Multi-Scale Urban Natural Ventilation Climate Guidance: A Case Study in the Shijiazhuang Metropolitan Area
Abstract
:1. Introduction
2. Study Area
3. Data and Methods
3.1. Data Acquisition
3.2. Methods
3.2.1. Assessment of Wind Environment
3.2.2. Assessment of Thermal Environment
3.2.3. Estimating the Ventilation Potential
- For urban areas, buildings are the main factor that affects the momentum roughness of the air circulation in the atmospheric boundary layer [18]. A building morphological model was obtained using the 1:2000 topographic map and was used to extract two parameters: the building density and building height. Then, we obtained the surface roughness length in the urban areas with a resolution of 25 m.
- For suburban areas, the surface roughness mainly depends on the vegetation type, leaf area index, and vegetation height. In this study, we used the polynomial regression relationship between the leaf area index (LAI) and normalized vegetation index (NDVI), which was established by Wang et al. [19], as well as the morphological model parameters of the different vegetation types, which were determined by Jasinski et al. [20], and the method of calculating the vegetation canopy area index Λ, which was defined by Zeng et al. [21], was used to estimate the vegetation roughness in the suburban areas. Based on the survey data, there are two different vegetation types in the suburban areas: forest and crops. Therefore, we considered the differences in the vegetation height estimation method. The forest vegetation height was obtained from the global vegetation height data with a resolution of 1000 m, while the crop height was acquired from observations from the Shijiazhuang Agro-Meteorological Station [22]. In summary, the surface roughness length with a resolution of 25 m suburban areas in Shijiazhuang was obtained.
3.2.4. Computational Fluid Dynamic Numerical Simulation
4. Results and Analysis
4.1. Analysis of Background Wind Environments
4.2. Analysis of Urban Heat Islands and Ecological Cold Sources
4.3. Analysis of Urban Ventilation Potential
4.4. Analysis of Computational Fluid Dynamic Numerical Simulation
4.4.1. Impact of Building-Height Changes on Wind Environment
4.4.2. Impact of Changes in Building Density on Wind Environment
5. Application and Strategy
5.1. Construction of Wind Corridors Based on Climatopes
5.2. Suggestions for the Buildings in the Block
6. Discussion
7. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
References
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Levels | Diurnal SUHI (°C) | Significance |
---|---|---|
1 | SUHI < −7.0 | SCI |
2 | −7.0 ≤ SUHI ≤ −5.0 | SSCI |
3 | −5.0 < SUHI ≤ 3.0 | WCI |
4 | −3.0 < SUHI ≤ 3.0 | NHI |
5 | 3.0 < SUHI ≤ 5.0 | WHI |
6 | 5.0 < SUHI ≤ 7.0 | SSHI |
7 | >7.0 | SHI |
Item | Levels | |||
---|---|---|---|---|
1 | 2 | 3 | 4 | |
Land use types | Water body | Forest or Green Land | Forest or Green Land | Other |
Green quantity (m2) | - | Forest: ≥10,000 Green Land: ≥12,000 | Forest: <10,000 Green Land: <12,000 | Crops: ≥12,000 Sparse wood |
Significance | SCS | SSCS | GCS | WCS |
Level | Significance | Roughness Length (Z0) | SVF (F) |
---|---|---|---|
1 | Poor | Z0 > 1.0 | — |
2 | General | 0.5 < Z0 ≤ 1.0 | F < 0.75 |
3 | Relatively high | 0.5 < Z0 ≤ 1.0 | F ≥ 0.75 |
4 | High | Z0 ≤ 0.5 | F < 0.75 |
5 | Very high | Z0 ≤ 0.5 | F ≥ 0.75 |
Simulation Scheme | Typical Block |
---|---|
Adjustment of building height | Decrease of 10 m per building |
Decrease of 5 m per building | |
Increase of 5 m per building | |
Increase 10 m per building | |
Increase 15 m per building | |
Increase 20 m per building | |
Adjustment of building density | Decrease of 5% |
Decrease of 10% | |
Decrease of 15% | |
Decrease of 20% | |
Decrease of 25% |
Wind Speed Ranges | Comfort |
---|---|
1 m/s < V < 5 m/s | Comfort |
5 m/s < V < 10 m/s | Discomfort, movement affected |
10 m/s < V < 15 m/s | Significant discomfort, movement severely affected |
15 m/s < V < 20 m/s | Insupportable |
20 m/s < V | Dangerous |
≤0.2 m/s | 0.2–1.5 m/s | 1.5–3.3 m/s | |||||
---|---|---|---|---|---|---|---|
Number of Grids | Percentage | Number of Grids | Percentage | Number of Grids | Percentage | ||
Decrease of 10 m per building | 166 | 8.75% | 1345 | 70.86% | 387 | 20.39% | |
Decrease of 5 m per building | 155 | 8.17% | 1392 | 73.34% | 351 | 18.49% | |
Original building height | 187 | 9.85% | 1384 | 72.92% | 327 | 17.23% | |
Increase of 5 m per building | 192 | 10.12% | 1345 | 70.86% | 361 | 19.02% | |
Increase of 10 m per building | 198 | 10.43% | 1347 | 70.97% | 353 | 18.60% | |
Increase of 15 m per building | 195 | 10.27% | 1335 | 70.34% | 368 | 19.39% | |
Increase of 20 m per building | 220 | 11.59% | 1302 | 68.60% | 376 | 19.81% |
Decrease of 10 m per Building | Decrease of 5 m per Building | Original Building Height | Increase of 5 m per Building | Increase of 10 m per Building | Increase of 15 m per Building | Increase of 20 m per Building | ||
---|---|---|---|---|---|---|---|---|
average wind speed ratio | 0.57 | 0.52 | 0.53 | 0.50 | 0.51 | 0.50 | 0.49 | |
comfortable wind zone ratio | 41.04% | 44.84% | 40.09% | 39.25% | 38.99% | 40.15% | 37.67% |
≤0.2 m/s | 0.2–1.5 m/s | 1.5–3.3 m/s | |||||
---|---|---|---|---|---|---|---|
Number of Grids | Percentage | Number of Grids | Percentage | Number of Grids | Percentage | ||
Original building density | 187 | 9.85% | 1384 | 72.92% | 327 | 17.23% | |
Decrease of 5% in building density | 187 | 9.75% | 1399 | 72.98% | 331 | 17.27% | |
Decrease of 10% in building density | 188 | 9.67% | 1396 | 71.77% | 361 | 18.56% | |
Decrease of 15% in building density | 194 | 9.88% | 1390 | 70.81% | 379 | 19.31% | |
Decrease of 20% in building density | 215 | 9.71% | 1392 | 70.32% | 348 | 19.97% | |
Decrease of 25% in building density | 186 | 8.60% | 1482 | 70.52% | 442 | 20.88% |
Original Building Density | Decrease of 5% in Building Density | Decrease of 10% in Building Density | Decrease of 15% in Building Density | Decrease of 20% in Building Density | Decrease of 25% in Building Density | ||
---|---|---|---|---|---|---|---|
Average wind speed ratio | 0.53 | 0.54 | 0.54 | 0.54 | 0.54 | 0.56 | |
Comfortable wind zone ratio | 40.09% | 42.04% | 44.20% | 44.41% | 44.73% | 45.09% |
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Zhang, S.; Fang, X.; Cheng, C.; Chen, J.; Guo, F.; Yu, Y.; Yang, S. Multi-Scale Urban Natural Ventilation Climate Guidance: A Case Study in the Shijiazhuang Metropolitan Area. Atmosphere 2024, 15, 676. https://doi.org/10.3390/atmos15060676
Zhang S, Fang X, Cheng C, Chen J, Guo F, Yu Y, Yang S. Multi-Scale Urban Natural Ventilation Climate Guidance: A Case Study in the Shijiazhuang Metropolitan Area. Atmosphere. 2024; 15(6):676. https://doi.org/10.3390/atmos15060676
Chicago/Turabian StyleZhang, Shuo, Xiaoyi Fang, Chen Cheng, Jing Chen, Fengxia Guo, Ying Yu, and Shanshan Yang. 2024. "Multi-Scale Urban Natural Ventilation Climate Guidance: A Case Study in the Shijiazhuang Metropolitan Area" Atmosphere 15, no. 6: 676. https://doi.org/10.3390/atmos15060676
APA StyleZhang, S., Fang, X., Cheng, C., Chen, J., Guo, F., Yu, Y., & Yang, S. (2024). Multi-Scale Urban Natural Ventilation Climate Guidance: A Case Study in the Shijiazhuang Metropolitan Area. Atmosphere, 15(6), 676. https://doi.org/10.3390/atmos15060676