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Spatial sampling on streams: principles for inference on aquatic networks

机译:流上的空间采样:水生网络的推理原理

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For ecological and environmental data, prior inquiries into spatial sampling designs have considered two-dimensional domains and have shown that design optimality depends on the characteristics of the target spatial domain and intended inference. The structure and water-driven continuity of streams prompted the development of spatial autocovariance models for stream networks. The unique properties of stream networks, and their spatial processes, warrant evaluation of sampling design characteristics in comparison with their two-dimensional counterparts. Common inference scenarios in stream networks include spatial prediction, estimation of fixed effects parameters, and estimation of autocovariance parameters, with prediction and fixed effects estimation most commonly coupled with autocovariance parameter estimation. We consider these inference scenarios under a suite of network characteristics and stream-network spatial processes. Our results demonstrate, for parameter estimation and prediction, the importance of collecting samples from specific network locations. Additionally, our results mirror aspects from the prior two-dimensional sampling design inquiries, namely, the importance of collecting some samples within clusters when autocovariance parameter estimation is required. These results can be applied to help refine sample site selection for future studies and further showcase that understanding the characteristics of the targeted spatial domain is essential for sampling design planning. Published 2014. This article has been contributed to by US Government employees and their work is in the public domain in the USA.
机译:对于生态和环境数据,先前对空间采样设计的询问已经考虑了二维域,并表明设计的最佳性取决于目标空间域的特征和预期的推论。流的结构和水驱动的连续性促进了流网络空间自协方差模型的发展。流网络的独特属性及其空间过程,保证了与二维对应网络相比采样设计特征的评估。流网络中的常见推理方案包括空间预测,固定效应参数估计和自协方差参数估计,其中预测和固定效应估计最常见地与自协方差参数估计结合在一起。我们在一系列网络特征和流网络空间过程下考虑这些推理方案。我们的结果表明,对于参数估计和预测而言,从特定网络位置收集样本的重要性。另外,我们的结果反映了先前二维采样设计查询的各个方面,即,当需要进行自协方差参数估计时,在群集内收集一些样本的重要性。这些结果可用于帮助完善样本地点选择,以供将来研究,并进一步证明,了解目标空间域的特征对于样本设计规划至关重要。 2014年发布。本文由美国政府雇员提供,其工作属于美国的公共领域。

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