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遥感技术与应用  2019, Vol. 34 Issue (1): 12-20    DOI: 10.11873/j.issn.1004-0323.2019.1.0012
综述     
灰霾遥感监测研究进展
向嘉敏1,祝善友1,张桂欣2,刘祎1,周洋1
 (1.南京信息工程大学遥感与测绘工程学院,江苏 南京 210044;
2.南京信息工程大学地理与科学学院,江苏 南京 210044)
Progress in Haze Monitoring by Remote Sensing Technology
 Xiang Jiamin1,Zhu Shanyou1,Zhang Guixin2,Liu Yi1,Zhou Yang1
 (1.School of Remote Sensing & Geomatics Engineering,Nanjing Universityof Information Science & Technology,Nanjing 210044,China;
2.School of Geographical Sciences,Nanjing University of InformationScience & Technology,Nanjing 210044,China)
 全文: PDF(1115 KB)  
 
摘要:

灰霾是严重危害人类健康和影响社会经济发展的重大天气灾害之一。采用遥感技术高精度的动态监测灰霾时空分布,是开展灰霾预报预警与影响研究的基础,已成为大气环境等领域的研究热点。综述了灰霾遥感监测的国内外研究进展,主要监测方法可归并为三大类:基于光谱特征差异的图像变换与灰霾指数提取、利用气溶胶光学厚度直接监测与估算大气颗粒物浓度间接监测、综合光学传感器与激光雷达遥感数据的灰霾垂直与水平分布特征立体监测,总结讨论了灰霾遥感监测中存在的问题与困难。最后对灰霾遥感监测的发展趋势进行了分析,未来应在多源遥感手段协同的立体监测体系发展基础上,进一步开展高时空分辨率的雾霾模拟预报研究与业务应用。
 

关键词: 灰霾气溶胶遥感监测
    
Abstract: The haze weather is one of the serious disasters affecting the human health and social economic development.Quantitatively monitoring the haze spatio-temporal distribution with a higher precision by remote sensing technology is the basis to predict the haze spreading and then warn its influence early,which has been a hot issue in the research field of atmospheric environment.The corresponding progress in haze monitoring by remote sensing technology at home and abroad were summarized in this paper.The main methods of haze monitoring can be classified intothree categories:the image transformation from multi-channels and construction of haze indices based on the spectral differences,monitoring directly by the aerosol optical depth and indirectly by estimating the content of atmospheric particulates,and monitoring vertical and horizontal distribution features from multi-sources remotely sensed data combined the passive optical sensors with the active laser radars.Then the existing problems and difficulties were also discussed.In the future,on the basis of developing three-dimensional haze monitoring technology by multi-sources remote sensing methods,research on haze simulation and prediction with high spatio-temporal resolution as well as its practical application need to be further strengthened.
Key words: Haze    Aerosol    Remote sensing    Monitoring
收稿日期: 2018-05-31 出版日期: 2019-04-02
ZTFLH:  X513  
基金资助: 国家自然科学基金项目(41571418、41401471),江苏省“青蓝工程”项目共同资助。
作者简介: 向嘉敏(1994-),女,湖南怀化人,硕士研究生,主要从事大气环境遥感研究。E-mail:1764870262@qq.com。
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引用本文:

向嘉敏, 祝善友, 张桂欣, 刘祎, 周洋. 灰霾遥感监测研究进展[J]. 遥感技术与应用, 2019, 34(1): 12-20.

Xiang Jiamin, Zhu Shanyou, Zhang Guixin, Liu Yi, Zhou Yang. Progress in Haze Monitoring by Remote Sensing Technology. Remote Sensing Technology and Application, 2019, 34(1): 12-20.

链接本文:

http://www.rsta.ac.cn/CN/10.11873/j.issn.1004-0323.2019.1.0012        http://www.rsta.ac.cn/CN/Y2019/V34/I1/12

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