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首页> 外文期刊>Remote Sensing >Assessing a Multi-Platform Data Fusion Technique in Capturing Spatiotemporal Dynamics of Heterogeneous Dryland Ecosystems in Topographically Complex Terrain
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Assessing a Multi-Platform Data Fusion Technique in Capturing Spatiotemporal Dynamics of Heterogeneous Dryland Ecosystems in Topographically Complex Terrain

机译:评估地形复杂地形中非均质旱地生态系统时空动态的多平台数据融合技术

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摘要

Water-limited ecosystems encompass approximately 40% of terrestrial land mass and play a critical role in modulating Earth’s climate and provisioning ecosystem services to humanity. Spaceborne remote sensing is a critical tool for characterizing ecohydrologic patterns and advancing the understanding of the interactions between atmospheric forcings and ecohydrologic responses. Fine to medium scale spatial and temporal resolutions are needed to capture the spatial heterogeneity and the temporally intermittent response of these ecosystems to environmental forcings. Techniques combining complementary remote sensing datasets have been developed, but the heterogeneous nature of these regions present significant challenges. Here we investigate the capacity of one such approach, the Spatial and Temporal Adaptive Reflectance Fusion Model (STARFM) algorithm, to map Normalized Difference Vegetation Index (NDVI) at 30 m spatial resolution and at a daily temporal resolution in an experimental watershed in southwest Idaho, USA. The Dry Creek Experimental Watershed captures an ecotone from a sagebrush steppe ecosystem to evergreen needle-leaf forests along an approximately 1000 m elevation gradient. We used STARFM to fuse NDVI retrievals from the MODerate-resolution Imaging Spectroradiometer (MODIS) and Landsat during the course of a growing season (April to September). Specifically we input to STARFM a pair of Landsat NDVI retrievals bracketing a sequence of daily MODIS NDVI retrievals to yield daily estimates of NDVI at resolutions of 30 m. In a suite of data denial experiments we compared these STARFM predictions against corresponding Landsat NDVI retrievals and characterized errors in predicted NDVI. We investigated how errors vary as a function of vegetation functional type and topographic aspect. We find that errors in predicting NDVI were highest during green-up and senescence and lowest during the middle of the growing season. Absolute errors were generally greatest in tree-covered portions of the watershed and lowest in locations characterized by grasses/bare ground. On average, relative errors in predicted average NDVI were greatest in grass/bare ground regions, on south-facing aspects, and at the height of the growing season. We present several ramifications revealed in this study for the use of multi-sensor remote sensing data for the study of spatiotemporal ecohydrologic patterns in dryland ecosystems.
机译:受水限制的生态系统约占陆地面积的40%,在调节地球气候和为人类提供生态系统服务方面发挥着关键作用。星载遥感是表征生态水文模式和增进对大气强迫与生态水文响应之间相互作用的理解的关键工具。需要精细到中等规模的空间和时间分辨率,以捕获这些生态系统对环境强迫的空间异质性和时间间歇性响应。已经开发了结合互补遥感数据集的技术,但是这些区域的异质性提出了重大挑战。在这里,我们研究了一种方法(时空自适应反射融合模型(STARFM)算法)在爱达荷州西南部实验流域中以30 m空间分辨率和每日时间分辨率绘制归一化植被指数(NDVI)的能力。 , 美国。干溪实验流域沿海拔约1000 m的高度捕获了从鼠尾草草原生态系统到常绿针叶林的过渡带。在生长季节(4月至9月)期间,我们使用STARFM融合了从中等分辨率成像光谱仪(MODIS)和Landsat提取的NDVI信息。具体来说,我们向STARFM输入了一对Landsat NDVI检索值,将一系列每日MODIS NDVI检索值括起来,以产生30m分辨率的NDVI的每日估计值。在一组数据拒绝实验中,我们将这些STARFM预测与相应的Landsat NDVI取回进行了比较,并比较了预测NDVI中的特征误差。我们调查了误差如何随植被功能类型和地形方面的变化而变化。我们发现,预测NDVI的误差在绿化和衰老期间最高,而在生长期中期最低。通常,在流域的树木覆盖的部分中,绝对误差最大,而在以草皮/裸露地为特征的位置中,绝对误差最低。平均而言,预测的平均NDVI的相对误差在草地/裸露的地区,朝南的方面以及生长季节的高峰期最大。我们提出了在这项研究中揭示的一些后果,这些研究将多传感器遥感数据用于干旱地区生态系统的时空生态水文模式研究。

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