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首页> 外文期刊>Remote Sensing of Environment: An Interdisciplinary Journal >A disturbance weighting analysis model (DWAM) for mapping wildfire burn severity in the presence of forest disease
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A disturbance weighting analysis model (DWAM) for mapping wildfire burn severity in the presence of forest disease

机译:一种扰动加权分析模型(DWAM),用于在森林疾病存在下映射野火烧伤严重程度

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摘要

Forest ecosystems are subject to recurring fires as one of their most significant disturbances. Accurate mapping of burn severity is crucial for post-fire land management and vegetation regeneration monitoring. Remote-sensing-based monitoring of burn severity faces new challenges when forests experience both fire and non-fire disturbances, which may change the biophysical and biochemical properties of trees in similar ways. In this study, we develop a Disturbance Weighting Analysis Model (DWAM) for accurately mapping burn severity in a forest landscape that is jointly affected by wildfire and an emerging infectious disease - sudden oak death. Our approach treats burn severity in each basic mapping unit (e.g., 30 m grid from a post-fire Landsat image) as a linear combination of burn severity of trees affected (diseased) and not affected by the disease (healthy), weighted by their areal fractions in the unit. DWAM is calibrated using two types of inputs: i) look-up tables (LUTs) linking burn severity and post-fire spectra for diseased and healthy trees, derived from field observations, hyperspectral sensors [e.g., Airborne Visible InfraRed Imaging Spectrometer (AVIRIS)], and radiative transfer models; and ii) pre-fire fractional maps of diseased and healthy trees, derived by decomposing a pre-fire Landsat image using Multiple Endmember Spectral Mixture Analysis (MESMA). Considering the presence of tree disease in DWAM improved the overall map accuracy by 42%. The superior performance is consistent across all three stages of disease progression. Our approach demonstrates the potential for improved mapping of forest burn severity by reducing the confounding effects of other biotic disturbances.
机译:森林生态系统受重复火灾,作为其最重要的干扰之一。烧伤严重程度的准确映射对于消防后土地管理和植被再生监测至关重要。当森林经历火灾和非火灾干扰时,基于遥感的烧伤监测面临着新的挑战,这可能改变树木的生物物理和生化特性。在这项研究中,我们开发了一种干扰加权分析模型(DWAM),用于准确地绘制森林景观中的烧伤严重程度,这些景观是受野火的共同影响和新兴传染病 - 突然的橡木死亡。我们的方法在每个基本映射单元(例如,从消防后LANDSAT图像中的30米网格)中的烧伤严重程度作为受影响(患病)的树木的烧伤严重程度的线性组合而不受疾病(健康)的影响,由其加权单位的面部分数。 DWAM使用两种类型的输入校准:i)查询表(LUT)与患有场观测的患病和健康树木的烧伤严重程度和消防频谱,高光谱传感器[例如,空气传播的红外成像光谱仪(Aviris) ]和辐射转移模型; II)通过使用多个终点光谱混合物分析(MESMA)分解预防预防兰德拉特形象来源的患病和健康树木前的火灾分数映射。考虑到DWAM中树病的存在将整体地图精度提高了42%。卓越的性能在疾病进展的所有三个阶段都是一致的。我们的方法通过降低其他生物紊乱的混淆效应,证明了改善森林烧伤严重程度的潜力。

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