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Predicting forest fire kernel density at multiple scales with geographically weighted regression in Mexico

机译:在墨西哥地理上加权回归的多尺度预测森林消防核密度

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摘要

Identifying the relative importance of human and environmental drivers on fire occurrence in different regions and scales is critical for a sound fire management. Nevertheless, studies analyzing fire occurrence spatial patterns at multiple scales, covering the regional to national levels at multiple spatial resolutions, both in the fire occurrence drivers and in fire density, are very scarce. Furthermore, there is a scarcity of studies that analyze the spatial stationarity in the relationships of fire occurrence and its drivers at multiple scales. The current study aimed at predicting the spatial patterns of fire occurrence at regional and national levels in Mexico, utilizing geographically weighted regression (GWR) to predict fire density, calculated with two different approaches -regular grid density and kernel density - at spatial resolutions from 5 to 50 km, both in the dependent and in the independent human and environmental candidate variables. A better performance of GWR, both in goodness of fit and residual correlation reduction, was observed for prediction of kernel density as opposed to regular grid density. Our study is, to our best knowledge, the first study utilizing GWR to predict fire kernel density, and the first study to utilize GWR considering multiple scales, both in the dependent and independent variables. GWR models goodness of fit increased with fire kernel density search radius (bandwidths), but saturation in predictive capacity was apparent at 15-20 km for most regions. This suggests that this scale has a good potential for operational use in fire prevention and suppression decision-making as a compromise between predictive capability and spatial detail in fire occurrence predictions. This result might be a consequence of the specific spatial patterns of fire occurrence in Mexico and should be analyzed in future studies replicating this methodology elsewhere.
机译:确定人类和环境驱动因素对不同地区和尺度的火灾发生的相对重要性对于声音火灾管理至关重要。然而,分析在多种尺度的消防空间模式的研究,在火灾发生驱动因素和火密度下,在多个空间分辨率下覆盖区域到国家水平,非常稀缺。此外,缺乏研究,可以在多种尺度下分析火灾发生和驱动器关系中的空间契约性。目前的研究旨在预测墨西哥地区和国家水平的火灾发生的空间模式,利用地理加权回归(GWR)来预测火密度,用两种不同的方法计算 - 正常的栅极密度和核密度 - 以5的空间分辨率在依赖和独立的人类和环境候选变量中达到50公里。观察到符合符合良好和残余相关性的GWR的更好性能,以预测核密度而不是常规网格密度。我们的研究是,为了我们的最佳知识,利用GWR预测消防核密度的第一次研究,以及利用考虑多个尺度的GWR,在依赖性和独立变量中使用GWR。 GWR模型适合的良好与消防核密度搜索半径(带宽)增加,但在大多数地区的15-20公里处,预测容量的饱和度很明显。这表明,这种规模具有在防火和抑制决策中运行使用的潜力,这是在火灾发生预测中的预测能力和空间细节之间的折衷。这一结果可能是墨西哥火灾发生的特定空间模式的结果,在其他地方复制这种方法的未来研究中应该分析。

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  • 来源
    《The Science of the Total Environment》 |2020年第may20期|137313.1-137313.14|共14页
  • 作者单位

    Facultad de Ciencias Forestries Universidad Juarez del Estado de Durango Rio Papaloapan y Blvd. Durango S/N Col. Valle del Sur 34120 Durango Mexico;

    Facultad de Ciencias Forestries Universidad Juarez del Estado de Durango Rio Papaloapan y Blvd. Durango S/N Col. Valle del Sur 34120 Durango Mexico;

    Facultad de Ciencias Forestries Universidad Juarez del Estado de Durango Rio Papaloapan y Blvd. Durango S/N Col. Valle del Sur 34120 Durango Mexico;

    Institute de Silvkultura e Industria de la madera Universidad Juarez del Estado de Durango Boulevard del Guadiana 501 Ciudad Universitaria Torre de Investigation 34120 Durango Mexico;

    Facultad de Ciencias Forestries Universidad Juarez del Estado de Durango Rio Papaloapan y Blvd. Durango S/N Col. Valle del Sur 34120 Durango Mexico;

    Institute de Silvkultura e Industria de la madera Universidad Juarez del Estado de Durango Boulevard del Guadiana 501 Ciudad Universitaria Torre de Investigation 34120 Durango Mexico;

    Facultad de Ciencias Forestries Universidad Juarez del Estado de Durango Rio Papaloapan y Blvd. Durango S/N Col. Valle del Sur 34120 Durango Mexico;

    Division de Ciencias Forestales Universidad Autdnoma Chapingo Km 38.5 carretera Mexico - Texcoco 56230 Chapingo Estado de Mexico Mexico;

    Institute de Silvkultura e Industria de la madera Universidad Juarez del Estado de Durango Boulevard del Guadiana 501 Ciudad Universitaria Torre de Investigation 34120 Durango Mexico;

    Pacific Southwest Research Station US Department of Agriculture Forest Service (retired) 4955 Canyon Crest Drive Riverside CA 92507 USA;

    School of Environmental and Forest Sciences University of Washington Mailbox 352100 University of Washington Seattle WA 98195 USA;

    USDA Forest Service Missoula Fire Sciences Laboratory Missoula MT 59808 USA;

  • 收录信息
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Fire occurrence drivers; Human factors; Biomass; CAM; GWR; Kernel bandwidth;

    机译:消防司机;人为因素;生物质;凸轮;GWR;内核带宽;

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