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Forest Fire Susceptibility and Risk Mapping Using Social/Infrastructural Vulnerability and Environmental Variables

机译:使用社交/基础设施漏洞和环境变量的森林火灾易感性和风险映射

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摘要

Forests fires in northern Iran have always been common, but the number of forest fires has been growing over the last decade. It is believed, but not proven, that this growth can be attributed to the increasing temperatures and droughts. In general, the vulnerability to forest fire depends on infrastructural and social factors whereby the latter determine where and to what extent people and their properties are affected. In this paper, a forest fire susceptibility index and a social/infrastructural vulnerability index were developed using a machine learning (ML) method and a geographic information system multi-criteria decision making (GIS-MCDM), respectively. First, a forest fire inventory database was created from an extensive field survey and the moderate resolution imaging spectroradiometer (MODIS) thermal anomalies product for 2012 to 2017. A forest fire susceptibility map was generated using 16 environmental variables and a k-fold cross-validation (CV) approach. The infrastructural vulnerability index was derived with emphasis on different types of construction and land use, such as residential, industrial, and recreation areas. This dataset also incorporated social vulnerability indicators, e.g., population, age, gender, and family information. Then, GIS-MCDM was used to assess risk areas considering the forest fire susceptibility and the social/infrastructural vulnerability maps. As a result, most high fire susceptibility areas exhibit minor social/infrastructural vulnerability. The resulting forest fire risk map reveals that 729.61 ha, which is almost 1.14% of the study areas, is categorized in the high forest fire risk class. The methodology is transferable to other regions by localisation of the input data and the social indicators and contributes to forest fire mitigation and prevention planning.
机译:伊朗北部的森林火灾一直很常见,但森林火灾人数在过去十年中一直在增长。据信,但没有被证明,这种增长可以归因于越来越多的温度和干旱。一般而言,森林火灾的脆弱性取决于基础设施和社会因素,后者决定了人们和其性质受到影响的地方和地点。在本文中,使用机器学习(ML)方法和地理信息系统多标准决策(GIS-MCDM)开发了森林火灾敏感性指数和社交/基础设施漏洞指数。首先,从广泛的现场调查和适度分辨率成像光谱仪(MODIS)热异常产品为2012到2017创建了森林火灾库存数据库。使用16个环境变量和k倍交叉验证产生森林火灾敏感性图(CV)方法。基础设施漏洞指数源于强调不同类型的建筑和土地使用,如住宅,工业和娱乐区。此数据集还包含社交漏洞指标,例如人口,年龄,性别和家庭信息。然后,GIS-MCDM用于评估考虑森林火灾易感性和社交/基础设施漏洞地图的风险区域。因此,大多数高火敏感区域表现出较小的社交/基础设施漏洞。由此产生的森林火灾风险地图显示,729.61公顷,几乎是研究领域的1.14%,分类为高森林火灾风险课程。该方法通过本地化输入数据和社会指标,并有助于森林消防缓解和预防规划来转移到其他地区。

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