Do the Chinese Government’s Efforts to Make a Low-Carbon Industrial Transition Hinder or Promote the Economic Development? Evidence from Low-Carbon Industrial Parks Pilot Policy
Abstract
:1. Introduction
2. Literature Review and Mechanism Analysis
2.1. Literature Review
2.1.1. Research Progress on the Impact of Environmental Regulation on High-Quality Economic Development
2.1.2. Research on Low-Carbon Transformation of Industrial Parks
2.2. Mechanism Analysis
3. Policy Background
4. Study Design
4.1. Model Setting
4.2. Indicator Measurement and Data Description
4.2.1. Explained Variable: High-Quality Economic Development
- Capital stock measurement: Based on the capital stock measurement results of Ke and Xiang, annual capital stock data of prefecture-level cities in the sample period are calculated by using the sustainable inventory method [31,32]. Given that the implementation cycle of fixed asset investment is usually longer than one year, this paper defines fixed asset investment as the average value of fixed asset investment in the current year, the previous year, and the second year.
- Labor input: It is expressed by the number of employees at the end of the year in units of each city district.
- Energy input: Electric energy is the main method of energy use in cities and industrial parks, and China’s long-term dependence on coal power determines that the consumption of electric energy in China has a relatively stable relationship with carbon emissions. Therefore, electric power is a representative energy input when evaluating the promoting effect of the LIPPP on the green and high-quality development of Chinese cities. This paper uses the annual electricity consumption of each city as the energy input.
- Desirable output: The annual GDP value of each city.
- Undesired output: The annual discharge of industrial wastewater, industrial sulfur dioxide, and industrial smoke and dust in the city.
4.2.2. Core Explanatory Variable
4.2.3. Other Control Variables
- Level of foreign investment (FDI), expressed as the annual foreign direct investment amount of each prefecture-level city.
- Economic development level (edlevel), expressed as per capita GDP of each prefecture-level city.
- Industrial structure (industruc), expressed as the proportion of tertiary industry added value in GDP of prefecture-level cities.
- Infrastructure level (infrust), expressed as the per capita urban road area of each prefecture-level city.
- Human Capital Quality (qhc), expressed as the number of students in colleges and universities in each prefecture-level city.
4.2.4. Data Description
5. Empirical Analysis
5.1. Base Regression Results
5.2. Parallel Trend Test
5.3. Robustness Test
5.3.1. Deleting Samples of Provincial Capitals and Municipalities Directly under the Central Government
5.3.2. Propensity Score Matching (PSM-DID)
5.3.3. Counterfact Test
5.3.4. Test of Placebo
5.3.5. Remove the Interference of Other Policies
5.4. Analysis of Heterogeneity
5.4.1. Regional Heterogeneity
5.4.2. The Heterogeneity of Natural Resource Endowments
5.5. Analysis of Mechanism
5.5.1. Innovation Incentive Effect
5.5.2. Capital Deepening Effect
5.5.3. Employment Driving Effect
5.5.4. Energy Transformation Boosting Effect
6. Research Conclusions and Policy Implications
6.1. Research Conclusions
6.2. Policy Implications
- Due to the public nature of green innovation, the government should increase the incentive and guidance at the macro level and impose scientific and effective management and supervision. We should take an objective view of the low quality of overall green innovation in China. When formulating relevant policies, we should correctly treat the relationship between the government and the market, that means we should not only achieve effective supervision, but also give full play to the basic role of the market in the process of economic operation.
- The improvement of technical efficiency also plays a key fundamental role in the high-quality development of urban economy, while we should not only focus on the promotion of technological progress.
- China’s factor endowment structure has undergone profound changes, and capital elements have been relatively abundant. It is necessary to guide the movement direction of capital correctly. The profit-seeking nature of capital makes enterprises pay more attention to the realization of short-term interests in the period of rapid development. The government should guide enterprises to actively realize green transformation from the demand side, such as policy support for green energy investment, strengthening public awareness of environmental protection and green consumption guidance and so on.
- The government should increase investment in education and infrastructure, promote the flow of talent and information, and optimize the allocation of resources. The key to the accumulation of human capital lies in the development of education, and the high quality and efficient flow of information is crucial to the optimal allocation of human capital. Therefore, it is necessary to further strengthen the construction of transportation and digital infrastructure to promote the cross-regional flow of factors and the efficiency of information dissemination, which is conducive to the quality improvement and rational allocation of human capital.
- The optimization of energy structure is an important aspect for China to achieve high-quality development transformation. China should make efforts to develop renewable energy technologies and reduce its dependence on fossil fuels, especially coal. This is not only the general trend of global economic development, but also the inevitable course for China’s economy to achieve high-quality development and transformation in the new era.
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
References
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Names of Variables | Variables | Observations | Means | Std | Minimum | Maximum |
---|---|---|---|---|---|---|
Value-oriented high-quality development | VHP | 1988 | 0.9459 | 0.1014 | 0.2260 | 2.4090 |
Technological progress related to the VHP | VHP-P | 1988 | 0.9043 | 0.0916 | 0.6090 | 1.0940 |
Technical efficiency related to the VHP | VHP-E | 1988 | 1.0558 | 0.1550 | 0.3040 | 2.7370 |
Sustainability-oriented high-quality development | SHP | 1988 | 1.0453 | 0.2849 | 0.2005 | 4.7132 |
Technological progress related to the SHP | SHP-P | 1988 | 1.0217 | 0.2374 | 0.0361 | 3.7084 |
Technical efficiency related to the SHP | SHP-E | 1988 | 1.0607 | 0.3382 | 0.2039 | 5.7079 |
Level of foreign investment | FDI | 1988 | 9.3197 | 22.0912 | 0.0002 | 308.2563 |
Economic development level | edlevel | 1988 | 4.9451 | 3.3263 | 0.6457 | 46.7749 |
Industrial structure | industruc | 1988 | 44.8447 | 11.3970 | 10.1500 | 80.5600 |
Infrastructure level | infrust | 1988 | 16.6507 | 7.0663 | 2.2500 | 60.0700 |
Human Capital Quality | qhc | 1988 | 9.1828 | 16.3198 | 0.0000 | 106.7335 |
Variables | (1) VHP | (2) VHP | (3) VHP-P | (4) VHP-P | (5) VHP-E | (6) VHP-E |
DID | 0.04331 *** (0.01228) | 0.02793 *** (0.00963) | 0.01635 *** (0.00597) | 0.01668 ** (0.00763) | 0.03499 ** (0.01392) | 0.01357 (0.01845) |
R-squared | 0.1892 | 0.0825 | 0.0829 | 0.8564 | 0.1861 | 0.4455 |
Variables | (7) SHP | (8) SHP | (9) SHP-P | (10) SHP-P | (11) SHP-E | (12) SHP-E |
DID | 0.06691 ** (0.02956) | 0.01438 (0.04000) | 0.02306 (0.02076) | −0.03735 (0.02732) | 0.04497 (0.03309) | 0.05080 (0.04089) |
Control | YES | YES | YES | YES | YES | YES |
λi | YES | YES | YES | |||
λt | YES | YES | YES | |||
R-squared | 0.0446 | 0.1403 | 0.1436 | 0.3789 | 0.0125 | 0.1374 |
Observations | 1988 | 1988 | 1988 | 1988 | 1988 | 1988 |
Variables | (1) VHP | (2) VHP | (3) VHP-P | (4) VHP-P | (5) VHP-E | (6) VHP-E |
DID | 0.04080 ** (0.01670) | 0.02556 *** (0.00983) | 0.01696 ** (0.00755) | 0.01775 ** (0.00907) | 0.02943 (0.01929) | 0.00852 (0.02530) |
R-squared | 0.1204 | 0.0728 | 0.0773 | 0.8596 | 0.1046 | 0.4192 |
Variables | (7) SHP | (8) SHP | (9) SHP-P | (10) SHP-P | (11) SHP-E | (12) SHP-E |
DID | 0.04890 (0.03823) | −0.01213 (0.01590) | −0.00308 (0.01930) | −0.07355 *** (0.02825) | 0.05036 (0.04705) | 0.05949 (0.05587) |
R-squared | 0.0181 | 0.1255 | 0.0598 | 0.3814 | 0.0446 | 0.1249 |
Control | YES | YES | YES | YES | YES | YES |
λi | YES | YES | YES | |||
λt | YES | YES | YES | |||
Observations | 1778 | 1778 | 1778 | 1778 | 1778 | 1778 |
Variables | (1) VHP | (2) VHP | (3) VHP-P | (4) VHP-P | (5) VHP-E | (6) VHP-E |
DID | 0.04277 *** (0.01246) | 0.02816 ** (0.01158) | 0.01596 *** (0.00611) | 0.01729 ** (0.00768) | 0.03497 ** (0.01415) | 0.01334 (0.01903) |
R-squared | 0.1724 | 0.0824 | 0.0829 | 0.8577 | 0.1694 | 0.4455 |
Variables | (7) SHP | (8) SHP | (9) SHP-P | (10) SHP-P | (11) SHP-E | (12) SHP-E |
DID | 0.06306 ** (0.02985) | 0.00924 (0.04119) | 0.02282 (0.02090) | −0.03552 (0.02797) | 0.04365 (0.03333) | 0.04880 (0.04191) |
R-squared | 0.0443 | 0.1392 | 0.1766 | 0.3790 | 0.0774 | 0.1361 |
Control | YES | YES | YES | YES | YES | YES |
λi | YES | YES | YES | |||
λt | YES | YES | YES | |||
Observations | 1966 | 1966 | 1966 | 1966 | 1966 | 1966 |
Variables | Year | (1) SHP | (2) SHP-P | (3) SHP-E | (4) VHP | (5) VHP-P | (6) VHP-E |
DID | 2012 | −0.03193 (0.04639) | −0.09375 * (0.05079) | 0.04600 (0.05065) | 0.00439 (0.01163) | 0.01618 (0.00980) | −0.00905 (0.01221) |
2013 | −0.00354 (0.03829) | −0.08129 ** (0.03665) | 0.06533 (0.04213) | 0.00901 (0.01209) | 0.00149 (0.00419) | 0.01391 (0.01231) | |
2016 | 0.00404 (0.05901) | 0.04195 (0.03646) | −0.00922 (0.06740) | 0.01142 (0.01508) | 0.01761 (0.01662) | 0.00088 (0.01662) | |
Control | YES | YES | YES | YES | YES | YES | |
λi | YES | YES | YES | YES | YES | YES | |
λt | YES | YES | YES | YES | YES | YES | |
Observations | 1988 | 1988 | 1988 | 1988 | 1988 | 1988 |
Variables | (1) SHP | (2) SHP-P | (3) SHP-E | (4) VHP | (5) VHP-P | (6) VHP-E |
DID | −0.00026 (0.03637) | −0.03387 (0.02961) | 0.02683 (0.03464) | 0.02980 *** (0.00961) | 0.01330 *** (0.00459) | 0.02691 (0.03493) |
Control | YES | YES | YES | YES | YES | YES |
λi | YES | YES | YES | YES | YES | YES |
λt | YES | YES | YES | YES | YES | YES |
Observations | 1820 | 1820 | 1820 | 1820 | 1820 | 1820 |
R-squared | 0.1456 | 0.3746 | 0.1516 | 0.0849 | 0.8597 | 0.1517 |
Variables | Region (Observations) | (1) SHP | (2) SHP-P | (3) SHP-E | (4) VHP | (5) VHP-E | (6) VHP-E |
DID | Eastern region (699) | 0.05272 (0.05510) | −0.01859 (0.05835) | 0.03666 (0.05058) | −0.00056 (0.01510) | 0.01014 (0.01059) | 0.03666 (0.05058) |
Central region (700) | −0.04378 (0.04090) | −0.05282 (0.04625) | 0.00580 (0.03308) | 0.03454 *** (0.01114) | 0.02998 *** (0.01034) | 0.00580 (0.03308) | |
Western region (588) | 0.03846 (0.11859) | −0.02948 (0.02616) | 0.11303 (0.12158) | 0.06607 (0.05390) | 0.00925 (0.01185) | 0.11302 (0.12158) | |
Control | YES | YES | YES | YES | YES | YES | |
λi | YES | YES | YES | YES | YES | YES | |
λt | YES | YES | YES | YES | YES | YES |
Variables | Region (Observations) | (1) SHP | (2) SHP-P | (3) SHP-E | (4) VHP | (5) VHP-P | (6) VHP-E |
DID | resource-based cities (791) | −0.08274 (0.10597) | −0.12012 *** (0.02189) | 0.05102 (0.11315) | 0.00847 ** (0.00403) | 0.04399*** (0.00923) | −0.04595 (0.02871) |
Non-resource-based cities (1197) | 0.04244 (0.03768) | −0.01524 (0.03513) | 0.06025 (0.03812) | 0.03401 ** (0.01558) | 0.00763 (0.00551) | 0.03274 ** (0.01309) | |
Control | YES | YES | YES | YES | YES | YES | |
λi | YES | YES | YES | YES | YES | YES | |
λt | YES | YES | YES | YES | YES | YES |
I | Variables | (1) | (2) | (3) | (4) |
Innovation | SHP | SHP-P | SHP-E | ||
SHP | DID | 24.5148 *** (3.20476) | 0.00897 (0.03453) | −0.04617 * (0.02454) | 0.05904 (0.04212) |
Innovation | 0.00022 (0.00026) | 0.00036 ** (0.00018) | −0.00034 (0.00031) | ||
II | Variables | (5) | (6) | (7) | (8) |
Innovation | VHP | VHP-P | VHP-E | ||
VHP | DID | 24.5148 *** (3.20476) | 0.02230 *** (0.00768) | 0.01610 *** (0.00477) | 0.00750 (0.01535) |
Innovation | 0.00020 ** (0.00009) | 0.00002 ** (0.00014) | 0.00025 ** (0.00011) | ||
Control | YES | YES | YES | YES | |
λi | YES | YES | YES | YES | |
λt | YES | YES | YES | YES | |
Observations | 1988 | 1988 | 1988 | 1988 |
I | Variables | (1) | (2) | (3) | (4) |
Percapita | SHP | SHP-P | SHP-E | ||
SHP | DID | 10.7307 *** (3.27388) | −0.01500 (0.03815) | −0.03491 (0.02801) | 0.01435 (0.03665) |
percapita | 0.00274 *** (0.00072) | −0.00023 (0.00033) | 0.00340 *** (0.00080) | ||
II | Variables | (5) | (6) | (7) | (8) |
percapita | VHP | VHP-P | VHP-E | ||
VHP | DID | 10.7307 *** (3.27388) | 0.00431 (0.01532) | 0.00879 ** (0.00457) | −0.00666 (0.01987) |
percapita | 0.00220 *** (0.00045) | 0.00074 *** (0.00006) | 0.00188 *** (0.00056) | ||
Control | YES | YES | YES | YES | |
λi | YES | YES | YES | YES | |
λt | YES | YES | YES | YES | |
Observations | 1988 | 1988 | 1988 | 1988 |
I | Variables | (1) | (2) | (3) | (4) |
Labor Increase | SHP | SHP-P | SHP-E | ||
SHP | DID | −1.28781 (1.41187) | 0.01008 (0.03943) | −0.03719 (0.02721) | 0.04558 (0.03946) |
laborincrease | −0.00334 *** (0.00104) | 0.00013 (0.00057) | −0.00405 *** (0.00130) | ||
II | Variables | (5) | (6) | (7) | (8) |
Labor increase | VHP | VHP-P | VHP-E | ||
VHP | DID | −1.28781 (1.41187) | 0.02260 (0.01598) | 0.01661 ** (0.00759) | 0.00665 (0.02062) |
laborincrease | −0.00414 *** (0.00025) | −0.00005 (0.00010) | −0.00537 *** (0.00035) | ||
Control | YES | YES | YES | YES | |
λi | YES | YES | YES | YES | |
λt | YES | YES | YES | YES | |
Observations | 1988 | 1988 | 1988 | 1988 |
I | Variables | (1) | (2) | (3) | (4) |
Gasconsume | SHP | SHP-P | SHP-E | ||
SHP | DID | 1.87409 ** (0.95033) | 0.01065 (0.04022) | −0.04525 * (0.02727) | 0.05672 (0.04023) |
gasconsume | 0.00231 (0.00184) | 0.00396 ** (0.00176) | −0.00255 (0.00252) | ||
II | Variables | (5) | (6) | (7) | (8) |
gasconsume | VHP | VHP-P | VHP-E | ||
VHP | DID | 1.87409 ** (0.95033) | 0.02760 * (0.01652) | 0.01600 ** (0.00778) | 0.01336 (0.01932) |
gasconsume | −0.00021 (0.00097) | 0.00006 (0.00046) | −0.00009 (0.00130) | ||
Control | YES | YES | YES | YES | |
λi | YES | YES | YES | YES | |
λt | YES | YES | YES | YES | |
Observations | 1988 | 1988 | 1988 | 1988 |
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Li, Z.; Deng, F.; Zhu, Q.; Cao, L.; Jiang, Y. Do the Chinese Government’s Efforts to Make a Low-Carbon Industrial Transition Hinder or Promote the Economic Development? Evidence from Low-Carbon Industrial Parks Pilot Policy. Sustainability 2023, 15, 77. https://doi.org/10.3390/su15010077
Li Z, Deng F, Zhu Q, Cao L, Jiang Y. Do the Chinese Government’s Efforts to Make a Low-Carbon Industrial Transition Hinder or Promote the Economic Development? Evidence from Low-Carbon Industrial Parks Pilot Policy. Sustainability. 2023; 15(1):77. https://doi.org/10.3390/su15010077
Chicago/Turabian StyleLi, Zhengbo, Feng Deng, Qiaoqiao Zhu, Li Cao, and Yunyan Jiang. 2023. "Do the Chinese Government’s Efforts to Make a Low-Carbon Industrial Transition Hinder or Promote the Economic Development? Evidence from Low-Carbon Industrial Parks Pilot Policy" Sustainability 15, no. 1: 77. https://doi.org/10.3390/su15010077
APA StyleLi, Z., Deng, F., Zhu, Q., Cao, L., & Jiang, Y. (2023). Do the Chinese Government’s Efforts to Make a Low-Carbon Industrial Transition Hinder or Promote the Economic Development? Evidence from Low-Carbon Industrial Parks Pilot Policy. Sustainability, 15(1), 77. https://doi.org/10.3390/su15010077