Achieving Carbon Neutrality through Urban Planning and Design
Abstract
:1. Introduction
Author, Research Year | Carbon Assessment Objects | Carbon Assessment Formula | Assessing the City Factors |
---|---|---|---|
Zhang Jie, 2015 [23] | Direct CO2 emissions from urban residents in China | Population electricity consumption, residential gas consumption, s public vehicle gasoline consumption, private vehicle gasoline consumption, heating carbon consumption | |
S. Zubelzu, 2015 [6] | Household-based carbon footprint calculation method | Drinking water consumption, wastewater management carbon, electricity, gas supply, transportation base (mandatory, non-mandatory), waste treatment in relation to urban design parameters (area, family unit) and the ability of undevelopable land to determine projected carbon emissions | |
Congrong, 2018 [5] | Methodology for calculating carbon emissions associated with urban sites | Housing, industry, commercial services, transportation, waste, water resources | |
Chao Liu, 2017 [4] | Calculation of urban CO2 emissions | Architecture, transportation, urban green space system |
- (1)
- To reconstruct a carbon-neutral assessment system at the scale of urban building clusters;
- (2)
- To realize a portfolio of interventions for urban planning with the goal of carbon neutrality;
- (3)
- To provide practical theoretical support for urban small-scale CO2 assessment and interventions by concretely locating the assessment results and intervention design results in urban spaces.
- Fine assessment of carbon emission and carbon sink in 100m*100m urban building complex space, which is convenient for planners and decision-makers to compare carbon indicators in different scales of space visually.
- Take more comprehensive carbon reduction measures to achieve the goal of carbon neutrality in urban building cluster area and locate the specific space, and put forward refined suggestions for the planning and implementation of locating.
- With the perspective of carbon neutrality, we make suggestions on industrial transformation, energy use types, ecological space layout and green building integration.
2. Methodology and Data Preparation
2.1. Data Source
2.2. Methodology: Optimization of Carbon-Neutral Target Pathways through Design at the Scale of Urban Building Clusters
- The classification of assessment factors in the calculation system needs to be generalized to spatial units at any scale. In addition, the calculation modules and modalities can be applied to spatial elements in spatial units as well as interventions.
- The design of intervention measures does not only stop at strategy formulation but also needs to estimate the carbon reduction or sink potential of carbon intervention measures in a quantitative way and to consider the carbon intervention methods that can be carried out for the whole category and the whole element carrier on the basis of quantitative assessment, such as to consider different combination scenarios of both carbon reduction and carbon sink measures in a comprehensive way.
- The assessment results and quantitative intervention design are located in the smallest standard spatial unit so that the assessment results and intervention results can be seen visually in order to provide intuitive and effective design strategies for different urban scale planning and design.
2.2.1. Reconstructing Carbon Neutral Assessment Models for Urban Building Clusters
Greenland Use Type | Carbon Absorption Coefficient (kg CO2/m2) | References |
---|---|---|
Forestland (Zhejiang, China) | 9.7 | Yin, Gong et al. (2022) [35] |
Grassland | 0.021 | Zhang et al. (2018) [29] |
Garden plots | 0.1847 | Zhang et al. (2015) [29] |
Roof garden | 1.35 | Cascone, Catania et al. (2018) [36] [37] |
Three-dimensional greening | 4.042 | Marchi, Pulselli et al. (2015) [38] Shafique, Xue et al. (2020) [37] |
2.2.2. Selection of Carbon Reduction and Sink Measures
2.2.3. Carbon Neutral Assessment and Intervention Results at the Scale of Urban Building Cluster
3. Results and Discussion
3.1. Spatial Distribution of Carbon Emissions
3.2. Realizing the Spatial Location of Carbon-Neutral Measures
- We reconstructed the computational model and the quantitative intervention system in order to apply to the quantification of carbon indicators in multi-scale urban design.
- We more comprehensively considered carbon reduction measures that can be applied to urban design elements.
- We specifically located the interventions in the 100 × 100 m urban space and design elements, thus proposing the most direct and effective recommendations for carbon neutrality in urban design schemes.
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
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Intelligent Clusters Lifecycle | Take 2022 Sefaira Itwo4.0CEEB2023 | City Energy Analyst | Cooling Singapore | Carbon Emission Measurement System of China Institute of Planning | Tupou Carbon Monitoring Platform | |
---|---|---|---|---|---|---|
Carbon Emission Assessment | Yes | Yes | Yes | Yes | Yes | Yes |
Carbon Sink Assessment | Yes | Yes | Yes | Yes | No | No |
Scope of intervention dynamic assessment | No | No | Yes | No | No | No |
Increased manual interventions for carbon reduction and real-time assessment | Yes | Yes | No | No | Yes | No |
Increased manual interventions for carbon sinks and real-time assessments | Yes | Yes | No | No | No | No |
Carbon reduction weights comprehensiveness | Low | Low | Low | Low | Medium | Low |
Sinks carbon weights comprehensiveness | Low | Low | Low | Low | Medium | Low |
Data Analysis Visualization | High | Medium | Medium | High | Low | Low |
Convenience of use process | High | Low | Medium | High | Medium | Low |
Platform Shareability | Low | Medium | High | High | Low | Low |
Urban Building Cluster Research Scope | Scale | Carbon Neutral Units |
---|---|---|
National, city, district and county-wide | —— | MT |
Urban design (small scale) | >500,000 m2 | MT |
Partial Area | >40,000 m2, <=500,000 m2 | 10 KT |
Single Building | <=40,000 m2 | T |
Type of Land Use | Building Type | Building Specific Categories | Carbon Emission (kg CO2/m2) |
---|---|---|---|
Residential, Commercial and Residential | Residential buildings | Residential buildings in cities and towns | 90.79 |
Administration | Office buildings | Government office buildings | 65.12 |
Medical Land | Medical buildings | Hospitals | 76.26 |
Sports | Sports | Sports Complexes | 89.66 |
Commercial | Commercial buildings | Hotels and restaurants | 109.11 |
Commercial, Commercial and Residential | Commercial buildings | Supermarkets | 122.99 |
Commercial | Commercial buildings | Shopping mall building | 179.15 |
Cultural, Education and Research | Cultural buildings, Research buildings | High school building | 40.59 |
Covering all land types | Office buildings | General office buildings | 64.08 |
Road Type | Carbon Emission (t) | Carbon Emission (kg per m) |
---|---|---|
Collector road | 1099.67 | 1.53 |
Arterial road | 1416.39 | 1.96 |
Major road | 167.73 | 0.40 |
Highway | 79.65 | 0.58 |
Expressway | 84.39 | 0.41 |
Type of Energy Supply | Average Value of CO2 Reduction Potential |
---|---|
biodigesters (biomass fuel) | −29% |
solar panels on 50% of the roof area to generate electricity | −4% |
geothermal heat pumps (GHP) | −13% |
Types of Interventions | Specific Distribution Location | Quantity | Unit | Carbon Sink/Carbon Reduction (T) | Carbon Sink/Carbon Reduction (T) | Carbon Reduction Pathways | |
---|---|---|---|---|---|---|---|
Intervention1 | Dense forest planting | Xiajiabian Station TOD Complex | 40,000 | m2 | 388 | 15,908 | Carbon Sink |
Charming Creative Neighborhood | 700,000 | m2 | 6790 | ||||
Lakeside Green Corridor | 200,000 | m2 | 1940 | ||||
Fisherman’s Island TOD Complex | 200,000 | m2 | 1940 | ||||
Three-dimensional composite landscape green axis | 500,000 | m2 | 4850 | ||||
Intervention2 | Three-dimensional greening | Whole area building façade | 3,644,391.82 | m2 | 14,730.63174 | 15,530.95 | Carbon Sink, Carbon Source Carbon Reduction |
Intervention3 | Rooftop greening | Whole building roof | 592,830.21 | m2 | 800.3207835 | ||
Intervention4 | Solar Panel | Whole building roof | 592,830.21 | m2 | 0.008384313 | 54,244.22 | Carbon Source Carbon Reduction |
Intervention5 | LED street light | Wangshan Road | 50 | set | 463 | ||
Yinxiu Road | 30 | set | 277.8 | ||||
Shuanghong Road | 50 | set | 463 | ||||
Wanghu Road | 100 | set | 926.1 | ||||
Huanhu Road | 200 | set | 1852.4 | ||||
Hongqiao Road | 150 | set | 1389.45 | ||||
Intervention6 | Ground source heat pump | Whole Area Architecture | 13% | —— | 15,127.19 | ||
Intervention7 | Bio-digester | Whole Area Architecture | 29% | —— | 33,745.27 | ||
Intervention8 | Conversion of industrial production land to research industry | Industrial | 117% | —— | 8377.2 | 29,322.54 | |
Intervention9 | Conversion of commercial land into industrial land for research and testing | Waterfront Commercial Area | 18% | —— | 20,945.34 |
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Share and Cite
Wu, Z.; Zhao, Z.; Gan, W.; Zhou, S.; Dong, W.; Wang, M. Achieving Carbon Neutrality through Urban Planning and Design. Int. J. Environ. Res. Public Health 2023, 20, 2420. https://doi.org/10.3390/ijerph20032420
Wu Z, Zhao Z, Gan W, Zhou S, Dong W, Wang M. Achieving Carbon Neutrality through Urban Planning and Design. International Journal of Environmental Research and Public Health. 2023; 20(3):2420. https://doi.org/10.3390/ijerph20032420
Chicago/Turabian StyleWu, Zhiqiang, Zichen Zhao, Wei Gan, Shiqi Zhou, Wen Dong, and Mo Wang. 2023. "Achieving Carbon Neutrality through Urban Planning and Design" International Journal of Environmental Research and Public Health 20, no. 3: 2420. https://doi.org/10.3390/ijerph20032420
APA StyleWu, Z., Zhao, Z., Gan, W., Zhou, S., Dong, W., & Wang, M. (2023). Achieving Carbon Neutrality through Urban Planning and Design. International Journal of Environmental Research and Public Health, 20(3), 2420. https://doi.org/10.3390/ijerph20032420