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A Bayesian modeling of wildfire probability in the Zagros Mountains, Iran

机译:伊朗Zagros Mountains野火概率的贝叶斯建模

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The preparation of probability distribution maps is the first important step in risk assessment and wildfire management. Here we employed Weights-of-Evidence (WOE) Bayesian modeling to investigate the spatial relationship between historical fire events in the Chaharmahal-Bakhtiari Province of Iran, using a wide range of binary predictor variables (i.e., presence or absence of a variable characteristic or condition) that represent topography, climate, and human activities. Model results were used to produce distribution maps of wildfire probability. Our modeling approach is based on the assumption that the probabilities reflect the observed proportions of the total landscape area occupied by the corresponding events (i.e., fire incident or no fire) and conditions (i.e., classes) of predictor variables. To assess the effect of each predictor variable on model outputs, we excluded each variable in turn during calculations. The results were validated and compared by the receiver operating characteristic (ROC) using both success rate and prediction rate curves. Seventy percent of fire events were used for the former, while the remainder was used for the latter. The validation results showed that the area under the curves (AUC) for success and prediction rates of the model that included all thirteen predictor variables that represent topography, climate, and human influences were 84.6 and 80.4%, respectively. The highest AUC for success and prediction rates (86.8 and 84.6%) were achieved when the altitude variable was excluded from the analysis. We found slightly decreased AUC values when the slope-aspect and, proximity to settlements variables were excluded. These findings clearly demonstrate that the probability of a fire is strongly dependent upon the topographic characteristics of landscapes and, perhaps more importantly, human infrastructure and associated human activities. The results from this study may be useful for land use planning, decision-making for wildfire management, and the allocation of fire resources prior to the start of the main fire season. (C) 2017 Elsevier B.V. All rights reserved.
机译:概率分布图的制备是风险评估和野火管理的第一个重要步骤。在这里,我们使用权重 - 证据(WOE)贝叶斯建模来调查伊朗Chaharmahal-Bakhtiari省的历史消防事件之间的空间关系(即,存在或不存在变量或不存在代表地形,气候和人类活动的条件。模型结果用于产生野火概率的分布图。我们的建模方法基于假设概率反映了相应事件(即火灾事件或无火)和条件(即,类)的预测变量(即类)占据的总景观区域的观察到的比例。为了评估每个预测器变量对模型输出的影响,在计算期间,我们在每个变量中排除了每个变量。使用成功率和预测速率曲线,通过接收器操作特征(ROC)进行验证和比较。百分之七十的火灾事件用于前者,而其余部分用于后者。验证结果表明,其中包括代表地形,气候和人体影响的所有十三个预测变量的模型的成功和预测率下的曲线(AUC)的区域分别为84.6%和80.4%。当从分析中排除高度变量时,实现了成功和预测率的最高AUC(86.8和84.6%)。当斜率方面和邻近到达定居点变量时,我们发现AUC值略微降低。这些调查结果清楚地表明火灾的概率强烈依赖于景观的地形特征,也许更重要的是,人类基础设施和相关的人类活动。本研究的结果可能对土地利用规划,野火管理决策,以及在主要火灾季节开始之前的消防资源分配。 (c)2017 Elsevier B.v.保留所有权利。

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