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Trend estimation for complex survey designs of water chemistry indicators from Sierra Nevada Lakes

机译:内华达山脉湖泊水化学指标复杂调查设计的趋势估计

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摘要

Surveys for long-term monitoring programs managing natural resources often incorporate sampling design complexity. However, design weights are often ignored in trend models of data from complex sampling designs. Generalized random tessellation stratified samples of a simulated population of lakes are selected with various levels of survey design complexity, and three trend approaches are compared. We compare an unweighted trend model, linear regression models of the trend in design-based estimates of annual status, and a probability-weighted iterative generalized least squares (PWIGLS) approach with a linearization variance. The bias and confidence interval coverage of the trend estimate and the size and power of the trend test are used to evaluate weighted and unweighted approaches. We find that the unweighted approach often outperforms the other trend approaches by providing high power for trend detection and nominal confidence interval coverage of the true trend regression parameter. We also find that variance composition and revisit design structure affect the performance of the PWIGLS estimator. When a subpopulation exhibiting an extreme trend is sampled disproportionately to its occurrence in the population, the unweighted approach may produce biased estimates of trend with poor confidence interval coverage. We recommend considering variance composition and potential subpopulation trends when selecting sampling designs and trend analysis approaches.Electronic supplementary materialThe online version of this article (10.1007/s10661-018-6963-1) contains supplementary material, which is available to authorized users.
机译:管理自然资源的长期监测计划的调查通常会涉及抽样设计的复杂性。但是,在复杂采样设计的数据趋势模型中,设计权重通常被忽略。选择具有不同水平调查设计复杂度的模拟湖泊总体的广义随机镶嵌细分分层样本,并比较三种趋势方法。我们比较了未加权趋势模型,基于设计的年度状态估计中趋势的线性回归模型以及具有线性化方差的概率加权迭代广义最小二乘(PWIGLS)方法。趋势估计的偏差和置信区间覆盖范围以及趋势检验的大小和功效用于评估加权和未加权方法。我们发现,通过为趋势检测和真实趋势回归参数的名义置信区间覆盖率提供强大功能,非加权方法通常会优于其他趋势方法。我们还发现方差组成和重新访问设计结构会影响PWIGLS估算器的性能。如果在人口中与呈现出极端趋势的亚群不成比例地进行采样,则未加权方法可能会产生趋势估计偏差,且置信区间覆盖率较差。我们建议在选择抽样设计和趋势分析方法时考虑差异构成和潜在的亚群趋势电子补充材料本文的在线版本(10.1007 / s10661-018-6963-1)包含补充材料,授权用户可以使用。

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