PM2.5 Pollutant Concentrations in Greenspaces of Nanjing Are High but Can Be Lowered with Environmental Planning
Abstract
:1. Introduction
- What are the spatial-temporal distributions characteristics of PM2.5 concentrations in small-scale urban greenspaces in high-density central urban districts?
- What are the influencing factors and mechanisms of PM2.5 concentrations in small-scale greenspaces?
- How does information on the smog and haze in urban greenspaces affect the decisions of the elderly on going out and visiting such spaces?
- What are the relevant implications of this study for urban planning and design?
2. Methodology
2.1. Research Sites
2.2. Survey Period and Times
2.3. Data Collection
2.3.1. Physical Environment Data Collection
2.3.2. Visitor Data Collection
2.4. Basic Methodology of Data Analysis
3. Results
3.1. Spatial-Temporal Distribution Characteristics of PM2.5 Concentrations
3.1.1. General Trends of PM2.5 Concentrations
3.1.2. Spatial Distribution Characteristics of PM2.5 Concentrations
3.1.3. Temporal Distribution of PM2.5 Concentration
3.2. Analysis of PM2.5 Concentrations Influencing Factors
3.2.1. Analysis of Greenspace Elements
3.2.2. Analysis of Meteorological Factors
3.3. Correlations between Visitor Activities, PM2.5 Concentrations and Greenspace Elements
3.3.1. Correlation between Visitor Activities, Meteorological Factors and PM2.5 Concentrations
3.3.2. Correlation between Visitor Activities and Greenspace Elements
4. Discussion
4.1. The Greater Impact of Time on PM2.5 Concentrations Compared to Space
4.2. Smog and Haze Reduction Strategies Based on Optimized Greenspace Elements
- Adjust airflow. For example, in Site A2, the degree of fully open airflow can be reduced to between 71–77% by adding small landscape buildings, while semi-open airflow can be decreased to between 45–60% by planting tall trees.
- Adjust green coverage. For example, in Site B, the degree of green coverage can be increased to between 37% and 47% by planting more vegetation, while airflow can be maintained at its current status.
- Jointly adjust airflow openness and green coverage. For example, in Site C, the fully open airflow can be lowered to 71–77% by adding small landscape buildings, and the semi-open airflow can be reduced to 45–60% by planting tall trees. Meanwhile, the degree of green coverage can be increased to 37–47%.
4.3. Elderly Visitor’s Weak Sensitivity to Smog and Haze in Urban Greenspaces and Corresponding Potential Risks to Their Physical and Mental Heath
5. Conclusions
Supplementary Materials
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
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Greenspace Code | Name of Greenspace | Location Characteristics | Distance from Urban Artery | ||
---|---|---|---|---|---|
A | Hanzhongmen City Square | Adjacent to street | 125 m | ||
Site Code | Description | Activity Types | Proportion | Observed Activities | |
A1 | Shady greenway on north side of the square, 86 m away from urban artery | social | 97.5% | Playing chess and cards, chatting and sitting idly, etc. | |
physical | 2.7% | Speed walking, exercising, etc. | |||
A2 | Center of Hanzhongmen Square, 125 m away from urban artery | social | 82.4% | Dancing, taking children on walks, etc. | |
physical | 39.2% | Playing ball games, speed walking, etc. | |||
B | Zhengdayuan Small-scale Greenspace | Adjacent to street and riverfront | 46 m | ||
B | Equipped with fitness facilities | social | 82.4% | Dancing, taking children on walks, etc. | |
physical | 39.2% | Playing ball games, speed walking, etc. | |||
C | Qinhuai Riverfront Greenspace | Riverfront | 118 m | ||
C | An open platform in the middle, 118 m away from urban artery | social | 21.1% | Chatting and sitting idly, etc. | |
physical | 83.1% | Speed walking, running, walking the dog, etc. | |||
D | Stone City Park | Riverfront | 330 m | ||
D1 | Stone City Square, 316 m away from urban artery | social | 86.7% | Singing, dancing, playing instruments, etc. | |
physical | 77.8% | Visiting, photographing, etc. | |||
D2 | “Ghost Face” scenic spot between the hill and river, 460 m away from urban artery | Social | 75.5% | Chatting, playing instruments, flying kites, etc. | |
Physical | 60.7% | Visiting, jogging, etc. |
Sites | A1 | A2 | B | C | D1 | D2 |
---|---|---|---|---|---|---|
Average PM2.5 Concentration (μg/m³) | 187.5 | 185.0 | 188.9 | 185.6 | 192.7 | 190.3 |
Optimal (≤35 μg/m³) * & Good (35 < PM2.5 ≤ 75 μg/m³) * Percentage | 8.7% | 13.0% | 8.7% | 13.0% | 13.0% | 13.0% |
Lightly Polluted (75 < PM2.5 ≤ 115 μg/m³) * Percentage | 17.4% | 13.0% | 17.4% | 13.0% | 8.7% | 8.7% |
Moderately Polluted and above (>115 μg/m³) * Percentage | 73.9% | 74.0% | 73.9% | 74.0% | 78.3% | 78.3% |
Site | Factor Indicator | Schematic Diagram | SVF | |
---|---|---|---|---|
A1 | Green Coverage | 37.61% | | |
Water Coverage | 0.00% | |||
Degree of Fully Open Airflow | 74.50% | |||
Degree of Semi-open Airflow | 55.82% | |||
SVF (sky view factor) | 0.543 | |||
A2 | Green Coverage | 47.21% | | |
Water Coverage | 0.00% | |||
Degree of Fully Open Airflow | 94.72% | |||
Degree of Semi-open Airflow | 68.42% | |||
SVF | 0.752 | |||
B | Green Coverage | 23.90% | | |
Water Coverage | 11.17% | |||
Degree of Fully Open Airflow | 83.76% | |||
Degree of Semi-open Airflow | 66.68% | |||
SVF | 0.650 | |||
C | Green Coverage | 15.71% | | |
Water Coverage | 31.74% | |||
Degree of Fully Open Airflow | 90.22% | |||
Degree of Semi-open Airflow | 78.01% | |||
SVF | 0.757 | |||
D1 | Green Coverage | 63.71% | | |
Water Coverage | 1.02% | |||
Degree of Fully Open Airflow | 71.98% | |||
Degree of Semi-open Airflow | 47.83% | |||
SVF | 0.610 | |||
D2 | Green Coverage | 55.29% | | |
Water Coverage | 13.31% | |||
Degree of Fully Open Airflow | 77.18% | |||
Degree of Semi-open Airflow | 54.93% | |||
SVF | 0.700 |
Correlation Analysis | Green Coverage | Water Coverage | Semi-Open Airflow | Fully Open Airflow | SVF | ||
---|---|---|---|---|---|---|---|
Total | PM2.5 | R | 0.628 | 0.691 | −0.830 * | −0.838 * | −0.506 |
S | 0.182 | 0.129 | 0.041 | 0.037 | 0.306 | ||
Sunny, Cloudy Days, Wind Speed > 0.3 m/s | PM2.5 | R | 0.819 * | −0.720 | −0.887 * | −0.689 | −0.397 |
S | 0.046 | 0.170 | 0.018 | 0.130 | 0.436 | ||
Sunny, Cloudy Days, Wind Speed > 1.5 m/s | PM2.5 | R | 0.786 | 0.508 | −0.833 * | −0.601 | −0.520 |
S | 0.064 | 0.304 | 0.040 | 0.208 | 0.290 |
Pearson Correlation Analysis | Temperature | Humidity | Wind Speed | Wind Direction | Comfort Level | |
---|---|---|---|---|---|---|
PM2.5 | R | 0.174 * | 0.541 ** | −0.103 | 0.037 | −0.400 ** |
S | 0.041 | 0.000 | 0.230 | 0.668 | 0.000 |
Item | c-Total Effect | a | b | a × b Indirect Effect | a × b (95% CI) | c’-Direct Effect | Conclusion | Effect Proportion Formula | Effect Proportion |
---|---|---|---|---|---|---|---|---|---|
PM2.5 ≥ Comfort Level ≥ Number of Visitors | −0.018 | −0.008 ** | −1.875 * | 0.015 | 0.019~0.157 | −0.033 * | partial mediating variable | |a × b/c| | 83.3% |
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Yang, B.; Chen, Y. PM2.5 Pollutant Concentrations in Greenspaces of Nanjing Are High but Can Be Lowered with Environmental Planning. Int. J. Environ. Res. Public Health 2021, 18, 9705. https://doi.org/10.3390/ijerph18189705
Yang B, Chen Y. PM2.5 Pollutant Concentrations in Greenspaces of Nanjing Are High but Can Be Lowered with Environmental Planning. International Journal of Environmental Research and Public Health. 2021; 18(18):9705. https://doi.org/10.3390/ijerph18189705
Chicago/Turabian StyleYang, Binghui, and Ye Chen. 2021. "PM2.5 Pollutant Concentrations in Greenspaces of Nanjing Are High but Can Be Lowered with Environmental Planning" International Journal of Environmental Research and Public Health 18, no. 18: 9705. https://doi.org/10.3390/ijerph18189705
APA StyleYang, B., & Chen, Y. (2021). PM2.5 Pollutant Concentrations in Greenspaces of Nanjing Are High but Can Be Lowered with Environmental Planning. International Journal of Environmental Research and Public Health, 18(18), 9705. https://doi.org/10.3390/ijerph18189705