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首页> 外文期刊>International Journal of Geographical Information Science >Estimating the spatial pattern of human-caused forest fires using a generalized linear mixed model with spatial autocorrelation in South Korea
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Estimating the spatial pattern of human-caused forest fires using a generalized linear mixed model with spatial autocorrelation in South Korea

机译:使用带有空间自相关的广义线性混合模型估算人为森林火灾的空间格局

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摘要

Most forest fires in Korea are spatially concentrated in certain areas and are highly related to human activities. These site-specific characteristics of forest fires are analyzed by spatial regression analysis using the R-module generalized linear mixed model (GLMM), which can consider spatial autocorrelation. We examined the quantitative effect of topology, human accessibility, and forest cover without and with spatial autocorrelation. Under the assumption that slope, elevation, aspect, population density, distance from road, and forest cover are related to forest fire occurrence, the explanatory variables of each of these factors were prepared using a Geographic Information System-based process. First, we tried to test the influence of fixed effects on the occurrence of forest fires using a generalized linear model (GLM) with Poisson distribution. In addition, the overdispersion of the response data was also detected, and variogram analysis was performed using the standardized residuals of GLM. Second, GLMM was applied to consider the obvious residual autocorrelation structure. The fitted models were validated and compared using the multiple correlation and root mean square error (RMSE). Results showed that slope, elevation, aspect index, population density, and distance from road were significant factors capable of explaining the forest fire occurrence. Positive spatial autocorrelation was estimated up to a distance of 32 km. The kriging predictions based on GLMM were smoother than those of the GLM. Finally, a forest fire occurrence map was prepared using the results from both models. The fire risk decreases with increasing distance to areas with high population densities, and increasing elevation showed a suppressing effect on fire occurrence. Both variables are in accordance with the significance tests.
机译:韩国的大多数森林大火在空间上都集中在某些地区,并且与人类活动高度相关。通过使用R模块广义线性混合模型(GLMM)进行空间回归分析,可以分析这些森林火灾的特定地点特征,该模型可以考虑空间自相关。我们研究了没有空间自相关和具有空间自相关的拓扑,人类可及性和森林覆盖率的定量影响。假设坡度,海拔,纵横比,人口密度,道路距离和森林覆盖率与森林火灾的发生有关,使用基于地理信息系统的过程来准备每个因素的解释变量。首先,我们尝试使用具有Poisson分布的广义线性模型(GLM)来测试固定效应对森林火灾发生的影响。此外,还检测到响应数据的过度分散,并使用GLM的标准化残差进行了方差图分析。其次,应用GLMM来考虑明显的残差自相关结构。使用多重相关性和均方根误差(RMSE)对拟合模型进行了验证和比较。结果表明,坡度,高程,长宽比,人口密度和距道路的距离是能够解释森林火灾发生的重要因素。正空间自相关估计到32 km的距离。基于GLMM的克里金法预测比GLM的平滑。最后,使用两个模型的结果准备了森林火灾发生图。随着距人口密度高的区域的距离增加,火灾风险降低,而升高的海拔高度则显示出对火灾发生的抑制作用。这两个变量均符合显着性检验。

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  • 作者单位

    Department of Environmental Science and Ecological Engineering, Korea University, Seoul, Republic of Korea;

    Department of Environmental Science and Ecological Engineering, Korea University, Seoul, Republic of Korea;

    Chair of Ecoinformatics, Biometrics and Forest Growth and Chair of Ecosystem Modelling, Georg-August-University Gottingen, Gottingen, Germany;

    Department of Disaster Prevention and Safety Engineering, Kangwon National University, Samcheck-si, Gangwon-do, Republic of Korea;

    Division of Forest Disaster Management, Korea Forest Research Institute, Seoul, Republic of Korea;

    Division of Forest Disaster Management, Korea Forest Research Institute, Seoul, Republic of Korea;

    Division of Forest Disaster Management, Korea Forest Research Institute, Seoul, Republic of Korea;

    Department of Environmental Science and Ecological Engineering, Korea University, Seoul, Republic of Korea;

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

    word; forest fire; spatial statistics; variogram; GLMM;

    机译:字;森林火灾;空间统计;变异函数GLMM;

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