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Satellite mapping of surface biophysical parameters at the biome scale over the north American grasslands

机译:北美草原生物群落尺度上的表面生物物理参数的卫星测绘

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Quantification of biophysical parameters is needed by terrestrial process modeling and other applications. A study testing the role of multispectral data for monitoring biophysical parameters was conducted over a network of grassland field sites in the Great Plains of North America. Grassland biophysical parameters [leaf area index (LAI), fraction of absorbed photosynthetically active radiation (f PAR), and biomass] and their relationships with ground radiometer normalized difference vegetation index (NDVI) were established in this study (r{sup}2 = .66- .85) from data collected across the central and northern Great Plains in 1995. These spectral/biophysical relationships were compared to 1996 field data from the Tallgrass Prairie Preserve in northeastern Oklahoma and showed no consistent biases, with most regression estimates falling within the respective 95% confidence intervals. Biophysical parameters were estimated for 21 "ground pixels" (grids) at the Tallgrass Prairie Preserve in 1996, representing three grazing/burning treatments. Each grid was 30 ×30 m in size and was systematically sampled with ground radiometer readings. The radiometric measurements were then converted to biophysical parameters and spatially interpolated using geostatistical kriging. Grid-based biophysical parameters were monitored through the growing season and regressed against Landsat Thematic Mapper (TM) NDVI (r{sup}2 = .92- .94). These regression equations were used to estimate biophysical parameters for grassland TM pixels over the Tallgrass Prairie Preserve in 1996. This method maintained consistent regression development and prediction scales and attempted to minimize scaling problems associated with mixed land cover pixels. A method for scaling Landsat biophysical parameters to coarser resolution satellite data sets (1 km{sup}2) was also investigated.
机译:陆地过程建模和其他应用程序需要对生物物理参数进行量化。一项针对多光谱数据在监测生物物理参数中的作用的研究是通过北美大平原的草地田间站点网络进行的。在这项研究中,建立了草原生物物理参数[叶面积指数(LAI),吸收的光合有效辐射分数(f PAR)和生物量]及其与地面辐射计归一化差异植被指数(NDVI)的关系(r {sup} 2 = (66.85 -.66-.85)来自1995年大平原中部和北部的数据。将这些光谱/生物物理关系与1996年来自俄克拉荷马州东北部塔尔格拉斯草原保护区的田间数据进行了比较,没有发现一致的偏差,大多数回归估计都在各自的95%置信区间。估计1996年塔尔格拉斯草原保护区的21个“地面像素”(网格)的生物物理参数,代表三种放牧/燃烧处理。每个栅格的尺寸为30×30 m,并使用地面辐射计读数进行系统采样。然后将辐射测量结果转换为生物物理参数,并使用地统计克里格法在空间上进行内插。在整个生长期监测基于网格的生物物理参数,并根据Landsat Thematic Mapper(TM)NDVI进行回归(r {sup} 2 = .92- .94)。这些回归方程用于估计1996年塔尔格拉斯草原保护区草地TM像素的生物物理参数。该方法保持了一致的回归发展和预测尺度,并试图将与混合土地覆盖像素相关的尺度问题最小化。还研究了将Landsat生物物理参数缩放为较高分辨率的卫星数据集(1 km {sup} 2)的方法。

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