{"title":"基于近实时卫星数据集的森林火险指数自动化","authors":"K. Babu, A. Roy","doi":"10.3808/jeil.201900015","DOIUrl":null,"url":null,"abstract":"Forest fire is a major ecological disaster, which has economic, social and environmental impacts on humans and also causes the loss of biodiversity. Forest officials issue the warnings to the public on the basis of fire danger index classes. There is no fire danger index for the country India due to the sparsely distributed meteorological stations. In this study, we have made an attempt to integrate both the Static and Dynamic fire danger indices and also used the near real time data sets that can be available for download through Earthdata website after one hour of the satellite overpass and also automated the entire procedure. SFDI is a constant over the study area, computed from the MODIS Land cover type yearly L3 global 500 m SIN grid (MCD12Q1) and ASTER GDEM datasets. In this study, DFDI has been calculated from the Near Real Time (NRT) Level 2 MODIS Terra Land Surface Temperature datasets (MOD11_L2) and MODIS TERRA NRT surface reflectance dataset MOD09. Dynamic danger index has been developed from three parameters i.e. Potential surface temperature, Perpendicular Moisture Index and Modified Normalized Difference Fire Index (MNDFI). Finally, The Forest Fire Danger Index (FFDI) has been developed from the static and dynamic fire danger indices by the additive model and the overall accuracy was ranging from 86% to 95% and AUC values ranging from 0.81 to 0.91 during the major fire episode of 2016. Thus, the FFDI has been useful to assess the fire danger accurately over the study area and can be useful anywhere, where the meteorological stations are un-available. The procedure of calculating the DFDI and FFDI has been automated in R studio environment in near real time and therefore, the fire danger maps can be disseminated to fire officials in near real time for the quick actions to suppress the fire activities.","PeriodicalId":143718,"journal":{"name":"Journal of Environmental Informatics Letters","volume":"59 1","pages":"0"},"PeriodicalIF":0.0000,"publicationDate":"2019-10-10","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"1","resultStr":"{\"title\":\"Automation of Forest Fire Danger Index from the Near Real Time Satellite Datasets\",\"authors\":\"K. Babu, A. Roy\",\"doi\":\"10.3808/jeil.201900015\",\"DOIUrl\":null,\"url\":null,\"abstract\":\"Forest fire is a major ecological disaster, which has economic, social and environmental impacts on humans and also causes the loss of biodiversity. 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Dynamic danger index has been developed from three parameters i.e. Potential surface temperature, Perpendicular Moisture Index and Modified Normalized Difference Fire Index (MNDFI). Finally, The Forest Fire Danger Index (FFDI) has been developed from the static and dynamic fire danger indices by the additive model and the overall accuracy was ranging from 86% to 95% and AUC values ranging from 0.81 to 0.91 during the major fire episode of 2016. Thus, the FFDI has been useful to assess the fire danger accurately over the study area and can be useful anywhere, where the meteorological stations are un-available. 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引用次数: 1
摘要
森林火灾是一种重大的生态灾害,对人类造成经济、社会和环境影响,也造成生物多样性的丧失。森林官员根据火灾危险指数等级向公众发布警告。由于气象站分布稀疏,印度没有火灾危险指数。在这项研究中,我们尝试将静态和动态火灾危险指数结合起来,并使用了卫星立交桥一小时后可通过Earthdata网站下载的近实时数据集,并实现了整个过程的自动化。SFDI是研究区域的一个常数,由MODIS土地覆盖类型每年L3全球500 m SIN网格(MCD12Q1)和ASTER GDEM数据集计算得出。本研究利用近实时(NRT) 2级MODIS Terra地表温度数据集(MOD11_L2)和MODIS Terra NRT地表反射率数据集MOD09计算DFDI。动态危险指数由潜在地表温度、垂直湿度指数和修正归一化差分火灾指数(MNDFI)三个参数组成。最后,采用加性模型将静态火险指数和动态火险指数综合起来,得到了森林火险指数(FFDI),整体精度为86% ~ 95%,AUC值为0.81 ~ 0.91。因此,FFDI在准确评估研究地区的火灾危险方面是有用的,在没有气象站的任何地方都可以使用。计算DFDI和FFDI的过程已经在R studio环境中实现了近乎实时的自动化,因此,火灾危险地图可以近乎实时地分发给消防官员,以便快速采取行动扑灭火灾活动。
Automation of Forest Fire Danger Index from the Near Real Time Satellite Datasets
Forest fire is a major ecological disaster, which has economic, social and environmental impacts on humans and also causes the loss of biodiversity. Forest officials issue the warnings to the public on the basis of fire danger index classes. There is no fire danger index for the country India due to the sparsely distributed meteorological stations. In this study, we have made an attempt to integrate both the Static and Dynamic fire danger indices and also used the near real time data sets that can be available for download through Earthdata website after one hour of the satellite overpass and also automated the entire procedure. SFDI is a constant over the study area, computed from the MODIS Land cover type yearly L3 global 500 m SIN grid (MCD12Q1) and ASTER GDEM datasets. In this study, DFDI has been calculated from the Near Real Time (NRT) Level 2 MODIS Terra Land Surface Temperature datasets (MOD11_L2) and MODIS TERRA NRT surface reflectance dataset MOD09. Dynamic danger index has been developed from three parameters i.e. Potential surface temperature, Perpendicular Moisture Index and Modified Normalized Difference Fire Index (MNDFI). Finally, The Forest Fire Danger Index (FFDI) has been developed from the static and dynamic fire danger indices by the additive model and the overall accuracy was ranging from 86% to 95% and AUC values ranging from 0.81 to 0.91 during the major fire episode of 2016. Thus, the FFDI has been useful to assess the fire danger accurately over the study area and can be useful anywhere, where the meteorological stations are un-available. The procedure of calculating the DFDI and FFDI has been automated in R studio environment in near real time and therefore, the fire danger maps can be disseminated to fire officials in near real time for the quick actions to suppress the fire activities.