Land Economic Efficiency and Improvement of Environmental Pollution in the Process of Sustainable Urbanization: Case of Eastern China
Abstract
:1. Introduction
2. Materials and Methods
2.1. Study Area
2.2. Methods
2.2.1. Entropy Method
2.2.2. Map Visualization of Data
2.2.3. Econometric Model
2.3. Research Idea
3. Variable Design and Analysis
3.1. Explained Variable
3.2. Explanatory Variables
3.2.1. Core Explanatory Variable
- (1)
- Economic growth. Economic growth is the basis of economic development. This study uses GDP growth rate and industrial production intensity (gross industrial output value above scale/land area) to measure it. GDP growth rate visually reflects the growth rate of the region’s production capacity. The gross industrial output value above scale reflects the level of industrial production in the region, and when divided by its urban area, the industrial production intensity obtained excludes the effect caused by the size of the city.
- (2)
- Economic structure. Economic structure includes industrial structure, population structure, etc. A reasonable economic structure is conducive to economic development. In this study, we use the share of tertiary output (tertiary industry output value/GDP), tertiary industry production intensity (tertiary industry output value/land area) and employment density (urban employment population/land area) to measure it. Tertiary industrial output reflects the development of the service sector in the region. The development of sustainable cities leads to changes in urban functions [55], most notably a decline in the share of secondary industrial output and an increase in the share of tertiary industrial output over the years [56,57]. Dividing tertiary industrial output by GDP and land area, respectively, controls for the impact of the size of the economy and the size of the city on it. Labor is a necessary element of production, and a city without employed people will struggle to support economic development. In this study, we divide urban employment by land area to exclude the effect of city size.
- (3)
- Economic quality. Economic quality is not only reflected in the current economic development achievements, but also in the potential for economic development of the region. This study uses GDP per capita, R&D intensity (science and technology expenditure in the general public budget/land area) and road density (urban road area/land area) to measure this. GDP per capita visually reflects the average production capacity and indirectly shows the income level of the residents, and can better measure the current economic development achievements of the region. Innovation is the first driving force of development and a key factor in escaping the middle-income trap. On the one hand, science and technology expenditure reflects the importance the government attaches to innovation development and judges whether the government’s economic development course is reasonable [58]. On the other hand, science and technology expenditure promotes innovative development and has long-term significance in optimizing production methods, increasing production efficiency and improving product competition [59]. Urban road density is a direct reflection of the accessibility of a city. Convenient transport is an important component of economic development and can reduce commuting times and improve the quality of life of residents.
3.2.2. Control Variables
3.3. Data Resource and Processing
3.4. Analysis of Spatio-Temporal Evolution of Key Variables
3.4.1. Carbon Emissions
3.4.2. Land Economic Efficiency
3.4.3. Comprehensive Discussion
4. Empirical Design and Results
4.1. Model Design
4.2. Regression Results
4.3. Further Analysis
5. Discussion
5.1. Discussions of Spatio-Temporal Evolution
5.1.1. Carbon Emissions
5.1.2. Land Economic Efficiency
5.2. Discussion of the Empirical Results
6. Conclusions
- (1)
- From 2011–2017, carbon emissions in eastern China were generally more spatially distributed along the coast than inland, and more to the north than to the south, and this pattern did not change over time. Only Beijing achieved a significant downgrade in carbon emissions in 2017 due to its special strategy (“factory relocation” and “coal-to-gas”) [68,69].
- (2)
- From 2011–2017, the land economic efficiency in eastern China was generally characterized by higher coastal than inland efficiency, but there is no significant difference between the north and the south. At the same time, according to the number of high-, medium- and low-efficiency areas in the three time points (2011, 2014 and 2017), the land economic efficiency in eastern China has been changing towards “medium efficiency” over time. This suggests that the differences between regions are narrowing and that most regions were upgraded from “low efficiency” to “medium efficiency”.
- (3)
- From Table 3, eastern China as a whole is still unable to achieve synergistic development of land economic efficiency and the environment. However, the further findings of Table 4 demonstrate that the 18 most economically developed cities in eastern China (Section 4.3 for a list of these cities) have been able to achieve synergistic development of land economic efficiency and the environment. Furthermore, according to this study, there are four important factors that contribute to the low land economic efficiency (R&D intensity, industrial production intensity, tertiary sector production intensity and employment density).
- (1)
- China has been implementing a sustainable development and innovation strategy for many years, and is now seeing results. Eastern China’s prosperous region is already moving closer to the goal of synergistic economic–environmental–land development, and has stepped off the path of socialist economic development with Chinese characteristics. The findings of this study provide support for the validity of China’s economic policies and environmental regulation policies.
- (2)
- Maintain the strengths of regions with high science and technology expenditure, and increase support for weaker regions to balance the progress of science and technology research and development across regions. Additionally, encourage enterprises, and fund their R&D to promote their innovative transformation and development, so as to strengthen the overall competitiveness of the region.
- (3)
- Promote the optimization of industrial structure and encourage and improve the industrial transfer strategy. Optimize the industrial structure by promoting the development of tertiary industries, and at the same time transfer some important factories to less economically developed areas in order to promote the economic development of the area and allow the pollution emissions to be shared by more areas.
- (4)
- Adhere to the policy of compulsory education without wavering, further improve the training mechanism for all types of talents, and raise the bar for scientific research and treatment of innovative talents. In particular, strengthen the introduction of talents and the treatment of ordinary workers in the less economically developed inland regions in order to attract the inflow of labor, promote innovation and development and enhance economic potential. At the same time, promote cross-regional cooperation so that wealthy regions can drive the development of less developed regions.
Author Contributions
Funding
Data Availability Statement
Conflicts of Interest
References
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Core Explanatory Variable | Dimension | Indicator | Unit | Average Weight (2011–2017) | Impact Ranking |
---|---|---|---|---|---|
Land economic efficiency (Land_EcoE) | Economic growth | GDP growth rate | % | 4.38% | 7 |
Industrial production intensity | RMB 10,000/km2 | 22.62% | 2 | ||
Economic structure | Share of tertiary output | % | 3.87% | 8 | |
Tertiary industrial production intensity | RMB 10,000/km2 | 14.40% | 3 | ||
Employment density | People/km2 | 12.71% | 4 | ||
Economic quality | GDP per capita | RMB/people | 7.29% | 6 | |
R&D intensity | RMB 10,000/km2 | 24.41% | 1 | ||
Road density | % | 10.32% | 5 |
Type | Variable | Unit | Obs | Mean | Std. | Min | Max | Label |
---|---|---|---|---|---|---|---|---|
Explained variable | Carbon emission | Million tons | 588 | 3.5417 | 0.6873 | 1.7576 | 5.4235 | Carbon |
Explanatory variable | Land economic efficiency | - | 588 | 1.1905 | 1.4061 | 0.1079 | 13.8653 | Land_EcoE |
Control variables | Foreign capital utilization intensity | USD million/km2 | 588 | 2.8392 | 1.6474 | −4.8793 | 5.9149 | Fore_CUI |
Innovation intensity | Items/10,000 people | 588 | 4.8430 | 0.8303 | 2.4417 | 6.8811 | Inno_I |
Explanatory Variables | I | II | III |
---|---|---|---|
Land_EcoE | 0.0006 | −0.0008 | −0.0003 |
Control | YES | YES | YES |
Time fixed effects | YES | - | YES |
Spatial fixed effects | - | YES | YES |
R-sq | 0.3709 | 0.0411 | 0.2120 |
Obs | 588 | 588 | 588 |
A-group | I | II | III |
---|---|---|---|
Explanatory Variables | |||
Land_EcoE | 0.0130 ** | 0.0121 ** | 0.0127 *** |
D_A * Land_EcoE | −0.0239 *** | −0.0249 *** | −0.0252 *** |
Control | YES | YES | YES |
Time fixed effects | YES | - | YES |
Spatial fixed effects | - | YES | YES |
R-sq | 0.2319 | 0.0622 | 0.2333 |
Obs (A-group) | 56 | 56 | 56 |
Obs | 588 | 588 | 588 |
B-group | I | II | III |
Explanatory Variables | |||
Land_EcoE | 0.0133 ** | 0.0132 ** | 0.0138 *** |
D_B * Land_EcoE | −0.0229 *** | −0.0251 *** | −0.0252 *** |
Control | YES | YES | YES |
Time fixed effects | YES | - | YES |
Spatial fixed effects | - | YES | YES |
R-sq | 0.2709 | 0.0627 | 0.2332 |
Obs (B-group) | 126 | 126 | 126 |
Obs | 588 | 588 | 588 |
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Chang, B.; Chen, L. Land Economic Efficiency and Improvement of Environmental Pollution in the Process of Sustainable Urbanization: Case of Eastern China. Land 2021, 10, 845. https://doi.org/10.3390/land10080845
Chang B, Chen L. Land Economic Efficiency and Improvement of Environmental Pollution in the Process of Sustainable Urbanization: Case of Eastern China. Land. 2021; 10(8):845. https://doi.org/10.3390/land10080845
Chicago/Turabian StyleChang, Binbin, and Lei Chen. 2021. "Land Economic Efficiency and Improvement of Environmental Pollution in the Process of Sustainable Urbanization: Case of Eastern China" Land 10, no. 8: 845. https://doi.org/10.3390/land10080845