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Retrieval of leaf area index from MODIS surface reflectance by model inversion using different minimization criteria

机译:使用不同的最小化标准通过模型反演从MODIS表面反射率中检索叶面积指数

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Leaf area index (LAI) is one of the key parameters for the calculation of the energy budget, photosynthesis, and the interception of precipitation in land-surface models at local to global scales. Estimation of LAI from satellite data is a challenging and difficult problem. Studies over the past decades have focused predominantly on the improvement of forward modeling of the radiative transfer problem and on the application of more realistic numerical inversion schemes. Little or no attention has been paid to alternatives for the least squares method as a statistical distance measure or cost function, used to minimize the distance between observations and model predictions. The least-squares method has properties that assume noise with a Gaussian distribution and zero mean, an assumption often violated when LAI is estimated from satellite reflectance data. Here, we test the use of alternative statistical distance measures or cost functions to estimate LAI. We combine a look-up table (LUT)-inversion method based on the FLIGHT radiative transfer model and test how well it estimates LAI from MODIS reflectance data for a large set of alternative cost functions. We consider three classes of statistical distance measures or cost functions:information divergence measures, IVI-estimates, and minimum contrast methods. We estimate LAI from the Moderate Resolution Imaging Spectrometer (MODIS) surface reflectance product (MOD09GA) for 11 VALERI and BigFoot sites around the globe. These sites consist of a wide range of tree-cover types that include conifer, broadleaf and mixed (conifer, broadleaf, grassland) forest sites. We develop LUTs with FLIGHT for conifer and broadleaf forests and we show that improvements can be obtained for the estimation of LAI by choosing a cost function appropriate for a particular problem. Results show error reductions of 20% compared with the MODIS LAI retrieval (MOD15A2).
机译:叶面积指数(LAI)是在局部至全球尺度上计算能量收支,光合作用和降水截留的关键参数之一。从卫星数据估计LAI是一个充满挑战和困难的问题。在过去的几十年中,研究主要集中在辐射传递问题的正向建模的改进和更实际的数值反演方案的应用上。最小二乘法作为统计距离度量或成本函数的替代方法很少或没有引起关注,该方法用于最小化观测值与模型预测之间的距离。最小二乘法具有假定噪声具有高斯分布和均值为零的属性,当根据卫星反射率数据估算LAI时,通常会违反这一假设。在这里,我们测试使用替代性的统计距离度量或成本函数来估计LAI。我们结合了基于FLIGHT辐射传递模型的查找表(LUT)反转方法,并测试了它是否能从MODIS反射率数据中估算出大量替代成本函数对LAI的估算能力。我们考虑三类统计距离度量或成本函数:信息差异度量,IVI估计和最小对比方法。我们通过中分辨率成像光谱仪(MODIS)表面反射率产品(MOD09GA)估算了全球11个VALERI和BigFoot站点的LAI。这些场所包括各种各样的树木覆盖类型,包括针叶树,阔叶和混合(针叶树,阔叶,草原)森林场所。我们针对针叶林和阔叶林开发了具有FLIGHT的LUT,并且我们表明,通过选择适合特定问题的成本函数,可以提高LAI的估计值。结果显示,与MODIS LAI检索(MOD15A2)相比,错误减少了20%。

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