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首页> 外文期刊>International Journal of Wildland Fire >Environmental susceptibility model for predicting forest fire occurrence in the Western Ghats of India.
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Environmental susceptibility model for predicting forest fire occurrence in the Western Ghats of India.

机译:预测印度西高止山脉森林火灾发生的环境敏感性模型。

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摘要

Forest fires are a recurrent management problem in the Western Ghats of India. Although most fires occur during the dry season, information on the spatial distribution of fires is needed to improve fire prevention. We used the MODIS Hotspots database and Maxent algorithm to provide a quantitative understanding of the environmental controls regulating the spatial distribution of forest fires over the period 2003-07 in the entire Western Ghats and in two nested subregions with contrasting characteristics. We used hierarchical partitioning to assess the independent contributions of climate, topography and vegetation to the goodness-of-fit of models and to build the most parsimonious fire susceptibility model in each study area. Results: show that although areas predicted as highly prone to forest fires were mainly localised on the eastern slopes of the Ghats, spatial predictions and model accuracies differed significantly between study areas. We suggest accordingly a two-step approach to identify: first, large fire-prone areas by paying special attention to the climatic conditions of the monsoon season before the fire season, which determine the fuels moisture content during the fire season; second, the most vulnerable sites within the fire-prone areas using local models mainly based on the type of vegetation.
机译:森林火灾是印度西高止山脉经常发生的管理问题。尽管大多数火灾发生在干旱季节,但仍需要有关火灾空间分布的信息以提高防火性能。我们使用MODIS Hotspots数据库和Maxent算法来定量了解整个西部高止山脉和两个具有鲜明对比特征的嵌套子区域中2003-07年间调节森林火灾空间分布的环境控制。我们使用分层划分来评估气候,地形和植被对模型拟合优度的独立贡献,并在每个研究区域中建立最简约的火灾敏感性模型。结果:表明尽管预测为极易发生森林大火的地区主要位于高止山脉的东坡,但研究区域之间的空间预测和模型精度差异很大。因此,我们建议采用两步法来识别:首先,通过在火季之前特别注意季风季节的气候条件来确定火势较大的地区,从而确定火季中燃料的水分含量;其次,在火灾多发地区内最脆弱的地方,主要使用基于植被类型的局部模型。

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