The Correlation Analysis between Air Quality and Construction Sites: Evaluation in the Urban Environment during the COVID-19 Pandemic
Abstract
:1. Introduction
Aim and Objectives
- Collect data of the air quality index of Hangzhou city from 29 January 2020 to 30 April 2020, and information of construction sites, to analyze the correlative relationship between air quality and the number of construction sites;
- Evaluate and visualize the data, and build a relevant mathematical model for the guidelines on the number of construction sites;
- Discuss the probable reasons and provide solutions for improving the resiliency of construction sites to pandemics.
2. Literature Review: The Impact of Construction Sites on Air Quality
2.1. Air Pollutant Diffusion
2.2. Air Quality Parameters
3. Methodology
3.1. Data Collection
3.1.1. Air Quality Indicators Collection
3.1.2. Construction Activity Collection
3.1.3. The Selection of Districts
3.1.4. Timespan
3.1.5. Summary of Data Collection
3.2. Data Processing
3.2.1. Initial Analysis
3.2.2. Regression Analysis
3.3. MAD and MAPE Verification of Model
- Mean Absolute Deviation
- Mean Absolute Percentage Error
3.4. Application of Correlative Model
4. Result & Discussions
4.1. The Comparison of Time Period
4.2. Model Result
4.2.1. Pearson Correlative Coefficient
4.2.2. Linear Correlative Analysis by Scatter Plots
4.3. Regression Analysis
4.3.1. Modelling Abstract
4.3.2. Correlative Coefficient
4.3.3. Correlative Equation by SPSS Stepwise Non-Linear Regression Analysis
4.4. MAD & MAPE Verification of Multiple Non-Linear Regression Models
4.5. Predicted Guidelines Value of Construction Sites in Three Tiers of Districts
4.6. Performance of the Models in Other Districts That in the Same Tiers
4.7. Discussion of The Final Result
5. Further Discussions
5.1. Air Parameters Analysis in Correlative Mathematical Models
5.2. Comparison Analysis
5.3. Poor Performance in Other Districts
5.4. Limitation of This Research & Future Studies
6. Conclusions
- The air pollutant concentrations decreased during the lockdown period and started to increase after the lockdown period. As all the construction activities were stopped during the closure of the city of Hangzhou, the data shows that the building construction sites would increase the dust and air pollutant emissions. Specifically, NO2 had the largest increase. It increased by more than 150% in all eight districts. Thus, we see an opportunity to have limitations on construction sites and upgrade standards on pollution levels for construction sites.
- The most influential air indicators screened by the SPSS stepwise regression method are NO2, SO2, CO, and PM2.5. These are highlighted in AQI of two periods, in the lockdown and after the lockdown time. The deviation between this result and the literature review analysis was mainly caused by the limitation of the number and location of air monitoring sites.
- The correlative equations for three sample districts were provided in the results section. Subsequently, the recommended number of construction sites for the Xiacheng, Gongshu, Xiaoshan districts were 10–16, 113–118, and 285–311, respectively, in the lockdown period, and 13–19, 77–88, and 223–234, respectively, after the lockdown period.
- The performances of models and correlative equations were poor in other districts that belong to the same tiers at the construction project level. The forecasting number of construction sites was highly dependent on the real number of construction sites in the sample districts.
Supplementary Materials
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
Appendix A. Correlated Model
- In the lockdown period
- After the lockdown period
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District | Number of Monitoring Sites and Stations |
---|---|
1. Shangcheng | 1 |
2. Xiacheng | 1 |
3. Xihu | 5 |
4. Jianggan | 2 |
5. Gongshu | 2 |
6. Binjiang | 2 |
7. Yuhang | 2 |
8. Xiaoshan | 1 |
District | Shangcheng | Xiacheng | Xihu | Jianggan | Gongshu | Binjiang | Yuhang | Xiaoshan |
---|---|---|---|---|---|---|---|---|
Construction number, N | 14–15 | 17–18 | 38–43 | 50–60 | 76–81 | 42–47 | 142–160 | 228–253 |
Area (km2) * | 26.06 | 29.33 | 309.41 | 200 | 69.25 | 72.22 | 1228.41 | 1417.82 |
Density of construction sites | 0.537–0.576 | 0.580–0.614 | 0.123–0.139 | 0.25–0.3 | 1.10–1.17 | 0.582–0.651 | 0.116–0.130 | 0.161–0.178 |
High-Level Districts | Yuhang District, Xiaoshan District |
---|---|
Mid-level districts | Xihu district, Jianggandistrict, Gongshu district, Binjiang district |
Low-level districts | Shangcheng district, Xiacheng district |
Pearson Correlation Coefficient (PCC) | |||
---|---|---|---|
Extent of linear correlation | Very strong | Strong | General |
Value of Significance (P) | |||
---|---|---|---|
Certainty | 99% | 95% | No significance certainty |
Significant certainty |
Second Order Term | O32, PM102, CO2, NO22, PM2.52, SO22, AQI2 |
O3xPM10, O3xCO, O3xNO2, O3xPM2.5, O3xSO2, O3xAQI, PM10xCO, PM10xNO2, PM10xPM2.5, PM10xSO2, PM10xAQI, COxNO2, COxPM2.5, COxSO2, COxAQI, NO2xPM2.5, NO2xSO2, NO2xAQI, PM2.5xSO2, PM2.5xAQI, SO2xAQI. | |
First Order Term | O2, PM10, CO, NO2, PM2.5, SO2, AQI |
Period | District | Predicted Construction Site Number | Validation Error | Training Error | |||
---|---|---|---|---|---|---|---|
MAPE | MAD | MAPE | MAD | ||||
In the lockdown period | Xiacheng district | 17 | 15.890 | 21.716% | 3.692 | 8.727% | 1.473 |
17 | 17.389 | ||||||
17 | 20.880 | ||||||
17 | 23.730 | ||||||
17 | 23.349 | ||||||
Gongshu district | 81 | 78.646 | 2.051% | 1.661 | 0.583% | 0.472 | |
81 | 78.318 | ||||||
81 | 81.456 | ||||||
81 | 80.599 | ||||||
81 | 83.412 | ||||||
Xiaoshan district | 247 | 258.056 | 4.429% | 10.928 | 3.292% | 8.222 | |
247 | 259.811 | ||||||
247 | 256.686 | ||||||
246 | 259.761 | ||||||
247 | 254.495 | ||||||
After the lockdown | Xiacheng district | 17 | 13.706 | 19.708% | 3.350 | 18.244% | 3.254 |
17 | 14.734 | ||||||
17 | 10.714 | ||||||
17 | 13.721 | ||||||
17 | 16.564 | ||||||
17 | 14.146 | ||||||
17 | 11.962 | ||||||
Gongshu district | 77 | 81.825 | 6.789% | 5.188 | 3.254% | 2.544 | |
77 | 81.482 | ||||||
77 | 82.809 | ||||||
77 | 81.638 | ||||||
76 | 80.405 | ||||||
76 | 80.116 | ||||||
76 | 83.041 | ||||||
Xiaoshan district | 229 | 221.845 | 2.491% | 5.699 | 1.993% | 4.738 | |
229 | 221.252 | ||||||
229 | 225.082 | ||||||
229 | 236.101 | ||||||
229 | 226.919 | ||||||
229 | 224.449 | ||||||
228 | 220.660 |
Time Period | In the Lockdown Period | After the Lockdown Period | ||||
---|---|---|---|---|---|---|
District Tiers | Xiacheng District | Gongshu District | Xiaoshan District | Xiacheng District | Gongshu District | Xiaoshan District |
Recommended number of construction sites (level-1) | −171.15 | 505.24 | 1107.12 | −19.32 | 64.34 | −78.10 |
Recommended number of construction sites (level-2) | −1903.02 | −8961.85 | 3120.36 | −407.58 | −340.95 | −4670.33 |
O3 | PM10 | CO | NO2 | PM2.5 | SO2 | AQI |
---|---|---|---|---|---|---|
g/m3 | 50 | 1 mg/m3 | 40 μg/m3 | 35 | g/m3 | 50 |
Time Period | District | Predicted Number of Construction Sites (Np) | MAPE | Range of NP |
---|---|---|---|---|
In the lockdown period | Xiacheng district | 13.316 | 21.716% | 10–16 |
Gongshu district | 115.818 | 2.051% | 113–118 | |
Xiaoshan district | 298.062 | 4.429% | 285–311 | |
After the lockdown | Xiacheng district | 16.094 | 19.708% | 13–19 |
Gongshu district | 82.364 | 6.789% | 77–88 | |
Xiaodhan district | 228.768 | 2.491% | 223–234 |
Tiers | District | Recommended Number of Constriction Sites (Lockdown) | Recommended Number of Constriction Sites (After Lockdown) |
---|---|---|---|
Low-level districts | Shangcheng district | 15.89 | 15.24 |
Mid-level districts | Xihu district | 77.61 | 78.36 |
Jianggan district | 70.78 | 78.62 | |
Binjiang district | 77.99 | 79.27 | |
High-level districts | Yuhang district | 262.92 | 221.76 |
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Li, H.; Cheshmehzangi, A.; Zhang, Z.; Su, Z.; Pourroostaei Ardakani, S.; Sedrez, M.; Dawodu, A. The Correlation Analysis between Air Quality and Construction Sites: Evaluation in the Urban Environment during the COVID-19 Pandemic. Sustainability 2022, 14, 7075. https://doi.org/10.3390/su14127075
Li H, Cheshmehzangi A, Zhang Z, Su Z, Pourroostaei Ardakani S, Sedrez M, Dawodu A. The Correlation Analysis between Air Quality and Construction Sites: Evaluation in the Urban Environment during the COVID-19 Pandemic. Sustainability. 2022; 14(12):7075. https://doi.org/10.3390/su14127075
Chicago/Turabian StyleLi, Haoran, Ali Cheshmehzangi, Zhiang Zhang, Zhaohui Su, Saeid Pourroostaei Ardakani, Maycon Sedrez, and Ayotunde Dawodu. 2022. "The Correlation Analysis between Air Quality and Construction Sites: Evaluation in the Urban Environment during the COVID-19 Pandemic" Sustainability 14, no. 12: 7075. https://doi.org/10.3390/su14127075
APA StyleLi, H., Cheshmehzangi, A., Zhang, Z., Su, Z., Pourroostaei Ardakani, S., Sedrez, M., & Dawodu, A. (2022). The Correlation Analysis between Air Quality and Construction Sites: Evaluation in the Urban Environment during the COVID-19 Pandemic. Sustainability, 14(12), 7075. https://doi.org/10.3390/su14127075