A Quantitatively Operational Judging Method for the Process of Large Regional Heavy Haze Event Based on Satellite Remote Sensing and Numerical Simulations
Abstract
:1. Introduction
2. Data and Methods
2.1. Data Sources
2.2. Methods
2.2.1. Coupled Method for Retrieval of Haze Aerosol Optical Depth based on Satellite Remote Sensing and Numerical Simulations
2.2.2. Quantitative Judging Method for the Process of Large Regional Heavy Haze Event
The Definition of Haze and Haze Severity Degree
The Definition of the Process of Large Regional Heavy Haze Event
3. Results and Discussion
3.1. HOD Results Validation
3.1.1. Validation from AERONET AOD Data
3.1.2. Validation from PM2.5 Mass Concentration Data of the Ground Observation Stations
3.2. Analysis of Regional Haze Process in Long-Time Series from November 2015 to 4 January 2015
3.3. Analysis of Typical Heavy Haze Process from 19 December 2015 to 24 December 2015
3.4. Analysis of Meteorological Conditions of Typical Heavy Haze Process
4. Conclusions
- (1)
- This study first established a coupled way to obtain HOD data by taking advantage of the two methods mainly based on remote sensing monitoring technologies in combination with numerical simulations. The validation for HOD retrieval results showed that the couple HOD from this study has good accuracy, the linear correlation coefficient between retrieval HOD and the AERONET Beijing station data and the PM2.5 data from the ground monitoring station were over 0.7 and 0.8 respectively.
- (2)
- On the basis of couple HOD method, this study first establishes a set of operationally quantitative judging methods for the process of larger regional heavy haze event, which includes the definition of haze and haze severity degree, judgment method for regional haze and heavy haze day, judgment method for the process of regional haze event, judgment method for the process of regional heavy haze event.
- (3)
- The applying results of the long time series haze event from December 2015 to 1 January 2016 shows that the methods put forward in this study are feasible to reflect the process of haze event, which can clearly reflect the regularity of generation, development and disappearance for the whole haze process.
- (4)
- The analysis of the typical heavy haze pollution processes that occurred in Beijing–Tianjin–Hebei and the surrounding regions from 17 December 2015 to 26 December 2015 shows that, compared with no obvious haze process during the same period of the last year, the regional heavy haze occurred in such steady meteorological conditions as large-area low air speed, high humidity and low boundary layer height, from which on the other hand can be verified that the methods for haze inversion and the haze process are reliable.
Acknowledgments
Author Contributions
Conflicts of Interest
References
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Wang, Q.; Li, Q.; Wang, Z.; Chen, H.; Mao, H.; Chen, C. A Quantitatively Operational Judging Method for the Process of Large Regional Heavy Haze Event Based on Satellite Remote Sensing and Numerical Simulations. Atmosphere 2017, 8, 222. https://doi.org/10.3390/atmos8110222
Wang Q, Li Q, Wang Z, Chen H, Mao H, Chen C. A Quantitatively Operational Judging Method for the Process of Large Regional Heavy Haze Event Based on Satellite Remote Sensing and Numerical Simulations. Atmosphere. 2017; 8(11):222. https://doi.org/10.3390/atmos8110222
Chicago/Turabian StyleWang, Qiao, Qing Li, Zhongting Wang, Hui Chen, Huiqin Mao, and Cuihong Chen. 2017. "A Quantitatively Operational Judging Method for the Process of Large Regional Heavy Haze Event Based on Satellite Remote Sensing and Numerical Simulations" Atmosphere 8, no. 11: 222. https://doi.org/10.3390/atmos8110222
APA StyleWang, Q., Li, Q., Wang, Z., Chen, H., Mao, H., & Chen, C. (2017). A Quantitatively Operational Judging Method for the Process of Large Regional Heavy Haze Event Based on Satellite Remote Sensing and Numerical Simulations. Atmosphere, 8(11), 222. https://doi.org/10.3390/atmos8110222