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Estimating the fraction of absorbed photosynthetically active radiation from multiple satellite data.

机译:从多个卫星数据估算吸收的光合有效辐射的比例。

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摘要

The fraction of absorbed photosynthetically active radiation (FAPAR) is a critical input parameter in many climate and ecological models. The accuracy of satellite FAPAR products directly influences estimates of ecosystem productivity and carbon stocks. The targeted accuracy of FAPAR products is 10%, or 0.05, for many applications. This study evaluates satellite FAPAR products, presents a new FAPAR estimation model and develops data fusion schemes to improve the FAPAR accuracy.;Five global FAPAR products, namely MODIS, MISR, MERIS, SeaWiFS, and GEOV1 were intercompared over different land covers and directly validated with ground measurements at VAlidation of Land European Remote sensing Instruments (VALERI) and AmeriFlux sites. Intercomparison results show that MODIS, MISR, and GEOV1 agree well with each other and so do MERIS and SeaWiFS, but the difference between these two groups can be as large as 0.1. The differences between the products are consistent throughout the year over most of the land cover types, except over the forests, because of the different assumptions in the retrieval algorithms and the differences between green and total FAPAR products over forests. Direct validation results show that the five FAPAR products have an uncertainty of 0.14 when validating with total FAPAR measurements, and 0.09 when validating with green FAPAR measurements. Overall, current FAPAR products are close to, but have not fulfilled, the accuracy requirement, and further improvements are still needed.;A new FAPAR estimation model was developed based on the radiative transfer for horizontally homogeneous continuous canopy to improve the FAPAR accuracy. A spatially explicit parameterization of leaf canopy and soil background reflectance was derived from a thirteen years of MODIS albedo database. The new algorithm requires the input of leaf area index (LAI), which was estimated by a hybrid geometric optic-radiative transfer model suitable for both continuous and discrete vegetation canopies in this study. The FAPAR estimates by the new model was intercompared with reference satellite FAPAR products and validated with field measurements at the VALERI and AmeriFlux experimental sites. The validation results showed that the FAPAR estimates by the new method had slightly better performance than the MODIS and the MISR FAPAR products when using corresponding satellite LAI product values as input. The FAPAR estimates can be further improved with the LAI estimates from the presented model as input. The improvements are apparent at grasslands and forests with an 8% reduction of uncertainty. The new model can successfully identify the growing seasons and produce smooth time series curves of estimated FAPAR over years. The root mean square error (RMSE) was reduced from 0.16 to 0.11 for MODIS and from 0.18 to 0.1 for MISR overall. Application of the presented model at a regional scale generated consistent FAPAR maps at 30 m, 500 m, and 1100 m spatial resolutions from the Landsat, MODIS, and MISR data.;As an alternative method to improve FAPAR accuracy, in addition to developing FAPAR estimation models, two data fusion schemes were applied to integrate multiple satellite FAPAR products at two scales: optimal interpolation at the site scale and multiple resolution tree at the regional scale. These two fusion schemes removed the bias and resulted in a 20% increase in the R 2 and a 3% reduction in the RMSE as compared with the average of the individual FAPAR products. The regional scale fusion filled in the missing values and provided spatially consistent FAPAR distributions at different resolutions.;The original contribution of this study is that multiple FAPAR products have been assessed with a comprehensive set of measurements from two field experiments at the global scale. This study improved the accuracy of FAPAR using a new model and local pixel based soil background and leaf canopy albedos. High FAPAR accuracy was achieved through integration at both the temporal and spatial domains. The improved accuracy of FAPAR values from this study by 5% would help to decrease an equal amount of uncertainty in the estimation of gross and net primary production and carbon fluxes.
机译:在许多气候和生态模型中,吸收的光合有效辐射的比例(FAPAR)是关键的输入参数。 FAPAR卫星产品的准确性直接影响对生态系统生产力和碳储量的估计。对于许多应用,FAPAR产品的目标精度为10%或0.05。这项研究评估了卫星的FAPAR产品,提出了一种新的FAPAR估计模型并开发了数据融合方案以提高FAPAR的准确性。;对5种全球FAPAR产品(即MODIS,MISR,MERIS,SeaWiFS和GEOV1)在不同的土地覆盖范围内进行了比较并进行了直接验证在陆地欧洲遥感仪器(VALERI)和AmeriFlux站点的VAlidation上进行地面测量。相互比较的结果表明,MODIS,MISR和GEOV1彼此吻合得很好,而MERIS和SeaWiFS也是如此,但是这两组之间的差异可能高达0.1。由于森林采伐算法的不同假设以及森林中绿色和总FAPAR产品之间的差异,除森林外,大多数土地覆盖类型的产品之间的差异在全年都是一致的。直接验证结果表明,使用全部FAPAR测量进行验证时,五种FAPAR产品的不确定度为0.14,而通过绿色FAPAR测量进行验证时,其不确定度为0.09。总体而言,当前的FAPAR产品接近但尚未满足精度要求,并且仍需要进一步改进。;基于水平均匀连续冠层的辐射传递,开发了一种新的FAPAR估计模型,以提高FAPAR的精度。从13年的MODIS反照率数据库推导出了叶冠和土壤背景反射率的空间显式参数化。新算法需要输入叶面积指数(LAI),该值是通过适用于本研究中连续和离散植被冠层的混合几何光学辐射传输模型估算的。通过新模型估算的FAPAR与参考卫星FAPAR产品进行了比较,并在VALERI和AmeriFlux实验现场进行了现场测量验证。验证结果表明,当使用相应的卫星LAI产品值作为输入时,用新方法估算的FAPAR比MODIS和MISR FAPAR产品的性能略好。 FAPAR估计值可以通过使用现有模型的LAI估计值作为输入来进一步改进。草原和森林的改善显而易见,不确定性降低了8%。新模型可以成功地识别生长季节,并产生估计的FAPAR多年的平滑时间序列曲线。总体均方根误差(RMSE)从MODIS降低到0.16到0.11,而MISR从0.18降低到0.1。根据Landsat,MODIS和MISR数据,在区域尺度上应用本模型在30 m,500 m和1100 m空间分辨率下生成了一致的FAPAR映射图;作为开发FAPAR的另一种提高FAPAR精度的方法估计模型,应用了两种数据融合方案,以两个尺度集成多个卫星FAPAR产品:站点尺度的最佳插值和区域尺度的多分辨率树。与单个FAPAR产品的平均值相比,这两种融合方案消除了偏差,并导致R 2增加了20%,RMSE减少了3%。区域尺度融合填补了缺失的值,并以不同的分辨率提供了空间上一致的FAPAR分布。这项研究的最初贡献是,已对全球多个FAPAR产品进行了两次全面的现场测量,并对其进行了全面的测量。这项研究使用新模型和基于局部像素的土壤背景和叶冠反照率提高了FAPAR的准确性。通过在时域和空间域进行集成,可以实现较高的FAPAR精度。这项研究将FAPAR值的准确性提高了5%,将有助于减少估计总初级生产量和净初级生产量以及碳通量中的同等不确定性。

著录项

  • 作者

    Tao, Xin.;

  • 作者单位

    University of Maryland, College Park.;

  • 授予单位 University of Maryland, College Park.;
  • 学科 Geography.;Remote sensing.
  • 学位 Ph.D.
  • 年度 2015
  • 页码 165 p.
  • 总页数 165
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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