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Statistical sampling approaches for soil monitoring

机译:用于土壤监测的统计抽样方法

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This paper describes three statistical sampling approaches for regional soil monitoring, a design-based, a model-based and a hybrid approach. In the model-based approach a space-time model is exploited to predict global statistical parameters of interest such as the space-time mean. In the hybrid approach this model is a time-series model of the spatial means. In the design-based approach no model is used: estimates are model-free. Full design-based inference requires that both sampling locations and times are selected by probability sampling, whereas the hybrid approach requires probability sampling of locations only. In a case study on soil eutrophication and acidification, a rotational panel design was implemented with probability sampling of locations and non-probability sampling of times. The hybrid and model-based predictions of the space-time means and trend of the mean for pH and ammonium at three depths in the soil profile were very similar. For pH the standard errors of the space-time means were about equal, but for ammonium the full model-based predictor was more precise than the hybrid predictor. For soil monitoring I advocate the selection of sampling locations by probability sampling so that the statistical inference approach is flexible. Selecting locations by a self-weighting probability sampling design ensures that the model-based predictor is not affected by selection bias.
机译:本文介绍了三种用于区域土壤监测的统计抽样方法,基于设计的方法,基于模型的方法和混合方法。在基于模型的方法中,利用时空模型来预测感兴趣的全局统计参数,例如时空平均值。在混合方法中,该模型是空间均值的时间序列模型。在基于设计的方法中,不使用任何模型:估算值是无模型的。完全基于设计的推理要求通过概率采样选择采样位置和时间,而混合方法仅需要位置的概率采样。在土壤富营养化和酸化的案例研究中,采用位置概率采样和时间非概率采样的旋转面板设计。在土壤剖面的三个深度处,pH和铵的时空均值以及均值趋势的混合和基于模型的预测非常相似。对于pH值,时空平均值的标准误差大约相等,但是对于铵盐,基于完整模型的预测器比混合预测器更为精确。对于土壤监测,我主张通过概率采样选择采样位置,以便统计推断方法具有灵活性。通过自加权概率抽样设计选择位置可确保基于模型的预测变量不受选择偏差的影响。

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