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Mapping Live Fuel Moisture Content and Flammability for Continental Australia Using Optical Remote Sensing

机译:使用光学遥感技术绘制澳大利亚大陆的活燃料水分含量和易燃性

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We present the first continental-scale methodology for estimating Live Fuel Moisture Content (FMC) and flammability in Australia using satellite observations. The methodology includes a physically-based retrieval model to estimate FMC from MODIS (Moderate Resolution Imaging Spectrometer) reflectance data using radiative transfer model inversion. The algorithm was evaluated using 363 observations at 33 locations around Australia with mean accuracy for the studied land cover classes (grassland, shrubland and forest) close to those obtained elsewhere (r2=0.57, RMSE = 40%) but without site-specific calibration. Logistic regression models were developed to predict a flammability index, trained on fire events mapped in the MODIS burned area product and four predictor variables calculated from the FMC estimates. The selected predictor variables were actual FMC corresponding to the 8-day and 16-day period before burning; the same but expressed as an anomaly from the long-term mean for that date; and the FMC change between the two successive 8-day periods before burning. Separate logistic regression models were developed for grassland, shrubland and forest, obtaining performance metrics of 0.70, 0.78 and 0.71, respectively, indicating reasonable skill in fire risk prediction.
机译:我们介绍了第一个大陆规模的方法,用于通过卫星观测来估算澳大利亚的活燃料水分含量(FMC)和可燃性。该方法包括一个基于物理的检索模型,可使用辐射传输模型反演从MODIS(中等分辨率成像光谱仪)反射率数据估算FMC。使用澳大利亚各地33个地点的363个观测值对算法进行了评估,所研究的土地覆被类别(草地,灌木丛和森林)的平均准确性与在其他地方获得的近似(r 2 = 0.57,RMSE = 40%),但未进行特定位置的校准。开发了Logistic回归模型来预测可燃性指数,对MODIS燃烧区域产品中映射的火灾和通过FMC估算得出的四个预测变量进行训练。选择的预测变量是与燃烧前8天和16天相对应的实际FMC。相同,但表示为该日期的长期均值异常;并且FMC在燃烧之前的两个连续的8天周期之间进行更改。针对草地,灌木林和森林分别建立了逻辑回归模型,获得的绩效指标分别为0.70、0.78和0.71,这表明在火灾风险预测方面具有合理的技巧。

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