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Retrieving albedo in small sample size

机译:在小样本大小中检索Albedo

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摘要

A new criteria for kernels' selection in Ambrals model is provided. Instead of using "least square" methods, "least variance" of white albedo which derived from Tarantola's information theory is used. Several tests showed "least variance" had many advantages. First, it is less sensitive to noise. Second, it operated well with a small sample size. Third, it is less sensitive to the sampling position.
机译:提供了在AMBRALS模型中的内核选择的新标准。使用来自衍生自Tarantola信息理论的白色Albedo的“最小方差”而不是使用“最小二乘法”。几次测试显示出“最小差异”具有许多优点。首先,它对噪声敏感。其次,它具有小的样本大小良好。第三,它对采样位置敏感。

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