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Remote Sensing for Land & Resources    2019, Vol. 31 Issue (4) : 151-158     DOI: 10.6046/gtzyyg.2019.04.20
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Study of remote sensing atmosphere index of Fujian Province
Kailin LI1, Chungui ZHANG2(), Kuo LIAO2, Lichun LI2, Hong WANG2
1. Fujian Meteorological Information Center, Fuzhou, 350001, China
2. Fujian Meteorological Institute, Fuzhou, 350001, China
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Abstract  

Based on the Himawari-8 Level3 aerosol optical depth data (Once per hour) and NDVI from MOIDS data, the authors constructed a new RSAI, which can be used to analyzed the seasonal variation of Fujian Province. The results indicate that AOD along the coast line of Fujian Province stand high all the seasons, while the AOD value reaches the bottom in western Fujian. In autumn, the AOD value is the lowest; furthermore, AOD values of Fujian Province are lower than those of any other provinces in China’s mainland. Contrary to things of Yangtze River Delta, Pearl River Delta and Nanchang urban agglomerations, in such main cities of Fujian as Fuzhou, Xiamen and Quanzhou, the vegetation coverage is pretty good. As a result, according to the new construction RSAI, Fujian ranks above ‘fresh’ level throughout all the seasons, the RSAI statistics are higher than those of other neighborhood in China’s mainland, implying privilege ecosystems of Fujian Province. These data show that Fujian Province is of good air quality, high atmospheric transparency, good vegetation coverage and high-level RSAI, as shown by comprehensively analysis of the three indexes. It is therefore held that Fujian Province is favorable not only for tourism but also for improving health, poverty alleviation, reducing pollution and improving the environment.

Keywords Himawari-8      MODIS      RSAI      aerosol optical depth     
:  P407  
Corresponding Authors: Chungui ZHANG     E-mail: fjygwork@163.com
Issue Date: 03 December 2019
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Kailin LI
Chungui ZHANG
Kuo LIAO
Lichun LI
Hong WANG
Cite this article:   
Kailin LI,Chungui ZHANG,Kuo LIAO, et al. Study of remote sensing atmosphere index of Fujian Province[J]. Remote Sensing for Land & Resources, 2019, 31(4): 151-158.
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https://www.gtzyyg.com/EN/10.6046/gtzyyg.2019.04.20     OR     https://www.gtzyyg.com/EN/Y2019/V31/I4/151
RSAI值 空气清新等级 对健康的影响
RSAI>9 非常清新 具有治疗和康复的功效
(8,9] 清新 减少疾病传染
(7,8] 较清新 增加人体免疫力
(5,7] 一般 维持人体健康基本需要
RSAI≤5 不清新 易诱发各种疾病和生理障碍
Tab.1  Grinding standard of RSAI
Fig.1  Spatial distribution of seasonal mean AOD in Fujian Province
Fig.2  Spatial distribution of seasonal mean NDVI in Fujian Province
Fig.3  Spatial distribution of seasonal mean RSAI in Fujian Province
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