Driving Factors and Spatial Temporal Heterogeneity of Low-Carbon Coupling Coordination between the Logistics Industry and Manufacturing Industry
Abstract
:1. Introduction
2. Research Method
2.1. Research Hypothesis
2.1.1. The Mechanisms and Assumptions of Internal Factors
Capital Investment
Human Capital
Infrastructure
Technology Level
2.1.2. The Mechanisms and Assumptions of External Factors
Urbanization Level
International Trade
Foreign Investment
Industrial Policy
2.2. Method Introduction and Variable Selection
2.2.1. The Coupling Coordination Model of the Logistics Industry and Manufacturing Industry
2.2.2. The GTWR Model
2.2.3. Construction of the Low-Carbon Coupling Coordination System
2.2.4. Variable Selection of Driving Factors
- Capital. Referring to Zhang J’s [69] measurement method of physical capital, this paper obtains the capital stock of each city from 2006 to 2019 and uses the deflator index to convert it into the constant price capital stock based on 2006.
- Human capital (humit). Referring to the calculation method of Zhang Hu [70], the stock of human capital hit = exp (lnhit) ∗ lit, where h is the per capita human capital of the region and l is the total employment of the region.
- Technological progress. To a certain extent, the number of technology patents in a region can represent the technological innovation ability of the region. Because there is a time lag between patent acceptance and authorization, and the amount of patent acceptance can directly reflect the technological innovation ability of enterprises under external intervention, we choose the amount of patent acceptance to measure technological progress.
- Infrastructure. In order to make the stock of infrastructure construction in different regions comparable, this paper refers to the common practice of foreign scholars, where highway density is used to measure the level of infrastructure construction [71].
- International trade. The international trade of a region reflects its degree of openness to the outside world. The evaluation of the degree of openness to the outside world of a region is generally measured by the proportion of the total export trade in the regional GDP [72]. That is, trade = total import and export/GDP.
- Polit. As a part of the government’s financial expenditure, favorable industrial policies enable enterprises to obtain government subsidies such as R&D, which reflects the government’s support for enterprise innovation activities. In view of the availability of data, this paper measures the proportion of local fiscal expenditure in regional GDP. That is, Polit = local fiscal expenditure/GDP.
- Foreign investment in FDI. Foreign investment is the main symbol of a country’s scale of absorbing foreign direct investment and the potential of utilizing foreign investment, which reflects the region’s ability to attract foreign investment. Total foreign direct investment (FDI) per capita represents the level of foreign direct investment [73]. That is, FDIit = total foreign direct investment/total population.
- Urbanization level. Urbanization is an important symbol to measure the level of national or regional economic and social development. The current measurement method mainly uses the proportion of urban population in the total population to calculate the urbanization rate [74]. That is, Urbit = urban population/total population.
3. Results’ Analysis
3.1. Correlation Test
3.2. Empirical Results
3.2.1. Empirical Analysis of Coupling Coordination
3.2.2. Empirical Analysis of Driving Factors
- (1)
- Analysis of the driving factors of capital investment.
- (2)
- Analysis of the driving factors of human capital.
- (3)
- Analysis of the driving factors of technological progress.
- (4)
- Analysis of infrastructure drivers.
- (5)
- Analysis of the driving factors of international trade.
- (6)
- Analysis of the driving factors of industrial policy.
- (7)
- An analysis of the driving factors of foreign investment.
- (8)
- Analysis of the driving factors of urbanization level.
4. Discussion
5. Conclusions and Suggestions
- (1)
- During the survey, the average value of low-carbon coupling and coordination between logistics and manufacturing in the Yangtze River Delta is 0.61, which is at a high development stage.
- (2)
- This paper analyzes the eight driving factors of low-carbon coupling and coordination between the logistics industry and manufacturing industry from both internal and external aspects, qualitatively analyzes the action mechanism of the eight driving factors on coupling and coordination, puts forward the corresponding theoretical assumptions, and verifies the relevant assumptions.
- (3)
- In terms of the time dimension, the regression coefficients of each driving factor are analyzed. Specifically, the marginal impact of human capital, technological progress, and urbanization on the low-carbon coupling of logistics and manufacturing in the Yangtze River Delta is increasing year by year; the marginal impact of international trade, industrial policies, and foreign investment on the Yangtze River Delta region has decreased year by year; and the marginal impact of capital investment and infrastructure on the Yangtze River Delta is relatively stable.
- (4)
- In terms of spatial dimension, the regression coefficients of each driving factor have a positive impact on the coordination of low-carbon coupling. The influence of driving factors on low-carbon coupling is significantly different between large cities and small and medium-sized cities, and the spatial heterogeneity of driving factors is significant.
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
Abbreviations
GTWR | geographically time-weighted regression model |
GWR | geographically weighted regression model |
Cap | capital investment |
Hum | human capital |
Tec | technology level |
Inf | infrastructure |
Tra | international trade |
Pol | industrial policy |
FDI | foreign investment |
Urb | urbanization level |
CC | low-carbon coupling coordination of the logistics industry and manufacturing industry |
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Evaluation System | Pointer Type | Name of Index | Unit |
---|---|---|---|
Manufacturing system | Input indicators | The number of employees on the job in the manufacturing industry | Ten thousand people |
Total assets of industrial enterprises above designated size | 100 million | ||
Output indicators | industrial added value | 100 million | |
Main business income of industrial enterprises above designated size | 100 million | ||
Unexpected output | Carbon emissions from manufacturing | Tons | |
Logistics system | Input indicators | Number of employees in the logistics industry | Ten thousand people |
Fixed capital investment | 100 million | ||
energy consumption | Ten thousand tons of standard coal | ||
Output indicators | highway freight volume | Tons | |
GDP of logistics industry | 100 million | ||
Cargo turnover | Million ton-km | ||
Unexpected output | Carbon emissions from transportation | Tons |
Variable | Number | Minimum Value | Maximum Value | Mean Value | Standard Deviation |
---|---|---|---|---|---|
Capit | 350 | 3.532 | 8.462 | 5.354 | 1.025 |
Humit | 350 | 4.872 | 7.532 | 6.354 | 0.568 |
Tecit | 350 | 2.025 | 3.257 | 2.557 | 1.002 |
Infit | 350 | 1.335 | 2.534 | 2.245 | 0.576 |
Trait | 350 | 2.247 | 5.357 | 3.253 | 1.035 |
Polit | 350 | 2.968 | 5.025 | 4.354 | 0.576 |
FDIit | 350 | 0.357 | 5.542 | 2.025 | 1.324 |
Urbit | 350 | 3.358 | 4.357 | 3.821 | 1.013 |
Variable | ADF Test | PP Test | VIF | ||||
---|---|---|---|---|---|---|---|
Dickey Fuller | Lag Order | p-Value | Dickey Fuller Z (alpha) | Truncation Lag Parameter | p-Value | ||
CCit | −5.965 | 6 | 0.01 | −298.04 | 5 | 0.01 | |
Capit | −5.239 | 6 | 0.01 | −198.45 | 5 | 0.01 | 5.947 |
Humit | −6.276 | 6 | 0.01 | −233.62 | 5 | 0.01 | 6.742 |
Tecit | −6.923 | 6 | 0.01 | −197.46 | 5 | 0.01 | 5.953 |
Infit | −5.638 | 6 | 0.01 | −256.14 | 5 | 0.01 | 5.482 |
Trait | −6.053 | 6 | 0.01 | −284.67 | 5 | 0.01 | 4.864 |
Polit | −5.894 | 6 | 0.01 | −311.25 | 5 | 0.01 | 3.427 |
FDIit | −6.053 | 6 | 0.01 | −221.57 | 5 | 0.01 | 5.932 |
Urbit | −5.894 | 6 | 0.01 | −354.26 | 5 | 0.01 | 4.653 |
Variable | GWR | TWR | ||||||
---|---|---|---|---|---|---|---|---|
Upper Quartile | Median | Lower Quartile | Full Range | Upper Quartile | Median | Lower Quartile | Full Range | |
intercept | 0.2101 | 0.3211 | 0.3557 | 0.6243 | 0.1205 | 0.2178 | 0.4611 | 0.7562 |
Capit | 0.0963 | 0.1013 | 0.2205 | 0.6471 | 0.1064 | 0.2053 | 0.3023 | 0.3859 |
Humit | 0.1107 | 0.3211 | 0.5016 | 0.5835 | 0.0468 | 0.0642 | 0.0964 | 0.1763 |
Tecit | 0.2316 | 0.3695 | 0.4072 | 0.6053 | 0.0542 | 0.0853 | 0.0906 | 0.1672 |
Infit | 0.1492 | 0.2683 | 0.3375 | 0.4562 | 0.0431 | 0.0633 | 0.0954 | 0.1635 |
Trait | 0.0856 | 0.1283 | 0.2969 | 0.3903 | 0.1989 | 0.2971 | 0.3293 | 0.4335 |
Polit | 0.1903 | 0.3283 | 0.4263 | 0.5739 | 0.0279 | 0.0353 | 0.0861 | 0.1729 |
FDIit | 0.0953 | 0.1054 | 0.2854 | 0.6848 | 0.0637 | 0.0723 | 0.0964 | 0.1256 |
Urbit | 0.0864 | 0.1854 | 0.2356 | 0.5524 | 0.0763 | 0. 0913 | 0.1905 | 0.2256 |
Adj-R2 | 0.977 | 0.845 | ||||||
Sigma | 0.029 | 0.044 | ||||||
CV | 0.344 | 0.612 | ||||||
AIV | −1632.75 | −1042.35 | ||||||
Bandwidth | 0.102 | 0.273 |
Variable | GTWR | |||
---|---|---|---|---|
Upper Quartile | Median | Lower Quartile | Full Range | |
intercept | 0.2101 | 0.3211 | 0.3557 | 0.6243 |
Capit | 0.0963 | 0.1013 | 0.2205 | 0.6471 |
Humit | 0.1107 | 0.3211 | 0.5016 | 0.5835 |
Tecit | 0.2316 | 0.3695 | 0.4072 | 0.6053 |
Infit | 0.1492 | 0.2683 | 0.3375 | 0.4562 |
Trait | 0.0856 | 0.1283 | 0.2969 | 0.3903 |
Polit | 0.1903 | 0.3283 | 0.4263 | 0.5739 |
FDIit | 0.0953 | 0.1054 | 0.2854 | 0.6848 |
Urbit | 0.0864 | 0.1854 | 0.2356 | 0.5524 |
Adj-R2 | 0.977 | |||
Sigma | 0.029 | |||
CV | 0.344 | |||
AIV | −1632.75 | |||
Bandwidth | 0.102 | |||
Spatio–temporal distance rate | 0.668 |
Large Cities | Medium-Sized Cities | Small Cities |
---|---|---|
Shanghai | Xuzhou | Suqian |
Nanjing | Changzhou | Huaian |
Suzhou | Nantong | Yixing |
Wuxi | Yancheng | Huzhou |
Hangzhou | Jinhua | Jiaxing |
Ningbo | Taizhou | Zhoushan |
Wenzhou | Shaoxing | Jinhua |
Lianyungang | Quzhou | |
Zhenjiang | Lishui |
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Wang, Y. Driving Factors and Spatial Temporal Heterogeneity of Low-Carbon Coupling Coordination between the Logistics Industry and Manufacturing Industry. Sustainability 2022, 14, 14134. https://doi.org/10.3390/su142114134
Wang Y. Driving Factors and Spatial Temporal Heterogeneity of Low-Carbon Coupling Coordination between the Logistics Industry and Manufacturing Industry. Sustainability. 2022; 14(21):14134. https://doi.org/10.3390/su142114134
Chicago/Turabian StyleWang, Yijiao. 2022. "Driving Factors and Spatial Temporal Heterogeneity of Low-Carbon Coupling Coordination between the Logistics Industry and Manufacturing Industry" Sustainability 14, no. 21: 14134. https://doi.org/10.3390/su142114134
APA StyleWang, Y. (2022). Driving Factors and Spatial Temporal Heterogeneity of Low-Carbon Coupling Coordination between the Logistics Industry and Manufacturing Industry. Sustainability, 14(21), 14134. https://doi.org/10.3390/su142114134