The Relationship between Rural Spatial Form and Carbon Emission—A Case Study of Suburban Integrated Villages in Hunan Province, China
Abstract
:1. Introduction
2. Relevant Theoretical Background
2.1. Hierarchy of Spatial Form and Indicators
2.2. Correlation between Spatial Form and Carbon Emissions
- (1)
- The overall spacial form of rural communities, such as the total community area, building land area, building density, and other elements, affects the overall level of community carbon emissions in terms of total amount, increasing carbon fluxes [40].
- (2)
- Secondly, the spatial morphology of neighborhood building groups, such as the aggregation and connectivity of settlements, affects the carbon fluxes of the building system [26].
- (3)
- The spatial morphology of roads affects transport carbon input/output fluxes and carbon circulation intensity, as the distances of residences from work and public spaces significantly influences transport use and thus transport carbon fluxes [41].
3. Research Methods
3.1. Measuring Carbon Emissions of the Rural Community
3.2. Quantification of Spatial Form Indicators
3.3. Correlation Analysis
- (1)
- Partial Correlation Analysis
- (2)
- Measuring the Contributions of Driving Factors
- (3)
- Regression Fitting
4. Results—The Case of Hunan’s Suburban Integrated Villages
4.1. Indicators of Spatial Form in the Case Villages
4.2. Identifying Carbon Emissions in the Sample Villages
4.2.1. Carbon Emissions from Buildings
- (1)
- Construction Phase Carbon Emissions
Material Name | Use Parts | Usage | Unit | Obsolescence Rate | Carbon Emission Factor | Carbon Emissions | |
---|---|---|---|---|---|---|---|
Brick building | Clay bricks | Exterior wall, interior wall, footer, foundation | 151 | m3 | 5% | 323.4 kgCO2 e/m3 | 51,275.07 |
Caliber galvanized steel pipe | Roof | 0.12 | t | 7% | 2190 kgCO2 e/t | 281.20 | |
C30 concrete | Ring beam, floor slab, mat | 138.7 | m3 | 1.5% | 295 kgCO2 e/m3 | 44,153.21 | |
Ordinary silicate cement | Masonry mortar, plastering mortar | 28.06 | t | 5% | 735 kgCO2 e/t | 20,173.55 | |
Lime | Foundation bedding | 6.58 | t | 5% | 1190 kgCO2 e/t | 7659.44 | |
Steel reinforcement | Ring beam, floor slab | 4.10 | t | 7% | 2310 kgCO2 e/t | 10,776.61 | |
Gravel | Foundation bedding | 25.87 | t | 5% | 2.18 kgCO2 e/t | 59.22 | |
Sand | Foundation, mortar | 112.28 | t | 5% | 2.51 kgCO2 e/t | 295.91 | |
Aluminum–plastic co-extruded windows | Exterior Windows | 76.26 | m2 | 0 | 129 kgCO2 e/m2 | 9837.54 | |
Tile | Exterior wall surface | 2.6 | t | 5% | 1.4 tCO2 e/t | 12,201.00 | |
Coatings | Exterior wall surface | 1.29 | t | 5% | 1.2 tCO2 e/t | 764.40 | |
Total carbon emissions (kg) | 157,477.14 |
Type | Material Name | Use Parts | Usage | Unit | Obsolescence Rate | Carbon Emission Factor 1 | Carbon Emissions |
---|---|---|---|---|---|---|---|
Wood knot structure | Wood | Wall, roof frame | 100 | m3 | 10% | 283.55 kgCO2 e/m3 | 31,190.50 |
Column cornerstone (column base) | Foundation bedding | 20 | m3 | 5% | 5.08 kgCO2 e/t | 1.60 | |
Steel nails | Wood fixing | 10 | kg | 0 | 2375 kgCO2 e/t | 23.75 | |
Green tiles | Roofing | 3200 | Block | 0 | 0.27 kgCO2 e/kg | 216 | |
Total carbon emissions (kg) | 31,431.85 |
- (2)
- Carbon Emissions in the Use Phase
4.2.2. Transportation Carbon Emissions
4.2.3. Total Carbon Emissions of the Rural Community
4.3. Correlation between Spatial Form and Carbon Emissions
4.3.1. Correlation between Overall Community Spatial Patterns and Carbon Emissions
4.3.2. Relationship between Rural Community Spatial Form and Carbon Emissions from Transport
4.3.3. Relationship between the Spatial Form of Neighborhood Building Groups and Carbon Emissions
- (1)
- Controlling the Density of Building Groups
- (2)
- Controlling Building Spacing
- (1)
- The spatial layout of neighborhood buildings has a more significant impact on rural community carbon emissions when the scale of the community is certain.
- (2)
- Building density has the greatest impact on rural carbon emissions among the spatial form indicators.
- (3)
- There is a negative correlation between the form of neighborhood building groups and carbon emissions within a certain range.
4.4. Reference Values for Spatial Form Indicators
5. Discussion
6. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
1 | There are two views on the calculation of the carbon emission factor of wood: one believes that wood can fix carbon dioxide in the air during the growth process and considers the carbon emission factor of wood to be negative; the other believes that carbon sequestration during wood growth should not be considered in the system boundary of building carbon emission analysis. In this paper, we refer to the latter viewpoint and only consider the wood cutting and processing process to calculate the carbon emission coefficient of wood. |
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Scale | Morphology | Tier 1 Indicators | Secondary Indicators | Data Collection Method |
---|---|---|---|---|
The overall rural community scale | Volume form | Size indicators | X1 Total land area (ha) | Land use data |
X2 Construction land area (ha) | Land use data | |||
Compactness of land use | X3 Building density | Calculation | ||
Layout form | Shape complexity | X4 Perimeter area fractional dimension index (PAFRAC) | Fragstats | |
Layout pattern | X5 Overall landscape shape index (OLSI) | Fragstats | ||
Neighborhood building groups scale | Combination form | Settlement Aggregation | X6 Aggregation (AI) | Fragstats |
Settlement Connectivity | X7 Connectivity index (CONNECT) | Fragstats | ||
Connection Form | Road shape index | X8 Road network shape index (RLSI) | Fragstats | |
Connectivity index | X9 Road patch proximity index (CONTIG) | Fragstats | ||
Public space Accessibility | X10 Average distance to public space | Field research |
Energy Category | Standard Coal Conversion Factor (kg Standard Coal/kg) | Carbon Emission Factor (kg/kg Standard Coal) | Energy Category | Standard Coal Conversion Factor (kg Standard Coal/kg) | Carbon Emission Factor (kg/kg Standard Coal) |
---|---|---|---|---|---|
Gasoline | 1.4714 | 0.5538 | Natural Gas | 1.3300 | 0.4483 |
Liquefied Petroleum Gas | 1.7143 | 0.0030 | Power | 0.1229 kg standard coal/kWh | 0.4987 kg/KWh |
Honeycomb Coal | 0.6302 kgC/kg | Firewood | 2.7 g/kg |
The Kaiser–Meyer–Olkin Metric of Sampling Adequacy | 0.465 | |
Bartlett’s sphericity test | Approximate cardinality | 76.009 |
df | 28 | |
Sig. | 0.000 |
Ingredients | Initial Eigenvalue | Extraction of Squares and Loading | ||||
---|---|---|---|---|---|---|
Total | % of Variance | Cumulative % | Total | % of Variance | Cumulative % | |
1 | 2.462 | 30.778 | 30.778 | 2.462 | 30.778 | 30.778 |
2 | 2.361 | 29.507 | 60.285 | 2.361 | 29.507 | 60.285 |
3 | 1.623 | 20.285 | 80.57 | 1.623 | 20.285 | 80.57 |
4 | 0.81 | 10.121 | 90.692 | |||
5 | 0.405 | 5.068 | 95.76 | |||
6 | 0.165 | 2.068 | 97.827 | |||
7 | 0.11 | 1.379 | 99.206 | |||
8 | 0.063 | 0.794 | 100 |
Component | |||
---|---|---|---|
1 | 2 | 3 | |
Z-score (LNX)1 | 0.137 | 0.259 | 0.359 |
Z-score (LNX)3 | 0.079 | −0.204 | −0.383 |
Z-score (LNX)4 | −0.27 | 0.27 | −0.129 |
Z-score (LNX)5 | 0.376 | 0.08 | −0.016 |
Z-score (LNX)6 | 0.294 | 0.087 | −0.32 |
Z-score (LNX)7 | 0.179 | −0.35 | 0.155 |
Z-score (LNX)8 | 0.206 | 0.318 | −0.07 |
Z-score (LN)10 | 0.075 | −0.069 | 0.438 |
Liaoyuan Village | Jinhua Village | Wangxing Village | Traffic Village | |
---|---|---|---|---|
Northern Hunan Region | ||||
Zhushan Village | Penglang Village | Songshan Village | Hegun Village | |
Xiangxi Region | ||||
Shimen Village | Gwangyang Village | Yongfu Village | Shidu Village | |
Central Hunan Region | ||||
Hantian Village | Shazhou Village | Xiushui Village | Wazao Village | |
Southern Hunan Region |
Total Land Area | Construction Land Area | Building Density | PAFRAC | OLSI | AI | CONNECT | RLSI | CONTIG | Average Distance | |
---|---|---|---|---|---|---|---|---|---|---|
Liaoyuan Village | 811.40 | 45.81 | 0.06 | 1.65 | 20.61 | 99.32 | 2.42 | 67.00 | 0.45 | 308.10 |
Jiao Long Village | 748.05 | 188.36 | 0.20 | 1.30 | 19.04 | 89.21 | 65.22 | 20.71 | 0.60 | 398.69 |
Shaoshan Village | 16.83 | 2.70 | 0.16 | 1.26 | 15.42 | 84.29 | 100.00 | 11.49 | 0.66 | 314.72 |
Tianhan Village | 1185.95 | 150.50 | 0.17 | 1.12 | 17.47 | 80.68 | 98.59 | 35.08 | 0.20 | 417.41 |
Qingting Village | 350.00 | 36.36 | 0.10 | 1.25 | 22.77 | 89.04 | 93.49 | 24.45 | 0.50 | 428.51 |
Lutang Village | 860.14 | 193.46 | 0.22 | 1.63 | 20.26 | 99.16 | 1.23 | 61.37 | 0.40 | 345.52 |
Ma Ying Tong | 400.00 | 19.00 | 0.05 | 1.72 | 18.90 | 80.95 | 0.00 | 28.05 | 0.53 | 271.19 |
Zhushan Village | 476.76 | 18.62 | 0.04 | 1.12 | 16.44 | 81.21 | 100.00 | 18.85 | 0.46 | 671.79 |
Penglang Village | 1376.88 | 22.53 | 0.02 | 1.12 | 20.67 | 78.00 | 99.47 | 15.76 | 0.57 | 365.49 |
Little Fishing Creek | 2100.00 | 9.00 | 0.00 | 1.72 | 15.14 | 80.64 | 0.00 | 24.13 | 0.53 | 239.13 |
Shuangqiao Village | 1610.43 | 46.39 | 0.02 | 1.27 | 25.85 | 78.45 | 0.78 | 47.65 | 0.48 | 390.12 |
Xiuzhou Village | 551.68 | 17.00 | 0.03 | 1.57 | 7.13 | 9.26 | 20.39 | 8.98 | 0.22 | 467.52 |
Shituo Village | 244.57 | 23.42 | 0.10 | 1.09 | 18.75 | 83.20 | 99.63 | 19.13 | 0.66 | 380.85 |
Wushan Village | 1036.55 | 39.80 | 0.04 | 1.09 | 22.87 | 84.50 | 100.00 | 22.06 | 0.60 | 341.71 |
Wazao Village | 324.95 | 54.82 | 0.17 | 1.09 | 19.45 | 86.27 | 98.05 | 21.25 | 0.65 | 248.27 |
Ishizen Village | 1384.53 | 69.17 | 0.05 | 1.09 | 30.33 | 85.18 | 96.94 | 28.11 | 0.54 | 309.60 |
Shazhou Village | 92.62 | 10.77 | 0.12 | 1.60 | 7.21 | 68.17 | 0.00 | 12.65 | 0.60 | 187.78 |
Hongxing Village | 369.29 | 66.77 | 0.18 | 1.08 | 23.94 | 87.99 | 99.77 | 14.96 | 0.64 | 188.51 |
Building Type | Construction Phase | Operation Phase/Year | Total | Carbon Emission Intensity |
---|---|---|---|---|
Brick and mortar building | 157,477.14 kg | 4492.17 kg | 161,969.31 kg | 489.69 kg/m2 |
Wooden architecture | 31,431.85 kg | 2652.37 kg | 34,084.22 kg | 324.61 kg/m2 |
Liaoyuan Village | Jiao Long Community | Shaoshan Village | Tianhan Village | Green Pavilion Village | Lutang Village | |
---|---|---|---|---|---|---|
Distance traveled/km | 2880.00 | 2160.00 | 8400.20 | 5564.20 | 389.33 | 1945.20 |
Carbon emissions | 1241.74 | 931.31 | 2204.42 | 2423.15 | 839.32 | 838.69 |
Ma Ying Tong Village | Zhushan Village | Penglang Village | Little Fishery Creek Village | Shuangqiao Village | Xiuzhou Village | |
Distance traveled/km | 432.00 | 8929.17 | 521.43 | 520.80 | 1167.36 | 393.60 |
Carbon emissions | 186.26 | 1924.95 | 112.41 | 224.55 | 503.32 | 169.70 |
Wushan Village | Wazao Village | Ishizen Village | Shazhou Village | Hongxing Village | Shituo Village | |
Distance traveled/km | 677.76 | 935.10 | 3615.24 | 743.04 | 4505.14 | 1160.22 |
Carbon emissions | 292.22 | 60.48 | 338.73 | 320.37 | 839.03 | 250.12 |
Calculation of Carbon Emissions | Construction Phase | Operation Phase | Total Carbon Emissions/t | |||||
---|---|---|---|---|---|---|---|---|
Number of Households | Building Area/m2 | Carbon Emission Intensity/kg | Energy Carbon Emission/kg | Transportation Carbon Emission/kg | ||||
Northern Hunan Region | 1 | Liaoyuan Village | 775 | 168.06 | 489.69 | 2787.06 | 1201.67 | 66,871.68 |
2 | Jiao Long Village | 765 | 212.31 | 489.69 | 1650.66 | 711.7 | 80,306.24 | |
3 | Shaoshan Village | 1355 | 283.56 | 489.69 | 4467.58 | 2204.42 | 197,191.10 | |
4 | Tianhan Village | 736 | 375 | 489.69 | 7145.50 | 2423.15 | 141,097.95 | |
5 | Qingting Village | 840 | 280 | 489.69 | 2746.43 | 839.32 | 116,820.63 | |
6 | Lutang Village | 1040 | 308.09 | 489.69 | 7027.94 | 4819.72 | 164,355.68 | |
Western Hunan Region | 7 | Ma Ying Tong | 601 | 164.46 | 324.61 | 2836.51 | 1635.13 | 34,524.36 |
8 | Zhushan Village | 302 | 180 | 324.61 | 7844.09 | 1924.95 | 20,596.05 | |
9 | Penglang Village | 386 | 200.21 | 324.61 | 6368.33 | 112.41 | 27,587.77 | |
10 | Little Fishing Creek | 700 | 144.36 | 324.61 | 2941.28 | 1754.41 | 35,749.09 | |
11 | Shuangqiao Village | 672 | 150.66 | 324.61 | 2537.42 | 1369.39 | 35,305.00 | |
12 | Xiuzhou Village | 347 | 170 | 324.61 | 3227.43 | 1916.64 | 20,751.52 | |
Central Hunan | 13 | Shito Village | 377 | 179.19 | 489.69 | 2239.94 | 250.12 | 33,408.60 |
Southern Hunan Region | 14 | Wushan Village | 729 | 179.19 | 489.69 | 3818.60 | 2273.09 | 67,951.97 |
15 | Wazao Village | 394 | 304.29 | 489.69 | 6345.81 | 60.48 | 60,490.42 | |
16 | Ishizen Village | 1098 | 283.33 | 489.69 | 4705.72 | 338.73 | 157,879.57 | |
17 | Shazhou Village | 142 | 172.19 | 489.69 | 2429.67 | 1487.81 | 12,467.17 | |
18 | Hongxing Village | 585 | 460 | 489.69 | 9739.01 | 839.03 | 135,940.59 |
Equation (1) | Compound Correlation Coefficient | 0.781 |
R-Square | 0.61 | |
Adjustment of R-Square | 0.526 | |
Estimated Standard Error | 0.318 |
Number of Households | 8 | 12 | 16 | 20 | 24 |
---|---|---|---|---|---|
Layout | |||||
Carbon emissions per unit of floor space | 7.8682 | 7.8707 | 7.8720 | 7.8732 | 7.8732 |
Rows | 4 × 2 | 3 × 3 | 4 × 3 | 3 × 5 | 4 × 4 | 4 × 5 | 5 × 5 | 5 × 6 |
---|---|---|---|---|---|---|---|---|
Building density | 8.28% | 9.31% | 12.41% | 15.52% | 16.55% | 20.69% | 25.86% | 31.04% |
T-Shaped | Lineage | Wrong Column | Oblique Column | Freestyle |
---|---|---|---|---|
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Song, L.; Xu, F.; Sheng, M.; Wen, B. The Relationship between Rural Spatial Form and Carbon Emission—A Case Study of Suburban Integrated Villages in Hunan Province, China. Land 2023, 12, 1585. https://doi.org/10.3390/land12081585
Song L, Xu F, Sheng M, Wen B. The Relationship between Rural Spatial Form and Carbon Emission—A Case Study of Suburban Integrated Villages in Hunan Province, China. Land. 2023; 12(8):1585. https://doi.org/10.3390/land12081585
Chicago/Turabian StyleSong, Limei, Feng Xu, Ming Sheng, and Baohua Wen. 2023. "The Relationship between Rural Spatial Form and Carbon Emission—A Case Study of Suburban Integrated Villages in Hunan Province, China" Land 12, no. 8: 1585. https://doi.org/10.3390/land12081585
APA StyleSong, L., Xu, F., Sheng, M., & Wen, B. (2023). The Relationship between Rural Spatial Form and Carbon Emission—A Case Study of Suburban Integrated Villages in Hunan Province, China. Land, 12(8), 1585. https://doi.org/10.3390/land12081585