Identification and characterization of spatio-temporal hotspots of forest fires in South Asia

被引:0
|
作者
C. Sudhakar Reddy
Natalia Grace Bird
S. Sreelakshmi
T. Maya Manikandan
Mahbooba Asra
P. Hari Krishna
C. S. Jha
P. V. N. Rao
P. G. Diwakar
机构
[1] National Remote Sensing Centre,Centre for Spatial Information Technology, Institute of Science and Technology
[2] Indian Space Research Organisation,undefined
[3] Jawaharlal Nehru Technological University,undefined
[4] Indian Institute of Information Technology and Management,undefined
[5] Arid Zone Regional Centre,undefined
[6] Botanical Survey of India,undefined
[7] Indian Space Research Organisation,undefined
[8] Antariksh Bhavan,undefined
[9] New BEL Road,undefined
来源
Environmental Monitoring and Assessment | 2019年 / 191卷
关键词
Forest; Frequency; Density; Emerging; Hotspots, MODIS;
D O I
暂无
中图分类号
学科分类号
摘要
Forest fire is considered as one of the major threats to global biodiversity and a significant source of greenhouse gas emissions. Rising temperatures, weather conditions, and topography promote the incidences of fire due to human ignition in South Asia. Because of its synoptic, multi-spectral, and multi-temporal nature, remote sensing data can be a state of art technology for forest fire management. This study focuses on the spatio-temporal patterns of forest fires and identifying hotspots using the novel geospatial technique “emerging hotspot analysis tool” in South Asia. Daily MODIS active fire locations data of 15 years (2003–2017) has been aggregated in order to characterize fire frequency, fire density, and hotspots. A total of 522,348 active fire points have been used to analyze risk of fires across the forest types. Maximum number of forest fires in South Asia was occurring during the January to May. Spatial analysis identified areas of frequent burning and high fire density in South Asian countries. In South Asia, 51% of forest grid cells were affected by fires in 15 years. Highest number of fire incidences was recorded in tropical moist deciduous forest and tropical dry deciduous forest. The emerging hotspots analysis indicates prevalence of sporadic hotspots, followed by historical hotspots, consecutive hotspots, and persistent hotspots in South Asia. Of the seven South Asian countries, Bangladesh has highest emerging hotspot area (34.2%) in forests, followed by 32.2% in India and 29.5% in Nepal. Study results offer critical insights in delineation of fire vulnerable forest landscapes which will stand as a valuable input for strengthening management of fires in South Asia.
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