Assessment of fire severity and vegetation response using moderate-resolution imaging spectroradiometer: Moderate resolution (MODIS) satellite images to assess vegetation response after a big fire event at the selected national parks around Sydney, Australia

S. Rahman, Hsing-Chung Chang
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引用次数: 5

Abstract

Fire severity is the direct result of the combustion process and is related to the rate at which fuel is being consumed. Many studies have already been conducted to map fire severity using different burn severity indices and some of the research studies were based on field-based validation. A few studies have used the coarse and medium resolution satellite-based time series data to assess the fire severity and to assess the impacts on vegetation recovery. Therefore, this study is a remote sensing approach to map fire severity and to assess the vegetation regrowth after a big fire event (Black Christmas Bushfires) at the selected national parks in the outskirts of Sydney, Australia, using Moderate-resolution Imaging Spectroradiometer (MODIS) Data [from the year 2000 to 2016]. Two established fire severity indices, Normalised Burn Ratio (NBR) and differenced Normalised Burn Ratio (dNBR) were used to detect fire severity. Time series analysis of MODIS-derived vegetation indices [LAI (Leaf Area Index) and NDVI (Normalised Difference Vegetation Index)] was applied to understand the change in the phenological cycle after the fire events. Time-series analysis showed that MODIS-NDVI provides robust seasonality assessment than MODIS-LAI profile. The woodland area (Eucalypt Medium Woodland Forest) showed delayed vegetation recovery after the Big Christmas Bushfires.
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使用中分辨率成像光谱仪评估火灾严重程度和植被响应:中分辨率(MODIS)卫星图像评估澳大利亚悉尼周围选定国家公园大火事件后的植被响应
火灾的严重程度是燃烧过程的直接结果,与燃料消耗的速度有关。已经进行了许多研究,使用不同的烧伤严重程度指数来绘制火灾严重程度图,其中一些研究是基于现场验证的。一些研究利用粗、中分辨率卫星时间序列数据评估了火灾严重程度和对植被恢复的影响。因此,本研究是一种遥感方法,利用2000年至2016年的中分辨率成像光谱仪(MODIS)数据,在澳大利亚悉尼郊区选定的国家公园绘制火灾严重程度图,并评估大火事件(黑色圣诞丛林大火)后的植被再生情况。两个已建立的火灾严重程度指数,归一化燃烧比(NBR)和差异归一化燃烧比(dNBR)用于检测火灾严重程度。利用modis反演的植被指数[叶面积指数(LAI)和植被指数(NDVI)]进行时间序列分析,了解火灾发生后物候周期的变化。时间序列分析表明,MODIS-NDVI比MODIS-LAI具有更强的季节性评价能力。森林区域(桉树中等林地森林)在圣诞森林大火后显示出延迟的植被恢复。
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