Study of Mixed Pollution of Haze and Dust in Jinan Based on LiDAR
Abstract
:1. Introduction
2. Materials and Methods
2.1. Ground-Based LiDAR, Satellite Data, and Model Product
2.2. Inversion Method
2.3. Ground Station Data, Satellite Data, and Model Product
3. Results
3.1. Transboundary Aerosol Transport Observed by the CALIPSO Satellite
3.2. Ground-Based LiDAR Observations of Aerosols
3.3. Ground Station Meteorological Measurements
3.4. Analysis of the Meteorological Conditions and Pollutant Concentrations
3.5. HYSPLIT Backward Trajectory and Weather Condition Analysis
4. Discussion
- According to radar data and a variety of observations, in this study, a smog/dust pollution process in Jinan was analyzed. The results show that, during the pollution period, the static stability of the atmosphere was good, the humidity was high, and an inversion layer formed, which was conducive to the accumulation of particulate matter. Due to the influx of dust, the main pollutants in the air changed from PM2.5 to PM10, and the pollution increased rapidly. As the humidity decreased, the atmospheric boundary layer rose, the pollution gradually eased, and the pollution incident largely ended on the 30 March.
- The time, source, and cause of the haze and dust pollution in Jinan were different. After 27 March, the PM2.5 concentration in Jinan increased, while the dust pollution was transmitted into the study area on 28 March. After settling, it combined with the near-surface aerosols to form polluted dust. During the pollution period, the dust was mainly supplied by an air mass from Inner Mongolia, while the near-surface pollution was caused by industrial emissions and automobile exhaust. The meteorological factors were not conducive to pollution diffusion, which led to deposition of the pollution.
- According to the spatial distribution characteristics of the PM2.5 and PM10, the near-surface aerosol pollution was very serious. Due to the severe population in Jinan, the mixed haze, sand, and dust pollution had a great impact to people’s lives. Surrounding industrial sites should also pay attention to reasonable emissions to reduce air pollution.
Author Contributions
Funding
Data Availability Statement
Conflicts of Interest
References
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Parameter | |
---|---|
Laser type | Pumped solid-state laser |
Wavelength | 532 nm |
Pulse energy | ≥1 mJ |
Pulse frequency | 2000 Hz |
Telescope diameter | 125 mm |
Detection blind zone | ≤60 m |
Detection distance | Maximum vertical detection height ≥ 10 km; Horizontal detection ≥ 10 km |
Vertical resolution | 3.75–15 m |
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Zhao, Y.; Wang, Y.; Liang, C.; Wang, J.; Fang, J.; Zhou, M. Study of Mixed Pollution of Haze and Dust in Jinan Based on LiDAR. Photonics 2022, 9, 144. https://doi.org/10.3390/photonics9030144
Zhao Y, Wang Y, Liang C, Wang J, Fang J, Zhou M. Study of Mixed Pollution of Haze and Dust in Jinan Based on LiDAR. Photonics. 2022; 9(3):144. https://doi.org/10.3390/photonics9030144
Chicago/Turabian StyleZhao, Yuefeng, Yanqi Wang, Chunhao Liang, Jingjing Wang, Jing Fang, and Maoxia Zhou. 2022. "Study of Mixed Pollution of Haze and Dust in Jinan Based on LiDAR" Photonics 9, no. 3: 144. https://doi.org/10.3390/photonics9030144
APA StyleZhao, Y., Wang, Y., Liang, C., Wang, J., Fang, J., & Zhou, M. (2022). Study of Mixed Pollution of Haze and Dust in Jinan Based on LiDAR. Photonics, 9(3), 144. https://doi.org/10.3390/photonics9030144