School of Biological, Earth and Environmental Sciences, University College Cork, Cork, Ireland.
MaREI Centre, Environmental Research Institute, University College Cork, Ringaskiddy, Ireland.
PLoS One. 2019 Aug 27;14(8):e0221625. doi: 10.1371/journal.pone.0221625. eCollection 2019.
Sampling approaches used to census and monitor populations of flora and fauna are diverse, ranging from simple random sampling to complex hierarchal stratified designs. Usually the approach taken is determined by the spatial and temporal distribution of the study population, along with other characteristics of the focal species. Long-term monitoring programs used to assess seabird population trends are facilitated by their high site fidelity, but are often hampered by large and difficult to access colonies, with highly variable densities that require intensive survey. We aimed to determine the sampling effort required to (a) estimate population size with a high degree of confidence, and (b) detect different scenarios of population change in a regionally important species in the Atlantic, the Manx shearwater (Puffinus puffinus). Analyses were carried out using data collected from tape-playback surveys on four islands in the North Atlantic. To explore how sampling effort influenced confidence around abundance estimates, we used the heuristic approach of imagining the areas sampled represented the total population, and bootstrapped varying proportions of subsamples. This revealed that abundance estimates vary dramatically when less than half of all plots (n dependent on the size of the site) is randomly subsampled, leading to an unacceptable lack of confidence in population estimates. Confidence is substantially improved using a multi-stage stratified approach based on previous information on distribution in the colonies. In reality, this could lead to reducing the number of plots required by up to 80%. Furthermore, power analyses suggested that random selection of monitoring plots using a matched pairs approach generates little power to detect overall population changes of 10%, and density-dependent changes as large as 50%, because variation in density between plots is so high. Current monitoring programs have a high probability of failing to detect population-level changes due to inappropriate sampling efforts. Focusing sampling in areas of high density with low plot to plot variance dramatically increases the power to detect year to year population change, albeit at the risk of not detecting increases in low density areas, which may be an unavoidable strategy when resources are limited. We discuss how challenging populations with similar features to seabirds might be censused and monitored most effectively.
用于对动植物种群进行普查和监测的采样方法多种多样,从简单的随机抽样到复杂的层次分层设计都有。通常,所采用的方法取决于研究种群的空间和时间分布,以及焦点物种的其他特征。长期监测计划用于评估海鸟种群趋势,这得益于它们对栖息地的高度忠诚,但通常会受到大型且难以进入的栖息地的阻碍,这些栖息地的密度变化很大,需要进行密集调查。我们的目的是确定采样工作所需的努力程度,以 (a) 高度置信地估计种群规模,以及 (b) 检测大西洋重要物种曼岛剪水鹱(Puffinus puffinus)的不同种群变化情况。分析是使用在北大西洋四个岛屿上进行的播放录音调查数据进行的。为了探讨采样工作对丰度估计的置信度的影响,我们使用了一种启发式方法,即想象采样区域代表了整个种群,并对不同比例的子样本进行了自举。这表明,当少于一半的所有样方(n 取决于样方面积的大小)被随机抽样时,丰度估计会发生巨大变化,导致对种群估计的置信度极低。使用基于以前在栖息地分布信息的多阶段分层方法,置信度会大大提高。实际上,这可能会导致所需样方数量减少多达 80%。此外,功率分析表明,使用匹配对方法随机选择监测样方,检测总体种群变化 10%和密度依赖变化 50%的能力很小,因为样方之间的密度变化非常大。由于采样工作不当,当前的监测计划很可能无法检测到种群水平的变化。在密度高、样方之间方差低的区域集中采样,可以显著提高检测年度种群变化的能力,尽管存在无法检测到低密度区域变化的风险,这在资源有限的情况下可能是不可避免的策略。我们讨论了如何最有效地对具有类似海鸟特征的挑战性种群进行计数和监测。