Determination of Fire Extent in Forest Zones Using Remote Sensing Data Case Study: Golestan Province of Iran

A. Karimi, Meysam Madadi, Sara Abdollahi, K. Ostad‑Ali‑Askari, S. Eslamian, V. Singh
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Abstract

Fire is one of the most serious hazards, which causes many economic, social, ecological, and human damages every year in the world. Fire in forests and natural ecosystems destroys wood, regeneration, forest vegetation, as well as soil erosion and forest regeneration problems (due to the dryness of the weather and the weakness of the soil). Awareness of the extent of the zones that have been fired is important for forest management. On the other hand, the difficulty of fieldwork due to the high cost and inaccessible roads, etc. reveals the need for using remote sensing science to solve this problem. In this research, MODIS satellite images were used to detect and determine the fire extent of Golestan province forests in northern Iran. MID13q1 and MOD13q1 images were used to detect the normal conditions of the environment. The 15-year time series data were provided for the NDVI and NDMI indicators in 2000-2015. Then, the behavior of indicators in the fire zone was studied on the day after the fire. The burned zones by the fire were specified by determining the appropriate threshold and then, they were compared to long-term normals. In the NDMI and NDVI indicators, the mean of the numeric value threshold limit for determining the burnt pixels was respectively 1.865 and 0.743 of the reduction in their normal long-term period, which are selected as fire pixels. The results showed that the NDMI index could determine the extent of the burned zone with the accuracy of 95.15%.
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利用遥感数据确定林区火情——以伊朗戈列斯坦省为例
火灾是最严重的灾害之一,每年在世界范围内造成许多经济、社会、生态和人类损失。森林和自然生态系统中的火灾破坏木材、再生、森林植被,以及土壤侵蚀和森林再生问题(由于天气干燥和土壤薄弱)。了解被烧毁地区的范围对森林管理很重要。另一方面,由于成本高,道路不通等原因,野外工作的困难揭示了利用遥感科学解决这一问题的必要性。在本研究中,利用MODIS卫星图像探测和确定伊朗北部Golestan省森林的火灾范围。MID13q1和MOD13q1图像用于检测环境的正常情况。提供了2000-2015年NDVI和NDMI指标的15年时间序列数据。然后,在火灾发生后的第二天,研究了火灾区域内指标的行为。通过确定适当的阈值来指定火灾烧伤区域,然后将其与长期正常值进行比较。在NDMI和NDVI指标中,确定燃烧像元的数值阈值限值的平均值分别为其正常长期减少量的1.865和0.743,选取为火灾像元。结果表明,NDMI指数可确定烧伤区范围,准确率为95.15%。
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