Zheng W, Chen J, Yan H, Liu C and Tang S H. 2020. Global fire monitoring products of FY-3D/MERSI-II and their applications. Journal of Remote Sensing(Chinese). 24(5): 521-530
Zheng W, Chen J, Yan H, Liu C and Tang S H. 2020. Global fire monitoring products of FY-3D/MERSI-II and their applications. Journal of Remote Sensing(Chinese). 24(5): 521-530 DOI: 10.11834/jrs.20209177.
Global fire monitoring products of FY-3D/MERSI-II and their applications
Fengyun/Medium Resolution Spectral Imager-II (FY-3D/MERSI-II) global fire products can be used in real-time monitoring of forest and grassland fires
straw burning
and other biomass burning worldwide. This paper discusses FY-3D/MERSI-II global fire products
including the methods
product contents
and applications.
Fire spot discerning considers several conditions
such as cloud contamination
cloud edge
and thin cloud influences. Subpixel size evaluation uses a single channel with fire temperature set to 750 K. Fire intensity level is established on the basis of Fire Radiative Power (FRP) and is calculated using sub-pixel size and fire temperature. Daily global fire products with 0.01° spatial resolution are generated
and global monthly fire spot density maps with 0.25°×0.25° grid points are produced monthly on the basis of the results of automatic global fire spot discerning.
We selected the results in several typical areas
including Northeast China
Russian Far East
South America
and South-central Africa
from May to June 2018
and compared them using interactive fire spot discerning as the truth to verify the accuracy of automatic fire spot discerning in Fengyun/Medium Resolution Spectral Imager-II (FY-3D/MERSI-II) global fire monitoring. The statistical analysis results show that the accuracy of the automatic fire monitoring algorithm reaches more than 95. The daily FY-3D/MERSI-II global fire products include fire location
subpixel size (in hectare
temperature
fire intensity level
and FRP. Two application examples are introduced
where the first example is for monitoring the huge wildfire that occurred in California
US in 2018
and the second example is for analyzing the temporal and spatial changing features of wildfire around the Arctic Pole circle in the summer of 2018.
The FY-3 global fire spot discerning algorithm considers various weather and underlying conditions
making it suitable for fire monitoring in different regions of the world. The results show that the proposed algorithm has good accuracy. The rich detection information and global observation ability of FY-3 meteorological satellite reach the international advanced level of forest and grassland fire monitoring. FY-3 global fire product can be used for disaster prevention and mitigation
climate change
and ecological environment protection worldwide. In future studies
we will develop methods
such as burned area assessment and estimation of biomass carbon emissions
smoke impact prediction
and forest and grassland fire risk warning. FY-3 meteorological satellite will play a huge role in global wildfire monitoring and early warning and prediction services.
关键词
遥感风云三号火点监测中红外全球范围日和月产品
Keywords
remote sensingFY-3fire monitoringmiddle infrared channelglobaldaily and monthly products
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