Spatial–Temporal Characteristics and Influencing Factors of Land-Use Carbon Emissions: An Empirical Analysis Based on the GTWR Model
Abstract
:1. Introduction
2. Overview of the Study Area and Data Source
2.1. Study Area
2.2. Data Sources
- (1)
- Land-use data obtained for the interval of one year (10 years in total) from 2001 to 2019 were acquired. The relevant data were obtained from a widely utilized dataset [44] (https://zenodo.org/record/5816591, accessed on 10 May 2023), which has been widely used as the basic data for LUCE research [45,46]. The dataset was subjected to preprocessing, and ArcGIS 10.8 software was employed to extract information on construction land. Subsequently, the construction land patches within each city of Zhejiang Province were obtained through mask extraction operations. Patches with an area smaller than 0.01 km2 and those exhibiting scattered distribution were excluded and manually corrected, resulting in the acquisition of construction land patches for the 11 cities in Zhejiang Province for each year;
- (2)
- Socioeconomic data, including population, GDP, industrial structure, government revenue, general public budget expenditure, fixed asset investment, and livestock population, were retrieved from the Zhejiang Statistical Yearbook. Additionally, data on the completed area’s green-covered area were obtained from the China Urban Statistical Yearbook. The accuracy and consistency of all of the aforementioned data were cross-referenced and verified against the statistical yearbooks of each city;
- (3)
- Carbon emission data for the 11 cities in Zhejiang Province from 2001 to 2019 were obtained. These data represent estimated carbon emissions resulting from the primary energy consumption in each city. These data serve as a partial estimation of carbon emissions from construction land in the present article. The data were sourced from the Carbon Emission Accounts and Datasets (https://www.ceads.net.cn/, accessed on 10 May 2023), which comprise carbon emission inventories for 290 Chinese cities over the years under investigation. Previous studies have confirmed the comprehensiveness and effectiveness of these datasets [47,48].
3. Methodology
3.1. Calculation of LUCE
3.1.1. Accounting for Total Carbon Sinks
3.1.2. Accounting for Total Carbon Emissions
3.2. Net Land-Use Carbon Emissions
3.3. Influencing Factors
- Socioeconomic aspects
- Urban form aspects
- Urban environment aspects
3.4. GTWR Models
4. Results and Discussion
4.1. Land-Use Changes
4.2. Spatial and Temporal Variation Characteristics of LUCE
4.2.1. Temporal Evolution Characteristics
4.2.2. Spatial Distribution Characteristics
4.3. Spatial and Temporal Variation Characteristics of LUCE Influencing Factors
4.3.1. GTWR Empirical Results
4.3.2. Spatial and Temporal Heterogeneity of LUCE Influencing Factors
- Socioeconomic Aspects
- Urban Form Aspects
- Urban Environment Aspects
5. Conclusions
- (1)
- Over a period of nearly 20 years, from 2001 to 2019, the total LUCE in Zhejiang Province exhibited a pattern of rapid growth followed by stability. The change in LUCE in each city demonstrated two primary trends: a continuous increase over time, as observed in Ningbo, and a pattern of stabilization, exemplified by Hangzhou, where emissions initially increased and then decreased in phases. Furthermore, there was a noticeable spatial variation in LUCE among Zhejiang’s cities, with higher emissions observed in the northeast region and lower emissions in the southwest;
- (2)
- The influence of the seven indicators on LUCE exhibited significant heterogeneity in both the temporal and spatial dimensions. The statistical analysis of the regression coefficients for the influencing factors revealed that their average intensities were ranked as follows: economic level > government intervention > urban compactness > public facilities level > urban greening level > industrial structure > population density;
- (3)
- The impact of population density on LUCE varied across cities, transitioning from a negative effect in the early stages to a positive effect. Inland cities in western Zhejiang Province exhibited a greater influence on LUCE compared to eastern coastal cities. The relationship between economic level and LUCE in Zhejiang’s cities was generally positive and stable, with a spatial distribution characterized by higher levels in the east and lower levels in the west. The association between industrial structure and LUCE remained positive and stable in Hangzhou and Quzhou, while it decreased in northeastern Zhejiang’s cities represented by Ningbo and increased in southwestern Zhejiang’s cities represented by Quzhou and Lishui. Government intervention exhibited a negative correlation with LUCE in Zhejiang’s cities, with a spatial distribution indicating higher levels in the northeast and lower levels in the southwest. The spatial distribution of the influence of public facilities level on carbon emissions in Zhejiang’s cities demonstrated a three-tiered hierarchical pattern, with higher levels in the northeast, intermediate levels in the southwest, and lower levels in the middle. Urban compactness exhibited a negative correlation with LUCE in each city of Zhejiang Province, and its impact displayed a spatial distribution characterized by higher levels at both ends and lower levels in the middle. The influence of urban greening level on LUCE varied among cities and exhibited a spatial divergence, with higher levels in the north and lower levels in the south;
- (4)
- The LUCE in different cities are influenced to varying degrees by cities’ respective stages of development. For instance, cities such as Ningbo, Wenzhou, Jiaxing, Shaoxing, Jinhua, Zhoushan, Taizhou, and Lishui are all influenced by their economic levels, albeit with variations in the extent and dynamic evolution of these influences. Therefore, when formulating differentiated low-carbon economic development strategies for different cities, careful consideration should be given to their specific developmental stages and the processes of dynamic evolution they are undergoing.
Author Contributions
Funding
Data Availability Statement
Conflicts of Interest
References
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Notation | Carbon Emission Component | Coefficient | Units | Source |
---|---|---|---|---|
Forestland | −0.586 | t/(hm2·yr) | [15] | |
Shrubland | −0.161 | t/(hm2·yr) | [49,50] | |
Grassland | −0.021 | t/(hm2·yr) | [15,51] | |
Water bodies | −0.253 | t/(hm2·yr) | [22,51] | |
Other lands | −0.005 | t/(hm2·yr) | [15] | |
Cropland | 0.497 | t/(hm2·yr) | [15] | |
Human respiration | 0.079 | t C/(person·yr) | [50,52] | |
Pig respiration | 0.082 | t C/(head·yr) | [50,53] | |
Cattle respiration | 0.374 | t C/(head·yr) | [50,53] |
Cities | Land-Use Types | 2001 (km2) | 2011 (km2) | 2019 (km2) | 2001–2019 (km2) |
---|---|---|---|---|---|
Hangzhou | Cropland | 3205.45 | 2553.36 | 2686.83 | −518.63 |
Construction land | 636.69 | 1167.11 | 1468.61 | 831.92 | |
Forestland | 12,201.59 | 12,280.22 | 11,930.67 | −270.92 | |
Water bodies | 836.67 | 879.03 | 794.27 | −42.40 | |
Ningbo | Cropland | 3253.42 | 2901.97 | 2850.59 | −402.84 |
Construction land | 698.29 | 1303.45 | 1577.30 | 879.01 | |
Forestland | 4521.21 | 4348.68 | 4266.27 | −254.94 | |
Water bodies | 755.51 | 674.04 | 534.61 | −221.10 | |
Wenzhou | Cropland | 2047.19 | 1801.55 | 2109.13 | 61.94 |
Construction land | 441.43 | 680.23 | 814.82 | 373.39 | |
Forestland | 8698.51 | 8716.95 | 8313.80 | −384.70 | |
Water bodies | 242.19 | 232.49 | 194.81 | −47.38 | |
Jiaxing | Cropland | 3591.53 | 3321.43 | 3117.16 | −474.38 |
Construction land | 248.03 | 550.66 | 778.33 | 530.30 | |
Forestland | 25.39 | 22.80 | 23.68 | −1.71 | |
Water bodies | 1049.84 | 1019.25 | 995.61 | −54.23 | |
Huzhou | Cropland | 2849.06 | 2646.92 | 2589.38 | −259.68 |
Construction land | 210.68 | 424.66 | 603.73 | 393.05 | |
Forestland | 2523.62 | 2389.94 | 2284.23 | −239.39 | |
Water bodies | 240.64 | 361.76 | 346.64 | 106.00 | |
Shaoxing | Cropland | 2557.55 | 2265.12 | 2363.91 | −193.64 |
Construction land | 423.85 | 710.55 | 867.12 | 443.27 | |
Forestland | 4925.04 | 4911.33 | 4715.85 | −209.19 | |
Water bodies | 372.05 | 391.05 | 331.94 | −40.11 | |
Jinhua | Cropland | 3118.94 | 2651.72 | 2817.73 | −301.21 |
Construction land | 426.40 | 790.21 | 983.04 | 556.65 | |
Forestland | 7276.66 | 7326.01 | 6993.81 | −282.84 | |
Water bodies | 138.41 | 191.90 | 166.06 | 27.65 | |
Quzhou | Cropland | 2046.61 | 1944.41 | 2079.32 | 32.72 |
Construction land | 218.11 | 322.73 | 409.76 | 191.64 | |
Forestland | 6519.36 | 6479.76 | 6262.37 | −256.99 | |
Water bodies | 90.66 | 127.88 | 123.64 | 32.97 | |
Zhoushan | Cropland | 420.34 | 403.46 | 360.30 | −60.04 |
Construction land | 95.48 | 168.92 | 214.31 | 118.83 | |
Forestland | 568.12 | 531.55 | 559.48 | −8.64 | |
Water bodies | 95.01 | 74.96 | 44.89 | −50.12 | |
Taizhou | Cropland | 2508.14 | 2280.38 | 2300.04 | −208.10 |
Construction land | 416.91 | 714.22 | 860.08 | 443.18 | |
Forestland | 6258.94 | 6182.98 | 6050.61 | −208.33 | |
Water bodies | 257.26 | 263.93 | 231.44 | −25.82 | |
Lishui | Cropland | 870.00 | 731.62 | 1075.23 | 205.23 |
Construction land | 123.89 | 188.09 | 257.07 | 133.18 | |
Forestland | 16,234.14 | 16,278.26 | 15,866.92 | −367.82 | |
Water bodies | 75.97 | 107.25 | 107.05 | 31.08 |
Influencing Factors | Moran’s Index | Z-Score | p-Value | Confidence Interval |
---|---|---|---|---|
Population density (PD) | 0.3238 | 17.1222 | <0.01 | 99% |
Economic level (EL) | 0.0863 | 4.8947 | <0.01 | 99% |
Industrial structure (IS) | 0.2749 | 14.5810 | <0.01 | 99% |
Government intervention (GI) | 0.3584 | 18.9851 | <0.01 | 99% |
Public facilities level (PF) | 0.1717 | 9.4052 | <0.01 | 99% |
Urban compactness (UC) | 0.6188 | 32.3278 | <0.01 | 99% |
Urban greening level (UG) | 0.0732 | 4.2427 | <0.01 | 99% |
Bandwidth | Sigma | Residual Squares | AICc | R2 | Adjusted R2 |
---|---|---|---|---|---|
0.1575 | 0.0342 | 0.1288 | −208.1290 | 0.9697 | 0.9677 |
Influencing Factors | Mean | S.D. | Min. | Median | Max. |
---|---|---|---|---|---|
Population density (PD) | −0.0248 | 0.2895 | −1.2100 | 0.0260 | 0.4001 |
Economic level (EL) | 0.4171 | 0.3597 | −1.0195 | 0.3417 | 1.1011 |
Industrial structure (IS) | −0.0733 | 0.2862 | −0.7208 | −0.0080 | 0.4078 |
Government intervention (GI) | −0.3962 | 0.4375 | −1.7426 | −0.3115 | 0.6037 |
Public facilities level (PF) | −0.1018 | 0.2595 | −1.0618 | −0.0122 | 0.3481 |
Urban compactness (UC) | −0.2850 | 0.2438 | −0.7052 | −0.2977 | 0.4190 |
Urban greening level (UG) | −0.0967 | 0.2556 | −1.2192 | −0.0201 | 0.1961 |
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He, J.; Yang, J. Spatial–Temporal Characteristics and Influencing Factors of Land-Use Carbon Emissions: An Empirical Analysis Based on the GTWR Model. Land 2023, 12, 1506. https://doi.org/10.3390/land12081506
He J, Yang J. Spatial–Temporal Characteristics and Influencing Factors of Land-Use Carbon Emissions: An Empirical Analysis Based on the GTWR Model. Land. 2023; 12(8):1506. https://doi.org/10.3390/land12081506
Chicago/Turabian StyleHe, Jie, and Jun Yang. 2023. "Spatial–Temporal Characteristics and Influencing Factors of Land-Use Carbon Emissions: An Empirical Analysis Based on the GTWR Model" Land 12, no. 8: 1506. https://doi.org/10.3390/land12081506