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首页> 外文期刊>GIScience & remote sensing >Fractional monitoring of desert vegetation degradation, recovery, and greening using optimized multi-endmembers spectral mixture analysis in a dryland basin of Northwest China
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Fractional monitoring of desert vegetation degradation, recovery, and greening using optimized multi-endmembers spectral mixture analysis in a dryland basin of Northwest China

机译:在西北地区旱地盆地中优化的多端生光谱混合分析,沙漠植被降解,恢复和绿化的分数监测

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摘要

Accurate identification of desert vegetation dynamics in arid regions is challenging because of its complex composition of grass species, obscure boundary with non-desert vegetation, and high sensitiveness to climatic variations. This study examined the ability of optimized multi-endmember spectral mixture analysis (MESMA) for monitoring desert vegetation degradation, recovery, and greening in a dryland basin of Northwest China using Landsat time series data from the 1990s to 2016. Eight modeled endmember fractions were generated using the best endmember model with the lowest fraction error and root mean square error (RMSE). Abundances of non-desert vegetation, desert vegetation, soil, and impervious surface areas were incorporated based on the eight original fractions and validated using high spatial resolution images. Finally, the post-classification comparison approach was used to detect desert vegetation degradation, recovery, and greening. Results show that: (1) More than 97% of the land pixels were modeled successfully into eight endmember fractions for each period with the mean RMSE less than 0.01. All four simulated abundances had high correlations (r = 0.89-0.96) with the corresponding reference data, indicating good performance of MESMA in this study; (2) Desert vegetation increased dramatically (772.68 km(2)) during the 26-year period. The major change was desert vegetation recovery with a total area of 10,705 km(2), followed by degradation with a total area of 4,715 km(2). The greening area was the smallest, covering only 1,509 km(2); (3) Increased precipitation was the major contributor for desert vegetation greening in the west of upper region while decreased precipitation was the major contributor for the degradation in the west of lower region. Anthropogenic factors (e.g., improvement of irrigation, crop expansion) were major contributors for the change in desert vegetation in the middle region. This research demonstrates that MESMA is promising in detecting desert vegetation dynamics in semi-arid and arid regions.
机译:精确识别干旱地区的沙漠植被动力学是挑战,因为其复杂的草地成分,与非沙漠植被的遮挡边界,对气候变化的高敏感性。本研究检测了使用20世纪20世纪90年代至2016年20世纪90年代到2016年的旱地植被降解,恢复和绿化的优化多终聚体谱混合分析(MESMA)的能力。使用最低分数误差和均方根误差(RMSE)的最佳端终变模型。基于八个原始分数并使用高空间分辨率图像进行验证,并验证了非沙漠植被,沙漠植被,土壤和不透水表面积的丰富。最后,分类后比较方法用于检测沙漠植被降解,恢复和绿化。结果表明:(1)为每周的平均RMSE成功地将97%的土地像素成功建模成8个末端馏分,平均值小于0.01。所有四种模拟丰富的相关性具有高相关(R = 0.89-0.96),具有相应的参考数据,表明本研究中的MESMA性能良好; (2)在26年期间,沙漠植被急剧增加(772.68公里(2))。主要变化是沙漠植被恢复,总面积为10,705公里(2),其次降解,总面积为4,715公里(2)。绿化区是最小的,覆盖仅1,509公里(2); (3)增加降水是上部地区西部沙漠植被绿化的主要贡献者,同时降水量下降是下部地区西部降解的主要因素。人为因素(例如,改善灌溉,作物扩张)是中部地区沙漠植被变化的主要贡献者。该研究表明,MESMA在半干旱和干旱地区检测沙漠植被动力学。

著录项

  • 来源
    《GIScience & remote sensing》 |2021年第2期|300-321|共22页
  • 作者单位

    Fujian Normal Univ Key Lab Humid Subtrop Ecogeog Proc Minist Educ Fuzhou Fujian Peoples R China|Fujian Normal Univ Sch Geog Sci Fuzhou Peoples R China;

    Chinese Acad Sci Northwest Inst Plateau Biol Key Lab Restorat Ecol Cold Reg Qinghai Xining Qinghai Peoples R China;

    Zhejiang Univ Coll Environm & Resource Sci Inst Appl Remote Sensing & Informat Technol Hangzhou Zhejiang Peoples R China;

    Fujian Normal Univ Key Lab Humid Subtrop Ecogeog Proc Minist Educ Fuzhou Fujian Peoples R China|Fujian Normal Univ Sch Geog Sci Fuzhou Peoples R China;

    Fujian Normal Univ Key Lab Humid Subtrop Ecogeog Proc Minist Educ Fuzhou Fujian Peoples R China|Fujian Normal Univ Sch Geog Sci Fuzhou Peoples R China;

    Fujian Normal Univ Key Lab Humid Subtrop Ecogeog Proc Minist Educ Fuzhou Fujian Peoples R China|Fujian Normal Univ Sch Geog Sci Fuzhou Peoples R China;

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  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Arid vegetation; desertification; vegetation recovery; vegetation greening; spectral decomposing; landsat imagery;

    机译:干旱植被;荒漠化;植被恢复;植被绿化;光谱分解;Landsat Imagery;
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