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首页> 外文期刊>Canadian Journal of Forest Research >Comparison of estimators in one-phase two-stage Poisson sampling in forest inventories.
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Comparison of estimators in one-phase two-stage Poisson sampling in forest inventories.

机译:森林资源调查中一阶段两阶段Poisson抽样中估计量的比较。

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摘要

In the context of Poisson sampling, numerous adjustments to classical estimators have been proposed that are intended to compensate for inflated variance due to random sample size. However, such adjustments have never been applied to extensive forest inventories. This work investigates the performances of four estimators for the timber volume in one-phase two-stage forest inventories, where trees in the first stage are selected, at the plot level, by concentric circles or angle-count methods and a subset thereof are selected by Poisson sampling for further measurements to get a better estimation. The original two-stage estimator is the sum of two components: the first is the mean of Horwitz-Thompson estimators using simple volume approximations, based on diameter and species alone, of all first-stage trees in each inventory plot, and the second is the mean of Horwitz-Thompson estimators based on the differences between the simple volume approximations and refined volume determinations based on further diameter and height measurements on the second-stage trees within each inventory plot. This two-stage estimator is particularly useful because it provides unbiased estimates even if the simple prediction model is not correct, which is particularly important for small area estimation. The other three estimators rely on adjustments of the second component of the original estimator that are adapted from estimators proposed in the literature by L.R. Grosenbaugh and C.-E. Sarndal. It turns out that these adjustments introduce a negligible bias and that the original simple estimator performs just as well or even better than the new estimators with respect to the variance.Digital Object Identifier http://dx.doi.org/10.1139/x2012-110
机译:在泊松采样的情况下,已提出了对经典估计量的许多调整方法,这些方法旨在补偿由于随机样本量而引起的虚假方差。但是,这种调整从未应用于大量的森林清单。这项工作调查了一个阶段两阶段森林资源清查中四种估计量木材产量的性能,其中通过同心圆或角度计数方法在样地一级选择了第一阶段的树木,并选择了其中的一个子集。由Poisson采样进行进一步测量以获得更好的估计。最初的两阶段估计量是两个分量的总和:第一是Horwitz-Thompson估计量的均值,它仅使用简单的体积近似值(仅基于直径和物种)就计算了每个清单图中所有第一阶段树的数量,第二是Horwitz-Thompson估计量的均值,基于简单的体积近似值和精确的体积确定之间的差异,后者基于每个库存图中第二阶段树的进一步直径和高度测量。这种两阶段估计器特别有用,因为即使简单的预测模型不正确,它也可以提供无偏估计,这对于小面积估计尤其重要。其他三个估算器依赖于原始估算器第二部分的调整,该调整是根据L.R. Grosenbaugh和C.-E.萨恩达尔。事实证明,这些调整带来的偏差可以忽略不计,并且原始简单估计器在方差方面的表现与新估计器一样好甚至更好.Digital Object Identifier http://dx.doi.org/10.1139/x2012- 110

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