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Logistic regression models for human-caused wildfire risk estimation: analysing the effect of the spatial accuracy in fire occurrence data

机译:人为引起的野火风险估算的逻辑回归模型:分析火灾发生数据中空间准确性的影响

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About 90% of the wildland fires occurred in Southern Europe are caused by human activities. In spite of these figures, the human factor hardly ever appears in the definition of operational fire risk systems due to the difficulty of characterising it.This paper describes two spatially explicit models that predict the probability of fire occurrence due to human causes for their integration into a comprehensive fire risk-mapping methodology. A logistic regression technique at 1 x 1 km grid resolution has been used to obtain these models in the region of Madrid, a highly populated area in the centre of Spain. Socio-economic data were used as predictive variables to spatially represent anthropogenic factors related to fire risk. Historical fire occurrence from 2000 to 2005 was used as the response variable. In order to analyse the effects of the spatial accuracy of the response variable on the model performance (significant variables and classification accuracy), two different models were defined. In the first model, fire ignition points (x, y coordinates) were used as response variable. This model was compared with another one (Kernel model) where the response variable was the density of ignition points and was obtained through a kernel density interpolation technique from fire ignition points randomly located within a 10 x 10 km grid, which is the standard spatial reference unit established by the SpanishMinistry of Environment, Rural and Marine Affairs to report fire location in the national official statistics. Validation of both models was accomplished using an independent set of fire ignition points (years 2006-2007). For the validation, we used thearea under the curve (AUC) obtained by a receiver-operating system. The first model performs slightly better with a value of AUC of 0.70 as opposed to 0.67 for the Kernel model. Wildland-urban interface was selected by both models with high relative importance.
机译:南欧大约90%的荒地火灾是由人类活动引起的。尽管有这些数字,但由于难以对人为因素进行描述,因此在操作火灾风险系统的定义中几乎没有人为因素。本文描述了两个空间上显式的模型,这些模型可预测由于人为因素将其整合到火灾中而引起火灾的可能性全面的火灾风险映射方法。已经使用1 x 1 km网格分辨率的logistic回归技术在马德里地区(西班牙中部人口稠密的地区)获得了这些模型。将社会经济数据用作预测变量,以空间表示与火灾风险相关的人为因素。使用2000年至2005年的历史火灾发生作为响应变量。为了分析响应变量的空间准确性对模型性能(重要变量和分类准确性)的影响,定义了两个不同的模型。在第一个模型中,将着火点(x,y坐标)用作响应变量。将该模型与另一个模型(内核模型)进行了比较,该模型的响应变量是点火点的密度,并且是通过核密度插值技术从随机位于10 x 10 km网格内的火点火点获得的,该点火点是标准空间参考西班牙环境,农村和海洋事务部设立的部门,负责在国家官方统计数据中报告火灾地点。使用一组独立的着火点(2006-2007年)完成了两个模型的验证。为了进行验证,我们使用了由接收方操作系统获得的曲线下面积(AUC)。第一个模型的AUC值为0.70,而内核模型的值为0.67,性能稍好。两个模型都选择了具有较高相对重要性的Wildland-urban界面。

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