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Mapping and Evaluation of NDVI Trends from Synthetic Time Series Obtained by Blending Landsat and MODIS Data around a Coalfield on the Loess Plateau

机译:黄土高原某煤田周围Landsat与MODIS数据融合得到的合成时间序列NDVI趋势图及评价

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The increasingly intensive and extensive coal mining activities on the Loess Plateau pose a threat to the fragile local ecosystems. Quantifying the effects of coal mining activities on environmental conditions is of great interest for restoring and managing the local ecosystems and resources. This paper generates dense NDVI (Normalized Difference Vegetation Index) time series between 2000 and 2011 at a spatial resolution of 30 m by blending Landsat and MODIS (Moderate Resolution Imaging Spectroradiometer) data using the Spatial and Temporal Adaptive Reflectance Fusion Model (STARFM) and further evaluates its capability for mapping vegetation trends around a typical coalfield on the Loss Plateau. Synthetic NDVI images were generated using (1) STARFM-generated NIR (near infrared) and red band reflectance data (scheme 1) and (2) Landsat and MODIS NDVI images directly as inputs for STARFM (scheme 2). By comparing the synthetic NDVI images with the corresponding Landsat NDVI, we found that scheme 2 consistently generated better results (0.70 < R2 < 0.76) than scheme 1 (0.56 < R2 < 0.70) in this study area. Trend analysis was then performed with the synthetic dense NDVI time series and the annual maximum NDVI (NDVImax) time series. The accuracy of these trends was evaluated by comparing to those from the corresponding MODIS time series, and it was concluded that both the trends from synthetic/MODIS NDVI dense time series and synthetic/MODIS NDVImax time series (2000–2011) were highly consistent. Compared to trends from MODIS time series, trends from synthetic time series are better able to capture fine scale vegetation changes. STARFM-generated synthetic NDVI time series could be used to quantify the effects of mining activities on vegetation, but the test areas should be selected with caution, as the trends derived from synthetic and MODIS time series may be significantly different in some areas.
机译:黄土高原上日益密集和广泛的煤矿开采活动对脆弱的当地生态系统构成了威胁。量化煤矿开采活动对环境条件的影响,对于恢复和管理当地的生态系统和资源非常重要。本文通过使用时空自适应反射融合模型(STARFM)将Landsat和MODIS(中等分辨率成像光谱仪)数据进行混合,并生成2000年至2011年之间的密集NDVI(归一化植被指数)时间序列,其空间分辨率为30 m评估了其绘制Loss Plateau典型煤田周围植被趋势的能力。使用(1)STARFM生成的NIR(近红外)和红波段反射率数据(方案1)和(2)Landsat和MODIS NDVI图像直接作为STARFM的输入(方案2)来生成合成NDVI图像。通过将合成的NDVI图像与相应的Landsat NDVI进行比较,我们发现方案2始终产生比方案1(0.56 <0.76) > <0.70)。然后使用合成的密集NDVI时间序列和年度最大NDVI(NDVI max )时间序列进行趋势分析。通过与相应的MODIS时间序列进行比较,评估了这些趋势的准确性,并得出结论:合成/ MODIS NDVI密集时间序列和合成/ MODIS NDVI max 时间序列的趋势( 2000-2011年)是高度一致的。与MODIS时间序列的趋势相比,合成时间序列的趋势更好地捕获了小尺度的植被变化。 STARFM生成的合成NDVI时间序列可用于量化采矿活动对植被的影响,但应谨慎选择测试区域,因为从合成和MODIS时间序列得出的趋势在某些地区可能存在显着差异。

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