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首页> 外文期刊>Forest Ecology and Management >A predictive model of burn severity based on 20-year satellite-inferred burn severity data in a large southwestern US wilderness area
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A predictive model of burn severity based on 20-year satellite-inferred burn severity data in a large southwestern US wilderness area

机译:基于美国西南部较大荒野地区20年卫星推断的烧伤严重性数据的烧伤严重性预测模型

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We describe and then model satellite-inferred severe (stand-replacing) fire occurrence relative to topography (elevation, aspect, slope, solar radiation, Heat Load Index, wetness and measures of topographic ruggedness) using data from 114 fires>40ha in area that occurred between 1984 and 2004 in the Gila Wilderness and surrounding Gila National Forest. Severe fire occurred more frequently at higher elevations and on north-facing, steep slopes and at locally wet, cool sites, which suggests that moisture limitations on productivity in the southwestern US interact with topography to influence vegetation density and fuel production that in turn influence burn severity. We use the Random Forest algorithm and a stratified random sample of burn severity pixels with corresponding pixels from 15 topographic layers as predictor variables to build an empirical model predicting the probability of occurrence for severe burns across the entire 1.4millionha study area. Our model correctly classified severity with a classification accuracy of 79.5% when burn severity pixels were classified as severe vs. not severe (two classes). Because our model was derived from data sampled across many fires over a 20-year period, it represents average probability of severe fire occurrence and is unlikely to predict burn severity for individual fire events. However, we believe it has potential as a tool for planning fuel treatment projects, in management of actively burning fires, and for better understanding of landscape-scale burn severity patterns.
机译:我们使用来自114场大于40公顷的火灾的数据来描述和建模相对于地形(海拔,纵横比,坡度,太阳辐射,热负荷指数,湿度和地形坚固性的度量)的卫星推断的严重(站立替换)火灾发生情况,发生在1984年至2004年之间的吉拉荒野及其周围的吉拉国家森林。在较高的海拔和朝北的陡坡上以及在局部潮湿,凉爽的地点,严重的火灾发生频率更高,这表明美国西南部水分对生产力的限制与地形相互作用,从而影响植被密度和燃料产量,进而影响燃烧。严重性。我们使用随机森林算法和燃烧严重度像素的分层随机样本以及来自15个地形层的相应像素作为预测变量,以建立经验模型来预测整个140万公顷研究区域发生严重灼伤的可能性。当烧伤严重程度像素分为严重与不严重(两类)时,我们的模型可以正确地对严重程度进行分类,分类精度为79.5%。因为我们的模型是基于20年内多次火灾采样的数据得出的,所以它代表了严重火灾发生的平均概率,不太可能预测单个火灾事件的燃烧严重性。但是,我们认为它有潜力作为规划燃料处理项目,管理积极燃烧的大火以及更好地了解景观规模燃烧严重性模式的工具。

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