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The Zoning of Forest Fire Potential of Gulestan Province Forests Using Granular Computing and MODIS Images

机译:使用颗粒计算和MODIS图像分区墨西哥省森林森林森林火灾潜力

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There are many vegetation in Iran. This is because of extent of Iran and its width. One of these vegetation is forest vegetation most prevalent in Northern provinces named Guilan, Mazandaran, Gulestan, Ardebil as well as East Azerbaijan. These forests are always threatened by natural forest fires so much so that there have been reports of tens of fires in recent years. Forest fires are one of the major environmental as well as economic, social and security concerns in the world causing much damages. According to climatology, forest fires are one of the important factors in the formation and dispersion of vegetation. Also, regarding the environment, forest fires cause the emission of considerable amounts of greenhouse gases, smoke and dust into the atmosphere which in turn causes the earth temperature to rise up and are unhealthy to humans, animals and vegetation. In agriculture droughts are the usual side effects of these fires. The causes of forest fires could be categorized as either Human or Natural Causes. Naturally, it is impossible to completely contain forest fires; however, areas with high potentials of fire could be designated and analysed to decrease the risk of fires. The zoning of forest fire potential is a multi-criteria problem always accompanied by inherent uncertainty like other multi-criteria problems. So far, various methods and algorithm for zoning hazardous areas via Remote Sensing (RS) and Geospatial Information System (GIS) have been offered. This paper aims at zoning forest fire potential of Gulestan Province of Iran forests utilizing Remote Sensing, Geospatial Information System, meteorological data, MODIS images and granular computing method. Granular computing is part of granular mathematical and one way of solving multi-criteria problems such forest fire potential zoning supervised by one expert or some experts, and it offers rules for classification with the least inconsistencies. On the basis of the experts' opinion, 6 determinative criterias contributing to forest fires have been designated as follows: vegetation (NDVI), slope, aspect, temperature, humidity and proximity to roadways. By applying these variables on several tentatively selected areas and formation information tables and producing granular decision tree and extraction of rules, the zoning rules (for the areas in question) were extracted. According to them the zoning of the entire area has been conducted. The zoned areas have been classified into 5 categories: high hazard, medium hazard (high), medium hazard (low), low hazard (high), low hazard (low). According to the map, the zoning of most of the areas fall into the low hazard (high) class while the least number of areas have been classified as low hazard (low). Comparing the forest fires in these regions in 2010 with the MODIS data base for forest fires, it is concluded that areas with high hazards of forest fire have been classified with a 64 percent precision. In other word 64 percent of pixels that are in high hazard classification are classified according to MODIS data base. Using this method we obtain a good range of Perception. Manager will reduce forest fire concern using precautionary proceeding on hazardous area.
机译:伊朗有很多植被。这是因为伊朗的程度及其宽度。这些植被之一是森林植被最普遍的北部省份,名为Guilan,Mazandaran,Gulestan,Ardebil以及东阿塞拜疆。这些森林总是受到天然森林的威胁,这么多爆发,以便近年来有几十次火灾报告。森林火灾是世界上主要的环境和经济,社会和安全问题之一,导致大量损害。根据气候学,森林火灾是植被形成和分散的重要因素之一。此外,关于环境,森林火灾导致将大量温室气体,烟雾和灰尘的排放到大气中,这反过来导致地球温度上升,对人类,动物和植被不健康。在农业中,干旱是这些火灾的通常副作用。森林火灾的原因可以作为人类或自然原因分类。当然,不可能完全含有森林火灾;然而,可以指定和分析具有高潜力潜力的区域以降低火灾的风险。森林火灾潜力的分区是一个多标准问题,始终伴随着其他多标准问题的固有不确定性。到目前为止,已经提供了通过遥感(RS)和地理空间信息系统(GIS)分区危险区域的各种方法和算法。本文旨在利用遥感,地理空间信息系统,气象数据,MODIS图像和粒度计算方法分区墨芦兰省墨水森林火灾潜力。粒度计算是粒度数学的一部分,解决了一个专家或一些专家监督的森林火灾潜在分区的多标准问题的一种方式,它提供了与最低不一致的分类规则。在专家的意见的基础上,有6种关于森林火灾的确定标准已被指定如下:植被(NDVI),坡度,方面,温度,湿度和邻近的道路。通过将这些变量应用于几个暂定选择的区域和地层信息表以及产生粒度决策树和提取规则,提取分区规则(用于所讨论的区域)。根据他们,已经进行了整个区域的分区。分区区域已被分为5类:高危险,中等危害(高),中等危害(低),低危险(高),低危险(低)。根据地图,大多数地区的分区落入低危险(高)阶级,而最少数量的区域被归类为低危险(低)。将森林火灾与森林火灾的MODIS数据库进行比较,得出结论,森林火灾危害的地区已被归类为64%的精度。换句话说,根据MODIS数据库,对高危险分类的64%的像素分类。使用这种方法,我们获得了良好的感知范围。经理将在危险区域上使用预防措施进行森林火灾问题。

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