 0.1644 |
| Fuzhou | 0.2899 | Yiyang | 0.4427 | Yinchuan | 0.0336 |
| Xiamen | 0.8942 | Chenzhou | 0.3605 | Shizuishan | 0.0346 |
| Putian | 0.2204 | Yongzhou | 0.9741 | Urumqi | 0.2557 |
| Sanming | 0.1677 | Huaihua | 0.7908 | Karamay | 0.0579 |
| Quanzhou | 0.1798 | Guangzhou | 1.0000 | Turpan | 0.1165 |
| Zhangzhou | 0.2647 | Shaoguan | 0.2597 | Hami | 0.0674 |
| Nanping | 0.1764 |
The energy performance benchmark city of each province in each dimension and multiple dimensions.
| Province | Economic | Environmental | Well-Being | Multiple Dimensions |
|---|---|---|---|---|
| Beijing | Beijing | Beijing | Beijing | Beijing |
| Tianjin | Tianjin | Tianjin | Tianjin | Tianjin |
| Hebei | Tangshan | Tangshan/Cangzhou | Baoding | Baoding |
| Shanxi | Shuozhou | Shuozhou | Taiyuan | Shuozhou |
| Inner Mongolia | Hohhot | Hohhot | Hohhot | Hohhot |
| Liaoning | Dalian | Dalian | Dalian | Dalian |
| Jilin | Siping | Siping | Changchun | Siping |
| Heilongjiang | Harbin | Harbin | Harbin | Harbin |
| Shanghai | Shanghai | Shanghai | Shanghai | Shanghai |
| Jiangsu | Taizhou | Taizhou/Zhenjiang | Nanjing | Taizhou |
| Zhejiang | Hangzhou | Hangzhou | Hangzhou | Hangzhou |
| Anhui | Chizhou | Hefei | Hefei | Hefei |
| Fujian | Longyan | Xiamen | Xiamen | Xiamen |
| Jiangxi | Nanchang | Nanchang | Nanchang | Nanchang |
| Shandong | Weihai | Weihai/Qingdao | Jinan | Qingdao |
| Henan | Zhoukou | Zhoukou | Zhoukou | Zhoukou |
| Hubei | Wuhan | Suizhou | Wuhan/Suizhou | Wuhan |
| Hunan | Changsha/Zhangjiajie | Changsha/Zhangjiajie | Changsha/Xiangtan | Changsha |
| Guangdong | Guangzhou/Foshan/ | Guangzhou/Foshan/ | Guangzhou | Guangzhou |
| Guangxi | Guilin | Guilin | Nanning | Guilin |
| Hainan | Haikou/Sanya | Haikou/Sanya | Haikou/Sanya | Haikou/Sanya |
| Chongqing | Chongqing | Chongqing | Chongqing | Chongqing |
| Sichuan | Deyang | Deyang | Chengdu | Chengdu |
| Guizhou | Guiyang | Guiyang | Guiyang | Guiyang |
| Shaanxi | Xianyang/Yulin | Xianyang/Yulin | Xi’an | Xi’an |
| Gansu | Jiayuguan/Zhangye | Jiayuguan/Zhangye | Lanzhou | Jiayuguan |
| Ningxia | Shizuishan | Shizuishan | Shizuishan | Shizuishan |
| Xinjiang | Turpan | Karamay/Turpan | Urumqi | Turpan |
Figure 4The evolution direction of the conceptual framework of urban energy performance.