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Crop reflectance estimate errors from the SAIL model due to spatial and temporal variability of canopy and soil characteristics

机译:由于冠层和土壤特性的时空变化,SAIL模型产生的作物反射率估计误差

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摘要

Radiative transfer models must be combined with crop growth model for the latter to be recalibrated on each point of a regional domain using remote sensing data. However, radiative transfer model have parameters depending on vegetation and soil characteristics which vary spatially and temporally at a regional scale, but are gene:ally unknown;. Their estimaition leads to reflectance simulation errors. These errors are analyzed in this article for the visible and near-infrared part of the spectrum using the SAIL model for sugar beets. Two ways for estimating SAIL parameters were compared: One does not require any knowledge of magnitude and variability. The other one is based on rules developed from parameter distribution analysis and extra knowledge on soils and climate. The reflectance estimation error was very high for LAI<2.0 when no previous knowledge was assumed. Defining parameter values from soil, climate, and crop development knowledge considerably reduced errors and would be useful for application of reflectance models at the regional scale. The use of vegetation indices reduced the effects of parameter value uncertainty, but still benefited from improved parameter estimation. It was found that simple classification of crop and notably soil parameter values would be useful for application of reflectance models at the regional scale. Future work will deal with quantifying consequences when reflectance models are coupled to crop growth models for regional yield estimation. (C) Elsevier Science Inc., 1998. [References: 21]
机译:辐射传递模型必须与作物生长模型结合使用,以便后者可以使用遥感数据在区域域的每个点上进行重新校准。但是,辐射传输模型的参数取决于植被和土壤的特征,这些参数在区域范围内时空变化,但在基因上是未知的。它们的估计会导致反射率模拟错误。本文使用甜菜的SAIL模型对光谱的可见和近红外部分分析了这些误差。比较了两种估计SAIL参数的方法:一种不需要幅度和变异性的知识。另一个基于从参数分布分析以及对土壤和气候的额外知识中得出的规则。如果没有先验知识,则LAI <2.0的反射率估计误差非常高。从土壤,气候和作物发展知识中定义参数值可以大大减少误差,这对于在区域范围内应用反射率模型很有用。植被指数的使用减少了参数值不确定性的影响,但仍受益于改进的参数估计。结果发现,简单分类作物,特别是土壤参数值,对于在区域范围内应用反射率模型很有用。当反射率模型与作物生长模型结合起来用于区域产量估算时,未来的工作将处理量化后果。 (C)Elsevier Science Inc.,1998年。[参考:21]

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