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Reconstructing semi-arid wetland surface water dynamics through spectral mixture analysis of a time series of Landsat satellite images (1984-2011)

机译:通过对Landsat卫星图像时间序列(1984-2011)的频谱混合分析,重建半干旱湿地地表水动力学

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Wetlands are valuable ecosystems for maintaining biodiversity, but are vulnerable to climate change and land conversion. Despite their importance, wetland hydrology is poorly understood as few tools exist to monitor their hydrologic regime at a landscape scale. This is especially true when monitoring hydrologic change at scales below 30 m, the resolution of one Landsat pixel. To address this, we used spectral mixture analysis (SMA) of a time series of Landsat satellite imagery to reconstruct surface-water hydrographs for 750 wetlands in Douglas County, Washington State, USA, from 1984 to 2011. SMA estimates the fractional abundance of spectra representing physically meaningful materials, known as spectral endmembers, which comprise a mixed pixel, thus providing sub-pixel estimates of surface water extent Endmembers for water and sage steppe were selected directly from each image scene in the Landsat time series, whereas endmembers for salt and wetland vegetation were derived from a mean spectral signature of selected dates spanning the 1984-2011 timeframe. This method worked well (R-2 = 0.99) for even small wetlands (<1800 m(2)) providing a wall-to-wall dataset of reconstructed surface-water hydrographs for wetlands across our study area. We have validated this method only in semi-arid regions. Further research is necessary to extend its validity to other environments. This method can be used to better understand the role of hydrology in wetland ecosystems and as a monitoring tool to identify wetlands undergoing abnormal change. (C) 2016 Elsevier Inc. All rights reserved.
机译:湿地是维持生物多样性的宝贵生态系统,但易受气候变化和土地转换的影响。尽管具有重要意义,但由于几乎没有工具可以在景观尺度上监测其水文状况,因此对湿地水文学的了解很少。当在小于30 m(一个Landsat像素分辨率)的尺度上监测水文变化时,尤其如此。为了解决这个问题,我们使用Landsat卫星图像的时间序列的频谱混合分析(SMA)来重建1984年至2011年美国华盛顿州道格拉斯县的750个湿地的地表水文图。SMA估计频谱的分数丰度代表具有物理意义的材料(称为光谱最终成员),它包含一个混合像素,从而提供了地表水域范围的子像素估计。直接从Landsat时间序列的每个图像场景中选择了水和鼠尾草的最终成员,而盐和湿地植被是从1984-2011年时间范围内选定日期的平均光谱特征得出的。即使在很小的湿地(<1800 m(2))上,该方法也能很好地工作(R-2 = 0.99),从而为我们研究区域内的湿地提供了逐层重建的地表水位图数据集。我们仅在半干旱地区验证了此方法。有必要进行进一步的研究以将其有效性扩展到其他环境。该方法可用于更好地了解水文学在湿地生态系统中的作用,并可作为监测工具来识别经历异常变化的湿地。 (C)2016 Elsevier Inc.保留所有权利。

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