喜马拉雅州森林火灾过火面积的多传感器卫星数据模糊综合提取

S. Mamgain, H. C. Karnatak, A. Roy
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引用次数: 0

摘要

摘要森林火灾造成的烧伤面积评估是评估生物多样性损失程度的一个重要方面,在地理空间技术的帮助下,即使在丘陵和人迹罕至的地区,这也是可行的。但卫星数据也有一些局限性,因为它将未燃烧区域错误地归类为燃烧区域,从而增加了佣金误差。为了减少这一委托误差,本研究试图整合多传感器卫星数据,以表征和提取北阿坎德邦的森林火灾燃烧区,北阿坎德邦是喜马拉雅西部一个火灾多发的丘陵州。Landsat-8和Sentinel-2光学数据集已用于计算11个植被/烧伤指数,以确定2022年火灾季节(2月至6月)的烧伤斑块。这些植被/燃烧指数是根据Landsat-8和Sentinel-2数据集计算的,并使用模糊逻辑建模进行集成,以获得表征的森林火灾燃烧区域地图。已经使用中分辨率成像光谱仪(MODIS)和可见红外成像辐射计套件(VIIRS)活动火点对Landsat-8和Sentinel-2的燃烧区域特征图进行了精度评估,并结合了两个传感器的指数。利用Landsat-8进行的火烧区模糊地图的准确率为66.25%,Sentinel-2的准确率为59.79%,两个传感器的模糊烧伤面积图的综合准确率最高,为79.66%。这些区域特征烧伤面积的信息可以帮助森林管理者识别火灾季节需要关注的高度脆弱区域,以防止该区域的自然资源、生命和财产损失。
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FOREST FIRE BURNT AREA EXTRACTION USING FUZZY INTEGRATION OF MULTI-SENSOR SATELLITE DATA FOR THE HIMALAYAN STATE
Abstract. Burnt area assessment due to forest fires is an important aspect to estimate the extent of loss of biodiversity which has become feasible even in hilly and inaccessible areas with the help of geospatial technologies. But satellite data also has some limitations as it increases commission error by misclassifying non-burnt areas as burnt areas. To reduce this commission error, present study has attempted to integrate multi-sensor satellite data to characterize and extract forest fire burnt areas in Uttarakhand which is a fire prone hilly state in Western Himalaya. Landsat-8 and Sentinel-2 optical datasets have been used to calculate eleven vegetation/burn indices to identify burn patches for fire season of 2022 (February to June). These vegetation/burn indices have been calculated from Landsat-8 and Sentinel-2 datasets and integrated using Fuzzy Logic Modelling to get characterized forest fire burnt area maps. Accuracy assessment has been done using Moderate Resolution Imaging Spectroradiometer (MODIS) and Visible Infrared Imaging Radiometer Suite (VIIRS) active fire points for the characterized map of burnt area by Landsat-8, Sentinel-2 and combining indices from both sensors. The fuzzy map of burnt area using Landsat-8 showed the accuracy of 66.25%, while Sentinel-2 showed accuracy of 59.79% and the integration of fuzzy burnt area maps of both sensors showed the highest accuracy of 79.66%. This information of characterized burnt areas of a region can help forest managers to identify high vulnerable areas to focus on during the fire season to prevent the losses to natural resources, life and property in the region.
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CiteScore
1.70
自引率
0.00%
发文量
949
审稿时长
16 weeks
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