Model-Based Distance Sampling

被引:0
|
作者
S. T. Buckland
C. S. Oedekoven
D. L. Borchers
机构
[1] University of St Andrews, Centre for Research into Ecological and Environmental Modelling, The Observatory, Buchanan Gardens
关键词
Distance sampling; Line transect sampling; Model-based inference; Point transect sampling;
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学科分类号
摘要
Conventional distance sampling adopts a mixed approach, using model-based methods for the detection process, and design-based methods to estimate animal abundance in the study region, given estimated probabilities of detection. In recent years, there has been increasing interest in fully model-based methods. Model-based methods are less robust for estimating animal abundance than conventional methods, but offer several advantages: they allow the analyst to explore how animal density varies by habitat or topography; abundance can be estimated for any sub-region of interest; they provide tools for analysing data from designed distance sampling experiments, to assess treatment effects. We develop a common framework for model-based distance sampling, and show how the various model-based methods that have been proposed fit within this framework.
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页码:58 / 75
页数:17
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