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Mapping live fuel moisture with MODIS data: A multiple regression approach

机译:使用MODIS数据绘制活燃料水分:多元回归方法

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Live fuel moisture (LFM) is an important factor for ascertaining fire risk in shrublands located in Mediterranean climate regions. We examined empirical relationships between LFM and numerous vegetation indices calculated from MODIS composite data for two southern California shrub functional types, chaparral (evergreen) and coastal sage scrub (CSS, drought-deciduous). These relationships were assessed during the annual March-September dry down period for both individual sites, and sites pooled by functional type. The visible atmospherically resistant index (VARI) consistently had the strongest relationships for individual site regressions. An independent method of accuracy assessment, cross validation. was used to determine model robustness for pooled site regressions. Regression models were developed with n-1 datasets and tested on the dataset that was withheld. Additional variables were included in the regression models to account for site-specific and interannual differences in vegetation amount and condition. This allowed a single equation to be used for a given functional type. Multiple linear regression models based on pooled sites had slightly lower adjusted R-2 values compared with simple linear regression models for individual sites. The best regression models for chaparral and CSS were inverted, and LFM was mapped across Los Angeles County, California (LAC). The methods used in this research show promise for monitoring LFM in chaparral and may be applicable to other Mediterranean shrubland communities. (C) 2008 Elsevier Inc. All rights reserved.
机译:活燃料水分(LFM)是确定位于地中海气候区灌木丛中火灾危险的重要因素。我们研究了LFM与从MODIS综合数据计算得出的加利福尼亚南部两种灌木功能类型(丛林(常绿)和鼠尾草灌木(CSS,干旱落叶))之间的经验关系。在单个站点和按功能类型汇总的站点的每年3月至9月的空缺期中评估了这些关系。可见的耐大气指数(VARI)对于单个站点回归始终具有最强的关系。独立的准确性评估方法,交叉验证。用于确定汇总站点回归的模型鲁棒性。使用n-1个数据集开发了回归模型,并在保留的数据集上进行了测试。回归模型中还包括其他变量,以说明植被数量和状况的特定地点和年际差异。这允许将单个方程式用于给定的功能类型。与单个站点的简单线性回归模型相比,基于合并站点的多个线性回归模型的调整R-2值略低。倒置和退行性最好的回归模型,并在加利福尼亚州洛杉矶县(LAC)上绘制了LFM。这项研究中使用的方法显示出有望监测丛林中的LFM,并且可能适用于其他地中海灌木丛社区。 (C)2008 Elsevier Inc.保留所有权利。

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