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扩展密度表面模型以纳入多观察者和双观察者调查数据。

Extending density surface models to include multiple and double-observer survey data.

作者信息

Miller David L, Fifield David, Wakefield Ewan, Sigourney Douglas B

机构信息

Centre for Research into Ecological and Environmental Modelling and School of Mathematics and Statistics, University of St Andrews, St Andrews, Scotland.

Wildlife Research Division, Science and Technology Branch, Environment and Climate Change Canada, Mount Pearl, NL, Canada.

出版信息

PeerJ. 2021 Sep 2;9:e12113. doi: 10.7717/peerj.12113. eCollection 2021.

Abstract

Spatial models of density and abundance are widely used in both ecological research (., to study habitat use) and wildlife management (, for population monitoring and environmental impact assessment). Increasingly, modellers are tasked with integrating data from multiple sources, collected different observation processes. Distance sampling is an efficient and widely used survey and analysis technique. Within this framework, observation processes are modelled detection functions. We seek to take multiple data sources and fit them in a single spatial model. Density surface models (DSMs) are a two-stage approach: first accounting for detectability distance sampling methods, then modelling distribution a generalized additive model. However, current software and theory does not address the issue of multiple data sources. We extend the DSM approach to accommodate data from multiple surveys, collected conventional distance sampling, double-observer distance sampling (used to account for incomplete detection at zero distance) and strip transects. Variance propagation ensures that uncertainty is correctly accounted for in final estimates of abundance. Methods described here are implemented in the dsm R package. We briefly analyse two datasets to illustrate these new developments. Our new methodology enables data from multiple distance sampling surveys of different types to be treated in a single spatial model, enabling more robust abundance estimation, potentially over wider geographical or temporal domains.

摘要

密度和丰度的空间模型在生态研究(如用于研究栖息地利用)和野生动物管理(如用于种群监测和环境影响评估)中都有广泛应用。建模者越来越多地承担起整合来自不同观测过程的多个数据源的任务。距离抽样是一种高效且广泛使用的调查和分析技术。在此框架内,观测过程通过检测函数进行建模。我们试图采用多个数据源并将它们拟合到一个单一的空间模型中。密度表面模型(DSM)是一种两阶段方法:首先考虑距离抽样方法的可检测性,然后用广义相加模型对分布进行建模。然而,当前的软件和理论并未解决多个数据源的问题。我们扩展了DSM方法,以适应来自多种调查的数据,这些调查包括传统距离抽样、双观察者距离抽样(用于考虑零距离处的不完全检测)和样带调查。方差传播确保在丰度的最终估计中正确考虑不确定性。这里描述的方法在dsm R包中实现。我们简要分析两个数据集以说明这些新进展。我们的新方法能够在一个单一的空间模型中处理来自不同类型的多个距离抽样调查的数据,从而实现更稳健的丰度估计,可能在更广泛的地理或时间范围内进行。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/3ab1/8418794/c8e47824df13/peerj-09-12113-g001.jpg

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