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首页> 外文期刊>Remote Sensing of Environment: An Interdisciplinary Journal >Regionally adaptable dNBR-based algorithm for burned area mapping from MODIS data
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Regionally adaptable dNBR-based algorithm for burned area mapping from MODIS data

机译:基于区域适应性dNBR的MODIS数据燃烧区域映射算法

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摘要

Recent advances in instrument design have led to considerable improvements in wildfire mapping at regional and global scales. Global and regional active fire and burned area products are currently available from various satellite sensors. While only global products can provide consistent assessments of fire activity at the global, hemispherical or continental scales, the efficiency of their performance differs in various ecosystems. The available regional products are hard-coded to the specifics of a given ecosystem (e.g. boreal forest) and their mapping accuracy drops dramatically outside the intended area. We present a regionally adaptable semi-automated approach to mapping burned area using Moderate Resolution Imaging Spectroradiometer (MODIS) data. This is a flexible remote sensing/GIS-based algorithm which allows for easy modification of algorithm parameterization to adapt it to the regional specifics of fire occurrence in the biome or region of interest. The algorithm is based on Normalized Burned Ratio differencing (dNBR) and therefore retains the variability of spectral response of the area affected by fire and has the potential to be used beyond binary buraed/unburned mapping for the first-order characterization of fire impacts from remotely sensed data. The algorithm inputs the MODIS Surface Reflectance 8-Day Composite product (MOD09A1) and the MODIS Active Fire product (MOD 14) and outputs yearly maps of burned area with dNBR values and beginning and ending dates of mapping as the attributive information. Comparison of this product with high resolution burn scar information from Landsat ETM+ imagery and fire perimeter data shows high levels of accuracy in reporting burned area across different ecosystems. We evaluated algorithm performance in boreal forests of Central Siberia, Mediterranean-type ecosystems of California, and sagebrush steppe of the Great Basin region of the US. In each ecosystem the MODIS burned area estimates were within 15% of the estimates produced by the high resolution base with the R2 between 0.87 and 0.99. In addition, the spatial accuracy of large bum scars in the boreal forests of Central Siberia was also high with Kappa values ranging between 0.76 and 0.79.
机译:仪器设计的最新进展已导致野火制图在区域和全球范围内取得了显着改善。当前,可以通过各种卫星传感器获得全球和区域活跃的火灾和燃烧区域产品。虽然只有全球性产品才能对全球,半球或大陆范围的火灾活动提供一致的评估,但在各种生态系统中其性能的效率却有所不同。可用的区域产品被硬编码为给定生态系统(例如北方森林)的细节,其映射精度在预期区域之外急剧下降。我们提出了一种使用中分辨率成像光谱仪(MODIS)数据绘制烧伤区域的区域适应性半自动化方法。这是一种基于遥感/ GIS的灵活算法,可轻松修改算法参数设置,使其适应生物群系或目标区域发生火灾的区域特性。该算法基于归一化燃烧比差(dNBR),因此保留了受火影响区域的光谱响应的可变性,并且有可能被用于远距离的二值燃烧/未燃烧映射,从而从远程对火影响进行一阶表征感测到的数据。该算法输入MODIS表面反射8天复合产品(MOD09A1)和MODIS Active Fire产品(MOD 14),并输出具有dNBR值的燃烧区域的年度地图以及地图的开始和结束日期作为属性信息。将该产品与Landsat ETM +影像中的高分辨率烧伤疤痕信息以及火灾周边数据进行比较,可以显示报告不同生态系统中烧伤面积的高度准确性。我们评估了算法在西伯利亚中部的北方森林,加利福尼亚的地中海型生态系统以及美国大盆地地区的鼠尾草草原中的性能。在每个生态系统中,MODIS的燃烧面积估算值均处于高分辨率基准所产生的估算值的15%以内,R2在0.87至0.99之间。此外,西伯利亚中部北方森林大烧伤疤痕的空间精度也很高,Kappa值在0.76到0.79之间。

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