Study of Persistent Foggy-Hazy Composite Pollution in Winter over Huainan Through Ground-Based and Satellite Measurements
Abstract
:1. Introduction
2. Experiments and Methods
2.1. Ground-Based, Satellite Data and Model Product
2.2. Accurate Inversion Method in Low-Altitude Cloud Weather
- According to the return signal measured by the LIDAR, the range-corrected signal is obtained after data processing;
- The height of the cloud base and the height of the cloud top are calculated. We determined the height of the cloud base and the height of the cloud top by using the backscatter ratio. The backscattering ratio in cloudless weather is generally close to 1.01 as the height increases. However, starting from the height of the cloud base, the backscattering ratio increases rapidly due to the strong backscattering ability of cloud particles. Then, the equation below is met:This condition is maintained until the cloud top height. At this point, after setting a reasonable threshold to identify clouds, the cloud top height and cloud bottom height are found by the differential zero–crossing method.
- The cloud LIDAR ratio is solved. The clean point after passing through the cloud layer is the iteration starting point A, and the cloud bottom height is the iterative end point B. It is assumed that there are few aerosol particles at this height; that is, the backscatter from point A to point B is mainly derived from clouds. When the thickness of the cloud is not large, the LIDAR energy can penetrate the cloud. At this time, the signal-to-noise ratio is sufficient, and the reference point can be selected above the cloud. Since the LIDAR ratio of cloud may be lower than that of aerosol, the extinction coefficient under cloud is generally smaller after the first inversion. The LIDAR ratio of low-altitude cloud between point A and point B is obtained by using the relationship between the extinction coefficient and backscatter ratio. Here, the condition for the end of the iteration is:When the extinction coefficient value of point B satisfies the Equation (4), the iteration ends, and the corresponding LIDAR ratio is the LIDAR ratio of cloud. Taking 15:00 in Figure 2a as an example, the values of cloud LIDAR ratio is 31.57 Sr. The LIDAR ratio of cloud in this study is 22.57–34.14 Sr.
- The extinction coefficient profile below cloud is solved. According to the iterated aerosol extinction coefficient profile and changing LIDAR ratio, the extinction coefficient profile from near the ground to point B is obtained. When the all-weather extinction coefficient profile is obtained, the boundary layer properties of the atmosphere can be studied, and the aerosol optical depth (AOD) can be used to characterize the quality of the atmosphere. AOD is the integral of the extinction coefficient over a distance. The expression is
3. Results and Discussion
3.1. Analysis of the Meteorological Condition and Pollutant Concentrations
3.2. Aerosol Optical Properties during the Foggy-Hazy Weather
4. Conclusions
- Extinction coefficient inversion in low-altitude cloud weather: Under the condition of low altitude cloud, the extinction coefficient of cloud particles for LIDAR signals is different from that of aerosol particles, which leads to small extinction coefficient results when Fernald inversion is used, meaning that accurate inversion extinction coefficients have certain limitations. In this paper, segmentation inversion is used, and the backscatter ratio is used to identify the low-altitude cloud clouds. Then, the differential zero-crossing method is used to identify the cloud top height and the cloud bottom height, and the cloud LIDAR ratio is reasonably selected through iterative inversion. Accurate inversion of the extinction coefficient profile is realized in this paper, and the LIDAR ratio of cloud in this period is 22.57–34.14 Sr.
- Analysis of the meteorological condition and pollutant concentrations: During the formation of this weather, PM2.5 and major trace gases increased significantly, the photochemical reaction and heterogeneous reaction process may have led to the increase of sulfate and nitrate, and the influence of humidity led to the formation of "secondary pollution", meaning that this event had a greater impact on the region. A weak surface wind speed, high relative humidity, low temperature, and strong inversion caused pollutants to gradually become enriched in the lower layer. The accumulation of pollutants caused the continuous formation of haze after December 29, resulting in visibility in the Huainan area below 10 km.
- Aerosol optical properties: In this case, the near-surface air mass mainly came from the cities near the Huainan region and the heavily polluted areas in the north, while the upper air mass came from Inner Mongolia. Through the inversion of the extinction coefficient profile of ground-based LIDAR data, with the settlement of pollutant air mass on December 29, meteorological factors acted as incentives, causing pollutants to gradually become enriched. After January 4, there was a gradual easing trend. The correlation index of PM2.5 and AOD was 0.7368, indicating that there is a definite linear relationship between them, and AOD can also reflect the pollution condition of this region. The AOD calculated by the ground-based LIDAR is consistent with the AOD trend obtained by the spaceborne sensor, and the AOD value peaks on January 2.
Author Contributions
Funding
Acknowledgments
Conflicts of Interest
References
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Technical Parameter | Value |
---|---|
Wavelength/mm | 532 |
Single pulse energy/mJ | 30 |
Telescope diameter/mm | 200 |
Receive field of telescope/mrad | 1 |
Transmittance of transmitting optical element | 0.8 |
Transmittance of receiving optical element | 0.3 |
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Fu, S.; Xie, C.; Zhuang, P.; Tian, X.; Zhang, Z.; Wang, B.; Liu, D. Study of Persistent Foggy-Hazy Composite Pollution in Winter over Huainan Through Ground-Based and Satellite Measurements. Atmosphere 2019, 10, 656. https://doi.org/10.3390/atmos10110656
Fu S, Xie C, Zhuang P, Tian X, Zhang Z, Wang B, Liu D. Study of Persistent Foggy-Hazy Composite Pollution in Winter over Huainan Through Ground-Based and Satellite Measurements. Atmosphere. 2019; 10(11):656. https://doi.org/10.3390/atmos10110656
Chicago/Turabian StyleFu, Songlin, Chenbo Xie, Peng Zhuang, Xiaomin Tian, Zhanye Zhang, Bangxin Wang, and Dong Liu. 2019. "Study of Persistent Foggy-Hazy Composite Pollution in Winter over Huainan Through Ground-Based and Satellite Measurements" Atmosphere 10, no. 11: 656. https://doi.org/10.3390/atmos10110656
APA StyleFu, S., Xie, C., Zhuang, P., Tian, X., Zhang, Z., Wang, B., & Liu, D. (2019). Study of Persistent Foggy-Hazy Composite Pollution in Winter over Huainan Through Ground-Based and Satellite Measurements. Atmosphere, 10(11), 656. https://doi.org/10.3390/atmos10110656