Spatiotemporal Evolution and Influencing Factors of Urban Land Ecological Security in Yunnan Province
Abstract
:1. Introduction
2. Materials and Methods
2.1. Technical Route and Research Ideas
2.2. Selection of Index System of Urban Land Ecological Security and Weight Determination Method
2.2.1. Selection of Index System of Urban Land Ecological Security
2.2.2. Weight Determination Method
- (1)
- Analytic Hierarchy Process
- (2)
- Entropy Weight Method
- (3)
- Calculation method of combination weight.
2.3. Index Selection of Influencing Factors and Research Methods of Dynamic Panel Model
2.3.1. Index Selection of Influencing Factors
2.3.2. Research Methods of Dynamic Panel Model in Econometrics
3. Results
3.1. Spatiotemporal Evolution of Urban Land Ecological Security
3.2. Analysis on Influencing Factors of Urban Land Ecological Security
- (1)
- Urbanization rate X1 and square term X12. According to the estimation results of the LSDVC-2 model, both the estimated coefficients of urbanization rate X1 and its square term X12 pass the 5% significance level test, and the estimated coefficients are 0.01768 and −0.00025, respectively, which indicates that the improvement of urbanization level promotes the ecological security of urban land at first, but when the urbanization level reaches a certain limit, it reduces the ecological security of urban land, showing a trend of inverted “U” shape, which is first raised and then lowered. The results show that when the urbanization rate is between 0% and 35.4%, the improvement of urbanization rate promotes the ecological security of urban land. However, when the urbanization rate is more than 35.4%, the improvement of urbanization rate inhibits the ecological security of urban land.
- (2)
- The investment level of fixed-assets is X2. According to the estimation results of the LSDVC-2 model, the fixed-asset investment level X2 has a significant positive correlation with urban land ecological security, with an estimation coefficient of 0.00698, which has passed the significance level test of 1%, indicating that the higher the fixed-asset investment, the safer the urban land ecological security is.
- (3)
- The level of science and technology is X3. According to the estimation results of the LSDVC-2 model, the level of science and technology X3 has a significant positive correlation with urban land ecological security, and the estimated coefficient is 0.00249, which has passed the significance level test of 5%. It shows that the stronger the level of science and technology, the safer the urban land ecological security is. In this paper, the sum of the general budget expenditure of science and technology and education accounts for the local financial expenditure of that year to characterize the science and technology level.
- (4)
- GDP in each state is X4. According to the estimation results of the LSDVC-2 model, GDP in each state X4 has a significant positive correlation with urban land ecological security, and the estimated coefficient is 0.00036, which has passed the significance level test of 10%. It shows that the more abundant GDP is, the safer the urban land ecological security is.
- (5)
- The comprehensive energy consumption level of industry is X7. According to the estimation results of the LSDVC-2 model, comprehensive energy consumption level of industry X7 has a significant negative correlation with urban land ecological security, and the estimated coefficient is 0.02093, which has passed the significance level test of 5%. It shows that the lower the comprehensive energy consumption level of industry, the safer the urban land ecological security is.
- (6)
- The comprehensive index of urban land ecological security in the last year is Yt-1. According to the estimation results of the LSDVC-2 model, the comprehensive index Yt-1 of urban land ecological security has a significant positive correlation with urban land ecological security in the current year, and the estimated coefficient is 0.40091, which has passed the significance level test of 1%. It shows that the comprehensive index of urban land ecological security has obvious inertia and is more dependent on the previous year.
4. Discussion
5. Conclusions
- (1)
- In general, the comprehensive index of urban land ecological security of each state (city) shows an upward trend, but some states and cities fluctuate greatly; most of the states (cities) decreased significantly in 2015 compared with 2014 and increased after 2016. The values of Lijiang, Xishuangbanna and other states (cities) are relatively high, but Zhaotong, Nujiang and Diqing, which are relatively remote from Kunming, have low values;
- (2)
- Land ecological security classification results show that, in 2010, Zhaotong was in the sensitive level, and in 2014, Yuxi was in the sensitive level; by 2019, most of the states (cities) had reached the relatively safe level, and only Wenshan, Kunming, Zhaotong and Nujiang were in the critical safety level. In general, the ecological security of urban land in central Yunnan and southwest Yunnan are generally better, while the ecological security of urban land in southeast, northeast, and northwest Yunnan is generally weak;
- (3)
- The results of influencing factor analysis show that the comprehensive index of urban land ecological security is significantly affected by the previous period, showing obvious inertia; with the improvement of urbanization level, the comprehensive index of urban land ecological security presents an inverted “U” shape, which first rises and then declines; and the improvement of fixed-asset investment level, science and technology level and GDP will significantly promote the urban land ecological security, in which the role of fixed-asset investment is the most obvious. In addition, the decrease in comprehensive energy consumption per unit of industry will also obviously promote the ecological security of urban land.
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
References
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Target Layer | Index Layer | Computing Method | Attribute | Unit |
---|---|---|---|---|
A: Evaluation of urban land ecological security | B1: per capita park green area | total area of park green space/total population | + | m2 |
B2: green coverage rate of built up area | green coverage area of urban built up area/built up area | + | % | |
B3: forest coverage rate | total forest area in the region/total land area | + | % | |
B4: comprehensive utilization rate of industrial solid waste | comprehensive utilization of industrial solid waste/production of industrial solid waste | + | % | |
B5: urban sewage treatment rate | total amount of urban sewage treatment/total amount of sewage discharge | + | % | |
B6: average discharge of industrial wastewater | total industrial wastewater discharge/built up area | − | t/hm2 | |
B7: average discharge of industrial waste gas | total industrial waste gas/built up area | − | m3/hm2 | |
B8: comprehensive index of air quality | reflects the air quality of major cities in each state, obtained from the Yunnan Statistical Yearbook | − | None |
Dimension | Index | Calculation Method or Data Source | Unit |
---|---|---|---|
Economics | X1: urbanization rate | obtained from the Yunnan Statistical Yearbook | % |
X2: investment level of fixed-assets | per capita investment in fixed-assets (excluding farmers) | 10,000 yuan/person | |
X3: level of science and technology | sum of general budget expenditure on science, technology and education/local financial expenditure | % | |
X4: GDP in each state (city) | obtained from the Yunnan Statistical Yearbook | billion yuan | |
Society | X5: urban population density | total urban population/built up area | 10,000 persons/km2 |
X6: industrial power consumption level | industrial power consumption/built up area | 100 million kW·h/km2 | |
X7: comprehensive energy consumption level of industry | industrial comprehensive energy consumption/built up area | 10,000 ton/km2 | |
X8: decline rate of energy consumption per unit GDP | obtained from the Handbook of Yunnan leading cadres | % | |
X9: proportion of employees in urban secondary industry | number of employees in urban secondary industry units at the end of the year/urban population | % | |
Geography | X10: topographical conditions | maximum regional altitude/local altitude/2 + maximum regional topographic relief/local topographic relief/2 | — |
X11: climatic conditions | regional annual average temperature/maximum regional annual average temperature/2 + regional annual precipitation/maximum regional annual precipitation/2 | — | |
X12: economic density of urban land | output values of secondary industry/built up area | 10,000 yuan/km2 | |
X13: proportion of industrial land area | industrial land area/built up area | % |
Y | Grade | Status | Features |
---|---|---|---|
0 < Y ≤ 0.3 | I | risk level | The land ecological environment is very fragile, the system structure is incomplete, the service function has almost collapsed, the land system has been seriously damaged, the ecological function is difficult to recover after being disturbed, ecological disasters often occur, and the ecological problems are very serious. |
0.3 < Y ≤ 0.45 | II | sensitive level | The ecological environment of the land is very poor, the system structure has deteriorated greatly, the service functions are incomplete and the degradation is serious, the land system is greatly damaged, ecological function recovery is difficult after being disturbed, ecological disasters often occur, and the ecological problems are serious. |
0.45 < Y ≤ 0.6 | III | critical safety level | The land ecological environment is poor, the system structure has deteriorated, the service function has been degraded, but the basic function can still be maintained, the land system has been damaged to a certain extent, the ecological function could easily deteriorate after being disturbed, and ecological disasters could easily occur. |
0.6 < Y ≤ 0.75 | IV | relative safety level | The land ecological environment is better, the system structure is complete, the service function is basically perfect, the land system function is still good (it can be recovered after being disturbed), the possibility of ecological disasters is relatively small, and the sustainable development ability is relatively strong. |
0.75 < Y ≤ 1 | V | safety level | The land ecological environment is great, the system structure is complete, the service function is perfect, the land system function is strong (it can be restored after being disturbed), the possibility of ecological disasters is small, and it is able to achieve completely sustainable development. |
Model Estimation Results | FE-1 | RE-1 | FE-2 | RE-2 | Differential GMM | System GMM | LSDVC-1 | LSDVC-2 |
---|---|---|---|---|---|---|---|---|
X1: urbanization rate | 0.01588 *** (3.49) | 0.01253 *** (2.75) | 0.02021 ** (2.64) | 0.01076 ** (2.39) | 0.01573 * (1.85) | 0.01535 ** (2.00) | 0.02013 *** (2.84) | 0.01768 ** (2.32) |
X12: square term of urbanization rate | −0.00022 *** (−3.73) | −0.00015 *** (−2.84) | −0.00027 *** (−2.93) | −0.00010 ** (−2.39) | −0.00018 (−1.62) | −0.00014 (−1.48) | −0.00027 *** (−2.75) | −0.00025 ** (−2.34) |
X2: investment level of fixed-assets | 0.00817 *** (3.83) | 0.00749 *** (4.75) | 0.00715 *** (3.14) | 0.00112 (1.20) | 0.00623 ** (2.24) | 0.00264 (0.73) | 0.00672 *** (3.24) | 0.00698 *** (3.09) |
X3: level of science and technology | 0.00274 ** (2.57) | 0.00268 ** (2.39) | 0.00242 ** (2.88) | 0.00338 *** (3.73) | 0.00052 (0.66) | 0.00107 (0.92) | 0.00258 ** (2.51) | 0.00249 ** (2.34) |
X4: GDP in each state (city) | 0.00028 * (1.98) | 0.00014 (1.14) | 0.00034 ** (2.13) | −0.00003 (−0.39) | 0.00014 (0.83) | 0.00017 (1.35) | 0.00036 * (1.78) | 0.00036 * (1.68) |
X5: urban population density | −0.26246 (−1.41) | −0.07113 (−0.61) | −0.25401 (−1.25) | 0.00723 (0.27) | −0.40535 * (−1.84) | 0.12269 (1.07) | −0.20889 (−0.97) | −0.25422 (−1.09) |
X6: industrial power consumption level | 0.05646 (0.88) | 0.03350 (0.65) | 0.06338 (0.82) | 0.01387 (0.40) | 0.05517 (0.67) | 0.02216 (0.29) | 0.05881 (1.10) | 0.05466 (0.99) |
X7: comprehensive energy consumption level of industry | −0.00143 (−0.29) | −0.00231 (−0.45) | −0.02166 *** (−2.95) | −0.01168 (−1.44) | −0.03218 *** (−3.25) | −0.03556 *** (-4.14) | −0.02152 ** (−2.33) | −0.02093 ** (−2.17) |
X8: decline rate of energy consumption per unit GDP | 0.00157 (1.64) | 0.00193 ** (2.17) | 0.00209* (2.04) | 0.00133 (1.32) | 0.00196 * (1.78) | 0.00249 *** (2.77) | 0.00206 * (1.95) | 0.00207 * (1.86) |
X9: proportion of employees in urban secondary industry | −0.00102 (−0.39) | −0.00123 (−0.49) | 0.00357 (1.14) | 0.00119 (0.81) | 0.01040 *** (3.26) | 0.01230 *** (4.40) | 0.00387 (1.17) | 0.00378 (1.11) |
X5 × X10: topographic conditions and urban population density | 0.35075 (1.30) | 0.03470 (0.23) | 0.44612 (1.60) | −0.05178 ** (−2.00) | 0.64035 ** (2.16) | −0.18848 (−0.93) | 0.37963 (1.12) | 0.44214 (1.20) |
X12: economic density of urban land | 0.01319 (0.99) | 0.00318 (0.33) | 0.01302 (1.09) | 0.00704 ** (2.21) | 0.02087 (1.56) | 0.01539 (1.30) | 0.01113 (0.83) | 0.01378 (0.95) |
X13: proportion of industrial land area | 0.00165 (1.31) | 0.00208 (1.51) | 0.00043 (0.27) | 0.00045 (0.39) | 0.00004 (0.04) | −0.00034 (−0.41) | 0.00025 (0.11) | 0.00017 (0.07) |
Yt−1: comprehensive index of urban land ecological security in last year | 0.21013 *** (3.92) | 0.71618 *** (6.96) | 0.03763 (0.26) | 0.16159 (1.31) | 0.33830 *** (3.93) | 0.40091 *** (4.63) | ||
Model Test Results | FE-1 | RE-1 | FE-2 | RE-2 | Differential GMM | System GMM | LSDVC-1 | LSDVC-2 |
Within R2 | 0.4474 | 0.4285 | 0.4470 | 0.3346 | ||||
F statistics | 169.64 *** (0.0000) | 186.10 *** (0.0000) | ||||||
Wald statistics | 1030.76 *** (0.0000) | 4086.32 *** (0.0000) | 798.94 *** (0.0000) | 831.15 *** (0.0000) | ||||
Hausman test | 40.61 *** (0.0001) | 58.61 *** (0.0000) |
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Yang, R.; Du, W.; Yang, Z. Spatiotemporal Evolution and Influencing Factors of Urban Land Ecological Security in Yunnan Province. Sustainability 2021, 13, 2936. https://doi.org/10.3390/su13052936
Yang R, Du W, Yang Z. Spatiotemporal Evolution and Influencing Factors of Urban Land Ecological Security in Yunnan Province. Sustainability. 2021; 13(5):2936. https://doi.org/10.3390/su13052936
Chicago/Turabian StyleYang, Renyi, Wanying Du, and Zisheng Yang. 2021. "Spatiotemporal Evolution and Influencing Factors of Urban Land Ecological Security in Yunnan Province" Sustainability 13, no. 5: 2936. https://doi.org/10.3390/su13052936
APA StyleYang, R., Du, W., & Yang, Z. (2021). Spatiotemporal Evolution and Influencing Factors of Urban Land Ecological Security in Yunnan Province. Sustainability, 13(5), 2936. https://doi.org/10.3390/su13052936