Research on the Spatial-Temporal Variation of Resources and Environmental Carrying Capacity and the Impact of Supply-Side Reform on Them: Evidence from Provincial-Level Data in China
Abstract
:1. Introduction
2. Theoretical Framework and Research Methods
2.1. Research Framework of RECC
2.2. How Supply-Side Reform Affects RECC
2.3. RECC Index System
2.4. Methods of RECC and Spatial Analysis
- (1)
- Methods of RECC assessment and analysis
- (2)
- Methods of spatial analysis
2.5. Data Source and Variable Selection
3. Results
3.1. Mean Analysis of RECC
3.2. Time Dynamics Analysis of RECC
- (1)
- According to Figure 4a, the RECC and its sub-supporting capacity exhibited a gradual increase from 2005 to 2016. However, since 2016, the government’s implementation of market element allocation reform and industrial strategic transfer has led to a significant increase in RECC in the western and northeastern regions. In contrast, the improvement in RECC for eastern and central regions has been relatively modest;
- (2)
- The NRSCC (natural resource supporting carrying capacity) exhibited a gradual increase from 2005 to 2016, as shown in Figure 4b. The northeast region had the highest capacity, followed by the western, central, and eastern regions. An analysis of the yearly data reveals that the northeastern region is a major grain producer with a per capita grain amount of 1148.88 kg. However, the per capita vegetable and fruit amounts are relatively lower at 325.69 kg and 98.51 kg, respectively. In contrast, the western region exhibits significantly higher natural resource abundance compared to the eastern region and central regions. The per capita amounts of grain, vegetables, and fruit in the western region are 865.01 kg, 781.61 kg, and 472.14 kg, respectively. These figures are much higher than those in the central region (455.90 kg, 421.91 kg, and 148.65 kg, respectively) and the eastern region (282.44 kg, 591.67 kg, and 272.09 kg, respectively). Additionally, per capita meat consumption is highest in the western region, followed by the eastern region, central region, and northeastern region, with values of 110.13 kg, 69.26 kg, 57.53 kg, and 23.04 kg, respectively. Per capita milk consumption is highest in the northeastern region, followed by the western region, eastern region, and central region, with values of 60.64 kg, 24.77 m3, 23.04 m3, and 9.49 kg, respectively. Water security rates for agricultural use are significantly higher in the western and northeastern regions compared to the central and eastern regions, with 68.14% and 70.30% versus 49.88% and 57.67%, respectively. Although the proportion of industrial water usage is relatively low, its output value surpasses that of agricultural water usage, indicating higher water use efficiency in industry compared to agriculture. The western region also possesses relatively rich fossil energy reserves, with per capita natural gas amounts of 209.19 m3, per capita coal amounts of 0.885 t, and per capita crude oil amounts of 2.195 t, which are much higher than those in the eastern region (18.83 m3, 0.758 t, and 0.018 t, respectively), central region (24.77 m3, 0.574 t, and 0.143 t, respectively), and northeastern region (194.52 m3, 1.498 t, and 0.142 t, respectively). Notably, cross-regional resource supply strategies such as the “West-to-East Grain Transfer”, “South-to-North Vegetable Transportation”, and “West-East Gas Transmission”, can help alleviate the disparities in NRSCC across China;
- (3)
- The SECC (socio-economic carrying capacity) is higher in the eastern and northeastern regions compared to the central and western regions (see Figure 4c). The Western Development Strategy4 and the relocation of industries from the eastern and central regions to the western region have contributed to the increased socio-economic support in the northeastern and western regions. Although there is little difference in per capita urban construction land (22.12–26.50 m2) among the eastern, central, western, and northeastern regions, the per capita green space land differs significantly. Specifically, the eastern, central, western, and northeastern regions have 19.96 m2, 10.42 m2, 19.81 m2, and 34.34 m2 of green space land, respectively. Furthermore, the aging rates in these regions are 9.83%, 9.64%, 8.72%, and 10.1%, respectively. Furthermore, the proportion of green credit in these regions is 44.00%, 49.92%, 65.57%, and 50.69%, respectively. Following the implementation of the Western Development Strategy transfer, the interest payments for high-energy-consuming industries are notably higher in the western and northeastern regions than in the central and eastern regions. Moreover, the ratio of research and development investment costs to GDP in the eastern region is currently 2.26%, significantly surpassing the figures in central region (1.27%), western region (0.98%), and northeastern region (1.18%). Consequently, the ongoing strategic transfer involves the relocation of industries, labor, and capital. However, to facilitate effective technology transfer, further implementation of the “Changeling of more computing resources from China’s eastern areas to less developed western regions” project is necessary;
- (4)
- The EPACC (environmental population assimilation carrying capacity) demonstrates a decline in the western, central, northeastern, and eastern regions, as depicted in Figure 4d. Despite the eastern region having higher industrial output efficiency compared to the western and central regions, its earlier industrial development has resulted in persistent environmental pollution. The efficiency of industrial wastewater discharge per CNY 10,000 in the eastern, central, western, and northeastern regions is 0.0064 t, 0.0127 t, 0.0097 t, and 0.0087 t, respectively. In contrast, the water consumption intensity in the United States in 2015 was 0.0044 t/CNY 10,000 [46] (converting the dollar to the Chinese yuan using the exchange rate of that year), indicating lower consumption in the eastern regions of China. In order to achieve sustainable economic development and continuously improve efficiency, it is essential to address the water resources and economic development dilemma through adjustments in the industrial structure or by enhancing water use efficiency [47]. The central and western regions exhibit significantly higher capacities for COD pollution absorption than the eastern and northeastern regions, with values of 4.68 and 2.19, respectively, compared to 1.77 and 1.92. Carbon emissions per capita in the eastern region are much lower than those in the western and central regions, with values of 7.269 t, 12.453 t, 15.272 t, and 23.437 t in the eastern, central, western, and northeastern regions, respectively. The efficiency of industrial sulfur dioxide emissions per CNY 10,000 in the eastern, central, western, and northeastern regions is 0.0344 t, 0.1103 t, 0.1406 t, and 0.0715 t, respectively. Similarly, the efficiency of industrial soot emissions is 0.0164 t, 0.0786 t, 0.0614 t, and 0.0639 t in those regions, respectively.
3.3. Spatial Classification of RECC
3.4. Spatial Auto-Correlation Analysis of RECC
3.5. Research on the Impact of Supply-Side Reform Policy on RECC
- (1)
- Supply-side reform strategy and its impact on RECC
0.0336 × TMT − 0.2676 × IND + 0.6482 × ENRE + 0.2174 × IVEN
0.8359 × TMT + 0.1695 × IND + 0.4085 × ENRE + 0.4769 × IVEN
0.1291 × TMT + 0.6259 × IND − 0.1776 × ENRE − 0.5112 × IVEN
- (2)
- Empirical analysis of the impact of supply-side reform on RECC
4. Discussion
5. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
1 | Due to the significant concentration of population and socio-economic benefits, urban land is included in the indicators for monitoring socio-economic support capacity. |
2 | East region: Beijing, Tianjin, Hebei, Shanghai, Jiangsu, Zhejiang, Fujian, Shandong, Guangdong, and Hainan. West region: Inner Mongolia, Guangxi, Chongqing, Sichuan, Guizhou, Yunnan, Shaanxi, Gansu, Ningxia, Qinghai, And Xinjiang. Central region: Shanxi, Anhui, Jiangxi, Henan, Hubei, and Hunan. Northeast region: Liaoning, Jilin, and Heilongjiang. |
3 | The general perception is that the higher the population and economic development in a region, the higher it’s carrying capacity, based on an absolute number. However, this overlooks the equivalence of natural resource supply, human needs, and environmental pollution. As the population increases, so does the demand, and with greater economic development comes increased environmental pollution. This article presents a persuasive argument based on the supply-demand balance method, indicating that the resource and environmental carrying capacity exhibits a pattern of “higher in the west, lower in the east”. This finding underscores the significance of implementing the western development strategy at the national level. |
4 | The China Western Development Strategy aims to promote balanced economic and social development in the western region while narrowing the development gap with the eastern region. It prioritizes the improvement of infrastructure, such as transportation, communication, and energy facilities, to unlock the development potential of the western region. Additionally, the strategy emphasizes the advancement of modern agriculture, high-tech industries, and the service sector, facilitating industrial upgrading and fostering innovation-driven development in the western region. |
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RECC | Index Layer | Control Indicators | Measurement Methods | Measurement Basis and Standards |
---|---|---|---|---|
NRSCC | Cultivated land resource support capacity | Supply and demand of grain | Grain output/(regional population × per capita demand) | International 400 kg grain security line |
Supply and demand of vegetables | Vegetable output/(regional population × per capita demand) | “Dietary Nutrition Guidelines for Chinese Residents 2016” | ||
Supply and demand of fruit | Fruit output/(regional population × per capita demand) | “Dietary Nutrition Guidelines for Chinese Residents 2016” | ||
Grassland resource support capacity | Supply and demand of livestock and poultry meat | Livestock and poultry output/(regional population × per capita demand) | “Dietary Nutrition Guidelines for Chinese Residents 2016” | |
Supply and demand of milk | Milk output/(regional population × per capita demand) | “Dietary Nutrition Guidelines for Chinese Residents 2016” | ||
Water resource support Capacity of domestic | Supply and demand of urban water | Urban water supply capacity/(per capita daily demand × 365) | “Urban Residential Water Standard” | |
Supply and demand of industrial water | Total industrial water use/industrial water quota | “Compilation of water quotas for provinces across the country” | ||
Supply and demand of agricultural water | Total agricultural water use/agricultural water use quota | “Compilation of water quotas for provinces across the country” | ||
Energy support capability | Supply and demand of fossil | (Standard coal)/World per capita fossil energy consumption a | “Statistical Yearbook of World Energy 2020” | |
Supply and demand of power | Total power generation/(regional population × per capita demand) b | International per capita power consumption classification standard | ||
SECC | Urban Social Security Capability | Construction land guarantee capacity | Urban construction land area/upper limit of regional planning | “Urban Land Classification and Planning Construction Land Standards” |
Traffic road guarantee capacity | Traffic road area/(urban population × per capita demand) | International standard of modern urban traffic land use 12 m2 | ||
Green space guarantee capacity | Urban green area/(urban population × per capita demand) | The planning upper limit is 9 m2 per person | ||
Labor force, capital and technology innovation, and development capability | Labor force development capability | Aging society standard c/Proportion of population aged 65 and over | “Population Aging and Its Socio-economic Consequences” | |
Green credit development capability | 0.45 d/(The ratio of interest expenses of the six major energy-intensive industries to total interest expenses of all industries) e | -- | ||
Scientific research development capability | Scientific research investment intensity/average level of countries in the world in that year | “Global Development Index (1960–2021)” | ||
EPACC | Agri-environmental pollution assimilation capacity (PSC) | PSC of agricultural pesticide | International Standard/Amount of Pesticide per Unit of Cultivated Land | International Standard for Pesticide Usage |
PSC of agri-chemical fertilizers | International standard/amount of chemical fertilizer used per unit of cultivated land | Internationally recognized safe upper limit of chemical fertilizer application | ||
Atmospheric pollution-assimilation capacity (PSC) | PSC of carbon pollution | World average level of the year/per capita carbon emission | “World Energy Statistical Yearbook 2020” | |
PSC of SO2 | Atmospheric SO2 ideal capacity/total SO2 emissions | Ambient Air Quality Standards [GB3095-2012] | ||
PSC of smoke and dust assimilation capacity | Ideal capacity of smoke and dust/total discharge of smoke and dust | Ambient Air Quality Standards [GB3095-2012] | ||
Water environment PSC | PSC of ammonia nitrogen | Ideal capacity/total discharge of ammonia nitrogen | Environmental Quality Standard for Surface Water [GB3838-2002] | |
PSC of COD | Ideal capacity/total discharge of COD | Environmental Quality Standard for Surface Water [GB3838-2002] |
Regions | Provinces | RECC from 2005 to 2019 | Regions | Provinces | RECC from 2005 to 2019 | ||||||
---|---|---|---|---|---|---|---|---|---|---|---|
RECC | NRSCC | SECC | EPACC | RECC | NRSCC | SECC | EPACC | ||||
Eastern | Beijing | 1.038 | 1.274 | 5.759 | 0.715 | Western | Sichuan | 3.261 | 9.559 | 2.267 | 3.495 |
Tianjin | 0.810 | 1.062 | 3.297 | 0.446 | Chongqing | 2.091 | 1.346 | 3.106 | 3.144 | ||
Hebei | 0.980 | 13.505 | 1.867 | 0.411 | Guizhou | 2.000 | 2.503 | 1.366 | 4.193 | ||
Shanghai | 0.461 | 0.471 | 4.525 | 0.476 | Yunnan | 3.316 | 21.338 | 1.249 | 5.78 | ||
Jiangsu | 1.468 | 2.430 | 4.356 | 0.590 | Shaanxi | 2.383 | 4.79 | 2.505 | 1.771 | ||
Zhejiang | 2.705 | 3.217 | 3.066 | 2.418 | Gansu | 2.170 | 2.56 | 1.962 | 2.478 | ||
Fujian | 1.645 | 1.059 | 2.227 | 3.136 | Qinghai | 1.961 | 2.489 | 1.136 | 8.153 | ||
Shandong | 1.687 | 5.900 | 3.252 | 0.493 | Ningxia | 2.027 | 8.725 | 4.022 | 0.497 | ||
Guangdong | 2.552 | 2.683 | 4.453 | 1.918 | Xinjiang | 2.601 | 6.459 | 2.075 | 2.54 | ||
Hainan | 1.150 | 0.753 | 1.353 | 3.772 | Guangxi | 3.327 | 12.783 | 2.593 | 3.263 | ||
Average | 1.45 | 3.24 | 3.42 | 1.44 | Inner Mongolia | 2.511 | 9.819 | 2.366 | 2.101 | ||
Central | Shanxi | 1.863 | 5.068 | 1.832 | 1.348 | Average | 2.51 | 7.49 | 2.25 | 3.41 | |
Anhui | 1.362 | 0.924 | 0.513 | 1.642 | Northeastern | Liaoning | 1.576 | 2.120 | 3.238 | 0.904 | |
Jiangxi | 2.536 | 3.151 | 1.951 | 3.247 | Jilin | 2.402 | 5.941 | 2.443 | 1.944 | ||
Henan | 1.236 | 8.943 | 1.837 | 0.637 | Heilongjiang | 2.927 | 17.735 | 2.983 | 2.487 | ||
Hubei | 1.928 | 2.021 | 2.583 | 1.726 | Average | 2.30 | 8.60 | 2.89 | 1.78 | ||
Hunan | 1.400 | 0.907 | 1.910 | 2.476 | |||||||
Average | 1.72 | 3.50 | 1.771 | 1.85 | National average | 1.98 | 5.38 | 2.69 | 2.27 |
Category | 2005–2010 | 2011–2015 | 2016–2019 | |||
---|---|---|---|---|---|---|
Moran’s I | p Value | Moran’s I | p Value | Moran’s I | p-Value | |
NRSCC | 0.228 | 0.245 | 0.229 | 0.253 | 0.245 | 0.181 |
SECC | 0.223 | 0.280 | 0.314 | 0.046 | 0.305 | 0.075 |
EPACC | 0.468 | 0.003 | 0.432 | 0.001 | 0.606 | 0.001 |
RECC | 0.325 | 0.052 | 0.299 | 0.088 | 0.283 | 0.013 |
Variables | Before and After Supply-Side Reform and T-test | Eastern Region | Central Region | Western Region | Northeastern Region |
---|---|---|---|---|---|
HEIR | Before supply-side reform | 0.3168 | 0.3871 | 0.4620 | 0.3226 |
After supply-side reform | 0.3340 | 0.3380 | 0.5494 | 0.3579 | |
T-test | 0.4163 | 0.0120 | 0.2266 | 0.0028 | |
DCHI | Before supply-side reform | −0.0327 | −0.0714 | −0.0538 | −0.0280 |
After supply-side reform | −0.2042 | −0.4136 | −0.1861 | −0.0822 | |
T-test | 0.0000 | 0.0000 | 0.0000 | 0.0328 | |
TLIE | Before supply-side reform | 0.5593 | 0.5978 | 0.6137 | 0.5736 |
After supply-side reform | 0.5379 | 0.5611 | 0.6190 | 0.5928 | |
T-test | 0.0159 | 0.0133 | 0.4450 | 0.0361 | |
TMT | Before supply-side reform | 0.0768 | 0.0434 | 0.0682 | 0.0411 |
After supply-side reform | 0.1002 | 0.0346 | 0.0586 | 0.0590 | |
T-test | 0.0172 | 0.0156 | 0.1504 | 0.0003 | |
GD(logarithm) | Before supply-side reform | 6.0627 | 6.8061 | 6.5297 | 6.7670 |
After supply-side reform | 7.5411 | 8.1593 | 7.8919 | 7.9523 | |
T-test | 0.0000 | 0.0000 | 0.0000 | 0.0000 | |
IND | Before supply-side reform | 1.3046 | 0.8002 | 1.0111 | 0.9408 |
After supply-side reform | 0.1884 | 1.1309 | 1.3201 | 0.1510 | |
T-test | 0.0016 | 0.0000 | 0.0000 | 0.0000 | |
ENRE | Before supply-side reform | 8.6037 | 15.3868 | 18.1040 | 15.4748 |
After supply-side reform | 8.3660 | 7.7932 | 10.8356 | 8.9731 | |
T-test | 0.8050 | 0.0178 | 0.0000 | 0.0009 | |
IVEN | Before supply-side reform | 1.2254 | 1.2198 | 1.6386 | 1.4790 |
After supply-side reform | 0.5662 | 0.8522 | 0.9394 | 0.5223 | |
T-test | 0.0000 | 0.0497 | 0.0001 | 0.0000 | |
RECC | Before supply-side reform | 1.2877 | 1.4891 | 2.1402 | 1.8333 |
After supply-side reform | 1.8950 | 2.3580 | 3.5390 | 3.5896 | |
T-test | 0.0000 | 0.0000 | 0.0000 | 0.0000 |
RECC | NRSCC | SECC | EPACC | |
---|---|---|---|---|
EPCF | −0.064 *** (0.017) | −0.093 ** (0.038) | 0.013 (0.023) | −0.032 (0.038) |
MEF | 0.035 ** (0.016) | −0.015 (0.044) | 0.009 (0.022) | 0.084 * (0.046) |
ISF | 0.204 ** (0.078) | 0.430 * (0.219) | −0.073 (0.096) | −0.148 (0.204) |
Regional Openness | −0.020 (0.112) | 0.151 (0.388) | 0.030 (0.106) | 0.520 ** (0.245) |
Proportion of Floating Population | −0.203 (0.210) | −0.577 (0.706) | −0.171 (0.102) | 0.096 (0.540) |
Per Capita Consumption Expenditure (logarithmic) | −0.146 (0.232) | 1.382 ** (0.503) | −0.097 (0.208) | −0.564 (0.573) |
Constant | 1.849 (2.897) | 1.123 (10.138) | 1.151 (2.733) | −10.646 (6.550) |
Individual FE | Controlled | Controlled | Controlled | Controlled |
Time FE | Controlled | Controlled | Controlled | Controlled |
Observations | 450 | 450 | 450 | 450 |
R-squared | 0.676 | 0.460 | 0.550 | 0.589 |
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Xu, M.; Chen, C.; Lin, S.; Shen, D. Research on the Spatial-Temporal Variation of Resources and Environmental Carrying Capacity and the Impact of Supply-Side Reform on Them: Evidence from Provincial-Level Data in China. Land 2023, 12, 1584. https://doi.org/10.3390/land12081584
Xu M, Chen C, Lin S, Shen D. Research on the Spatial-Temporal Variation of Resources and Environmental Carrying Capacity and the Impact of Supply-Side Reform on Them: Evidence from Provincial-Level Data in China. Land. 2023; 12(8):1584. https://doi.org/10.3390/land12081584
Chicago/Turabian StyleXu, Mingjun, Changling Chen, Shugao Lin, and Duanshuai Shen. 2023. "Research on the Spatial-Temporal Variation of Resources and Environmental Carrying Capacity and the Impact of Supply-Side Reform on Them: Evidence from Provincial-Level Data in China" Land 12, no. 8: 1584. https://doi.org/10.3390/land12081584
APA StyleXu, M., Chen, C., Lin, S., & Shen, D. (2023). Research on the Spatial-Temporal Variation of Resources and Environmental Carrying Capacity and the Impact of Supply-Side Reform on Them: Evidence from Provincial-Level Data in China. Land, 12(8), 1584. https://doi.org/10.3390/land12081584