The Dynamic Impacts of COVID-19 Pandemic Lockdown on the Multifractal Cross-Correlations between PM2.5 and O3 Concentrations in and around Shanghai, China
Abstract
:1. Introduction
2. Data Description and Preprocessing Method
3. Methodology
3.1. Mf-Dcca Method
3.2. Multifractal Cause Analysis
- Step 1
- The original series is shuffled to remove any potential correlations. The MF-DCCA analysis is conducted on the shuffled series and the multifractal characteristic is determined.
- Step 2
- The surrogate series are constructed by phase-randomizing the original series using the IAAFT algorithm. The MF-DCCA analysis is carried out on the surrogate series and are calculated;
- Step 3
- Steps 1–2 are repeated until 80,000 sets of {, } of the hourly PM and O series in and around Shanghai, China, before and during the COVID-19 partial lockdown are accumulated.
- Step 4
- The differences between are checked to determine the components of the multifractality and intrinsic multifractality of the hourly PM and O series in four cities before and during the COVID-19 partial lockdown, respectively.
- Step 5
- Finally, the comparisons between the above multifractality parameters are applied to determine the dynamic impacts of the COVID-19 pandemic on the intrinsic multifractality hourly PM and O series in and around Shanghai, China.
3.3. Formation of a New Index
4. Results and Discussion
4.1. Multifractal Cross-Correlations of PM-O
4.2. Causes of Cross-Correlations between PM and O
4.3. The Coordinated Control Degree of PM-O
4.4. Disscussion
5. Conclusions
- (1)
- The cross-correlations between PM and O in and around Shanghai both before and during the COVID-19 partial lockdown have multifractal characteristics. Moreover, there are weaker multifractal cross-correlation degrees of PM-O in four cities during the COVID-19 partial lockdown.
- (2)
- The impacts of multifractality due to the nonlinear correlation part in and around Shanghai are greater than the linear correlation part and the fat-tailed probability distribution part. The intrinsic multifractal cross-correlations between PM and O decreased in all cities during the COVID-19 partial lockdown.
- (3)
- Although the COVID-19 lockdown contributes to the improvement of multifractal cross-correlations between PM and O, their effects are limited from the perspective of intrinsic multifractality.
- (4)
- The mean values of in and around Shanghai all increased during the COVID-19 partial lockdown. This indicates that the PM-O coordinated control degrees in all four cities become weaker. Among these four cities, the added value of in Shanghai is the maximum.
Author Contributions
Funding
Data Availability Statement
Conflicts of Interest
References
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City | Pollutant | Mean | Std. | Median | Skewness | Kurtosis | ||||||
---|---|---|---|---|---|---|---|---|---|---|---|---|
Period | Period | Ratio | Period | Period | Period | Period | Period | Period | Period | Period | ||
I(A) | II(B) | (B−A)/A | I | II | I | II | I | II | I | II | ||
Shanghai | PM (μg/m) | 49.26 | 32.89 | −33.2% | 34.75 | 21.07 | 39.75 | 27.15 | 1.19 | 1.18 | 1.28 | 0.76 |
O (μg/m) | 39.26 | 72.33 | 84.2% | 22.73 | 24.07 | 38.37 | 73.58 | 0.52 | 0.23 | 0.16 | 0.98 | |
Jiaxing | PM (μg/m) | 42.99 | 42.87 | −0.3% | 30.75 | 35.99 | 37.19 | 32.7 | 1.62 | 1.51 | 3.92 | 2.24 |
O (μg/m) | 33.58 | 59.34 | 76.7% | 22.04 | 25.73 | 31 | 58.22 | 0.87 | 0.45 | 0.43 | 0.25 | |
Nantong | PM (μg/m) | 49.62 | 43.2 | −12.9% | 34.92 | 35.81 | 43.12 | 33.6 | 1.26 | 1.51 | 2.02 | 2.29 |
O (μg/m) | 34.93 | 58.99 | 68.9% | 21.24 | 25.3 | 32.66 | 57.59 | 0.72 | 0.46 | 0.13 | 0.25 | |
Suzhou | PM (μg/m) | 51.49 | 33.99 | −34.0% | 33.86 | 21.31 | 42.62 | 28.85 | 1.1 | 1.11 | 1.25 | 1.23 |
O (μg/m) | 29.42 | 67.9 | 130.8% | 21.95 | 26.19 | 26.06 | 67.12 | 0.92 | 0.38 | 0.58 | 0.4 |
City | Pollutant | ||||||
---|---|---|---|---|---|---|---|
Period I | Period II | Period I | Period II | Period I | Period II | ||
Shanghai | PM-O | 1.321 | 0.843 | 0.112 | 0.115 | 0.349 | 0.292 |
(0.062) | (0.064) | (0.132) | (0.122) | ||||
Jiaxing | PM-O | 0.741 | 0.454 | 0.125 | 0.119 | 0.218 | 0.145 |
(0.071) | (0.067) | (0.112) | (0.084) | ||||
Nantong | PM-O | 0.556 | 0.389 | 0.116 | 0.120 | 0.189 | 0.142 |
(0.066) | (0.082) | (0.103) | (0.082) | ||||
Suzhou | PM-O | 1.146 | 0.583 | 0.113 | 0.113 | 0.292 | 0.269 |
(0.066) | (0.123) | (0.135) | (0.123) |
City | Pollutant | INTR Ratio | |||||||||
---|---|---|---|---|---|---|---|---|---|---|---|
Period I | Period II | Period I | Period II | Period I | Period II | Period I | Period II | Period I | Period II | ||
Shanghai | PM-O | 0.237 | 0.177 | 0.972 | 0.550 | 0.112 | 0.115 | 0.972 | 0.550 | 73.59% | 65.32% |
(0.146) | (0.138) | (0.132) | (0.122) | (0.062) | (0.064) | (0.132) | (0.122) | (9.98%) | (14.46%) | ||
Jiaxing | PM-O | 0.093 | 0.026 | 0.523 | 0.309 | 0.125 | 0.119 | 0.523 | 0.309 | 70.58% | 68.16% |
(0.132) | (0.108) | (0.112) | (0.084) | (0.071) | (0.067) | (0.112) | (0.084) | (15.10%) | (18.60%) | ||
Nantong | PM-O | 0.073 | 0.023 | 0.368 | 0.247 | 0.116 | 0.120 | 0.368 | 0.247 | 66.10% | 63.41% |
(0.122) | (0.106) | (0.103) | (0.082) | (0.066) | (0.082) | (0.103) | (0.082) | (18.49%) | (20.94%) | ||
Suzhou | PM-O | 0.179 | 0.156 | 0.854 | 0.314 | 0.113 | 0.113 | 0.854 | 0.314 | 74.53% | 53.86% |
(0.149) | (0.138) | (0.135) | (0.123) | (0.066) | (0.123) | (0.135) | (0.123) | (11.74%) | (21.01%) |
City | Pollutant | (INTR ratio) | |||||
---|---|---|---|---|---|---|---|
Period I(A) | Period II(B) | Change(B−A)/A | Period I(C) | Period II(D) | Change(D-C) | ||
Shanghai | PM-O | 1.321 | 0.843 | −36.2% | 73.59% | 65.32% | −8.3% |
Jiaxing | PM-O | 0.741 | 0.454 | −38.8% | 70.58%) | 68.16% | −2.4% |
Nantong | PM-O | 0.556 | 0.389 | −30.0% | 66.10% | 63.41% | −2.7% |
Suzhou | PM-O | 1.146 | 0.583 | −49.1% | 74.53% | 53.86% | −20.7% |
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Li, X.; Su, F. The Dynamic Impacts of COVID-19 Pandemic Lockdown on the Multifractal Cross-Correlations between PM2.5 and O3 Concentrations in and around Shanghai, China. Atmosphere 2022, 13, 1964. https://doi.org/10.3390/atmos13121964
Li X, Su F. The Dynamic Impacts of COVID-19 Pandemic Lockdown on the Multifractal Cross-Correlations between PM2.5 and O3 Concentrations in and around Shanghai, China. Atmosphere. 2022; 13(12):1964. https://doi.org/10.3390/atmos13121964
Chicago/Turabian StyleLi, Xing, and Fang Su. 2022. "The Dynamic Impacts of COVID-19 Pandemic Lockdown on the Multifractal Cross-Correlations between PM2.5 and O3 Concentrations in and around Shanghai, China" Atmosphere 13, no. 12: 1964. https://doi.org/10.3390/atmos13121964
APA StyleLi, X., & Su, F. (2022). The Dynamic Impacts of COVID-19 Pandemic Lockdown on the Multifractal Cross-Correlations between PM2.5 and O3 Concentrations in and around Shanghai, China. Atmosphere, 13(12), 1964. https://doi.org/10.3390/atmos13121964