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Spatial methods for plot-based sampling of wildlife populations

机译:基于样地的野生动植物种群空间采样方法

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摘要

Classical sampling methods can be used to estimate the mean of a finite or infinite population. Block kriging also estimates the mean, but of an infinite population in a continuous spatial domain. In this paper, I consider a finite population version of block kriging (FPBK) for plot-based sampling. The data are assumed to come from a spatial stochastic process. Minimizing mean-squared-prediction errors yields best linear unbiased predictions that are a finite population version of block kriging. FPBK has versions comparable to simple random sampling and stratified sampling, and includes the general linear model. This method has been tested for several years for moose surveys in Alaska, and an example is given where results are compared to stratified random sampling. In general, assuming a spatial model gives three main advantages over classical sampling: (1) FPBK is usually more precise than simple or stratified random sampling, (2) FPBK allows small area estimation, and (3) FPBK allows nonrandom sampling designs.
机译:可以使用经典的采样方法来估计有限或无限总体的均值。块克里金法还可以估计均值,但可以估计连续空间域中无限人口的均值。在本文中,我考虑了基于块抽样的有限总体版块克里金法(FPBK)。假定数据来自空间随机过程。最小化均方预测误差可产生最佳线性无偏预测,这是块克里金法的有限总体版本。 FPBK具有可与简单随机抽样和分层抽样相媲美的版本,并包括通用线性模型。该方法已经在阿拉斯加的驼鹿调查中进行了数年的测试,并给出了将结果与分层随机抽样进行比较的示例。通常,假设空间模型比传统采样具有三个主要优势:(1)FPBK通常比简单或分层随机采样更为精确;(2)FPBK允许小面积估计;(3)FPBK允许非随机采样设计。

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