Impact of Urban Mining on Energy Efficiency: Evidence from China
Abstract
:1. Introduction
2. Materials and Methods
2.1. Sample and Data Selection
2.2. Variable Definition and Data Description
2.3. Model Design
3. Results
3.1. Empirical Results
3.1.1. Trend Chart of Energy Consumption per Unit of GDP
3.1.2. DID Model Regression Results
3.1.3. Analysis of Dynamic Effects
3.1.4. Eliminate the Impact of Other Policies
3.1.5. Instrumental Variable Method
3.1.6. Verification of the Impact Mechanism
3.1.7. Analysis of Heterogeneity: Regional Differences
4. Discussion
5. Conclusions and Policy Implications
- (1)
- The UMPB policy can significantly reduce energy consumption per unit of GDP by 3.67% on average. Based on the parallel trend test, IV method, and removal of other energy policy influences that may affect the net effect of the UMPB on energy consumption per unit of GDP, the research conclusions are still valid, indicating that the research results are robust.
- (2)
- In the process of exploring the influence channels of UMPB on energy consumption per unit of GDP, this study found that the degree of marketization, the level of the local government–market relationship, and the development and abundance of factor markets are mediators in reducing energy consumption per unit of GDP.
- (3)
- Through the heterogeneity analysis of UMPB’s different impacts on energy consumption per unit of GDP in different regions, this study finds that UMPB have reduced the energy consumption per unit of GDP of each city as a whole; however, regional differences are obvious. The UMPB’s impact on reducing unit GDP energy consumption weakened from the northeast (−0.2745%) to the central (−0.2606%), eastern (−0.2516%), and western (−0.2207%) areas.
- (1)
- Build a top-level design for a green financial policy system involving governments, financial institutions, and environmental protection companies. Use the national recycling network and the recycling system spontaneously formed by society, reduce recycling costs, standardize recycling behavior, and improve recycling efficiency. Actively build a solid waste electronic trading platform, organically connect the advanced production lines of each UMPB with the source of solid waste, set up recycling and remanufacturing product standards, clarify the market access conditions for recycled products, link the in-depth cooperation between recycling companies and raw material processing companies, and form a closed industrial chain loop.
- (2)
- Design the intensity of environmental regulations in a more precise and scientific manner. Although the current environmental regulations in the central and western regions are relatively low, local governments should not blindly increase them or build high investment entry thresholds in accordance with their own development conditions when formulating environmental regulations. On one hand, environmental regulations that are inconsistent with the local reality will increase the burden on local enterprises and inhibit enterprises’ green innovation. On the other hand, high energy pollution enterprises will reduce investment in the western region, which will affect its economic development. The central and western regions can adopt a combination of command-based environmental regulatory tools and incentive-based environmental regulatory tools to steadily promote energy conservation to achieve green development.
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
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Variables | Meaning | Calculation | Unit |
---|---|---|---|
lngdpenergy | urban energy consumption per unit of GDP | Logarithm of city energy consumption volume divided by the local GDP | |
pgdp | Per capita GDP of each city | Gross regional product deflated using 2003 as the base period | RMB 10,000 |
indgdp | Secondary industry as a share of total GDP of each city to measure energy demand | The total output value of the secondary industry divided by GDP value of each city | % |
indstruc | Industrial structure of each city | Proportion of industrial output value above designated size in the total GDP value of each region | % |
popudens | Population size for energy consumption demand at city level | Population size at the end of the year (10,000 persons) divided by the area of the jurisdiction (sq.km) | 10,000 persons/sq.km |
patent | Scientific research and innovation capabilities of each city | The number of invention patents in each city | piece |
Variable | N | mean | sd | min | p50 | max |
---|---|---|---|---|---|---|
lngdpenergy | 3934 | 0.193 | 0.837 | −1.807 | 0.152 | 4.137 |
pgdp | 3934 | 8.407 | 0.738 | 6.067 | 8.411 | 10.673 |
indgdp | 3934 | 0.295 | 0.672 | −4.003 | 0.399 | 3.207 |
indstruc | 3934 | 0.488 | 0.111 | 0.09 | 0.492 | 0.91 |
popudens | 3934 | 5.707 | 0.886 | 1.681 | 5.825 | 7.889 |
patent | 3934 | 6.069 | 1.828 | 0.693 | 5.951 | 11.535 |
Average Effect | Dynamic Effect | ||
---|---|---|---|
gdpenergy (a1) | gdpenergy (a2) | gdpenergy (a3) | |
treat × post | −0.367 *** | −0.163 *** | |
(0.02) | (0.03) | ||
treat × 2010 | −0.0722 *** | ||
(0.02) | |||
treat × 2011 | −0.0978 *** | ||
(0.02) | |||
treat × 2012 | −0.115 *** | ||
(0.03) | |||
treat × 2013 | −0.166 *** | ||
(0.03) | |||
treat × 2014 | −0.196 *** | ||
(0.03) | |||
treat × 2015 | −0.239 *** | ||
(0.04) | |||
treat × 2016 | −0.273 *** | ||
(0.04) | |||
_cons | 0.224 *** | 5.195 *** | 5.155 *** |
(0.00) | (0.92) | (0.90) | |
Control | No | Yes | Yes |
N | 3934.00 | 3934.00 | 3934.00 |
R-sq | 0.11 | 0.50 | 0.51 |
gdpenergy | gdpenergy | |
---|---|---|
treat × post | −0.304 *** | −0.110 *** |
(0.04) | (0.03) | |
_cons | 0.146 *** | 5.829 *** |
(0.01) | (0.51) | |
control | No | Yes |
N | 1847 | 1847 |
R-sq | 0.04 | 0.50 |
First Stage | Second Stage | |
---|---|---|
treat × post | gdpenergy | |
iv × post | 0.124 *** | |
(0.00) | ||
treat × post | −0.223 *** | |
(0.02) | ||
_cons | −0.864 *** | 5.080 *** |
(0.23) | (0.28) | |
control | yes | yes |
N | 3934.00 | 3934.00 |
R-sq | 0.57 | 0.30 |
gdpenergy | |||
---|---|---|---|
Market | Govern | Gactor | |
treat × post × mediator | −0.221 *** | −0.232 *** | −0.229 *** |
(0.02) | (0.02) | (0.02) | |
Moderator | −1.159 *** | −0.406 *** | −0.581 *** |
(0.05) | (0.06) | (0.04) | |
_cons | −1.066 *** | −2.120 *** | −2.270 *** |
(0.15) | (0.17) | (0.14) | |
control | yes | yes | yes |
N | 3934 | 3934 | 3934 |
R-sq | 0.36 | 0.29 | 0.33 |
East | Middle | Northeast | West | East | Middle | Northeast | West | |
---|---|---|---|---|---|---|---|---|
gdpenergy | gdpenergy | |||||||
treat × post | −0.2516 *** | −0.2606 *** | −0.2745 *** | −0.2207 *** | −0.3348 *** | −0.4182 *** | −0.4658 *** | −0.1940 ** |
(0.03) | (0.05) | (0.10) | (0.07) | (0.02) | (0.04) | (0.12) | (0.08) | |
_cons | 6.4638 *** | 13.3618 *** | 12.6450 *** | 11.86 | −0.0600 *** | 0.1720 *** | 0.5881 *** | 0.4973 *** |
(1.69) | (2.35) | (2.61) | (8.57) | (0.00) | (0.00) | (0.00) | (0.00) | |
control | yes | yes | yes | yes | no | no | no | no |
N | 1400.00 | 1246.00 | 812.00 | 476.00 | 1400.00 | 1246.00 | 812.00 | 476.00 |
R-sq | 0.34 | 0.44 | 0.36 | 0.20 | 0.14 | 0.09 | 0.09 | 0.02 |
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Shen, H.; Yang, Z.; Bao, Y.; Xia, X.; Wang, D. Impact of Urban Mining on Energy Efficiency: Evidence from China. Sustainability 2022, 14, 15039. https://doi.org/10.3390/su142215039
Shen H, Yang Z, Bao Y, Xia X, Wang D. Impact of Urban Mining on Energy Efficiency: Evidence from China. Sustainability. 2022; 14(22):15039. https://doi.org/10.3390/su142215039
Chicago/Turabian StyleShen, Hongcheng, Zihao Yang, Yuxin Bao, Xiaonuan Xia, and Dan Wang. 2022. "Impact of Urban Mining on Energy Efficiency: Evidence from China" Sustainability 14, no. 22: 15039. https://doi.org/10.3390/su142215039
APA StyleShen, H., Yang, Z., Bao, Y., Xia, X., & Wang, D. (2022). Impact of Urban Mining on Energy Efficiency: Evidence from China. Sustainability, 14(22), 15039. https://doi.org/10.3390/su142215039