Combining prior and post‐release data while accounting for dispersal to improve predictions for reintroduction populations

IF 2.8 2区 环境科学与生态学 Q1 BIODIVERSITY CONSERVATION Animal Conservation Pub Date : 2024-05-25 DOI:10.1111/acv.12949
D. P. Armstrong, Z. L. Stone, E. H. Parlato, G. Ngametua, E. King, S. Gibson, S. Zieltjes, K. A. Parker
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Abstract

Attempts to reintroduce species to managed areas may be compromised by dispersal into the surrounding landscape. Therefore, decisions regarding the selection and ongoing management of reintroduction areas require predicting dispersal as well as the survival and reproduction rates of the species to be reintroduced. Dispersal can potentially be measured directly by tracking animals, but this is often impractical. However, dispersal can also be inferred from re‐sighting surveys done within reintroduction areas if such data are available from multiple areas with varying connectivity to the surrounding landscape, allowing apparent survival and recruitment to be modelled as a function of connectivity metrics. Here, we show how data from 10 previous reintroductions of a New Zealand passerine, the toutouwai (Petroica longipes), were used to predict population dynamics at a predator‐controlled reintroduction area with high connectivity, and predictions then updated using post‐release data. Bayesian hierarchical modelling of the previous data produced prior distributions for productivity, adult survival and apparent juvenile survival rates that accounted for random variation among areas as well as rat density and connectivity. The modelling of apparent juvenile survival as a function of connectivity allowed it to be partitioned into estimates of survival and fidelity. Bayesian updating based on post‐release data produced posterior distributions for parameters that were consistent with the priors but much more precise. The prior data also allowed the recruitment rate estimated in the new area to be partitioned into separate estimates for productivity, juvenile survival and juvenile fidelity. Consequently, it was possible to not only estimate population growth under current management, but also predict the consequences of reducing the scale or intensity of predator control, facilitating adaptive management. The updated model could then be used to predict population growth as a function of the connectivity and predator control regime at proposed reintroduction areas while accounting for random variation among areas.
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将释放前和释放后的数据结合起来,同时考虑到扩散因素,以改进对重新引入种群的预测
将物种重新引入管理区的尝试可能会因物种扩散到周围景观而受到影响。因此,有关选择和持续管理重新引入地区的决策需要预测重新引入物种的扩散以及存活率和繁殖率。可以通过追踪动物来直接测量散布情况,但这往往不切实际。不过,如果能从与周围景观连接性不同的多个区域获得此类数据,也可以通过在重新引入区域内进行的重见调查来推断散布情况,从而将表观存活率和招募率作为连接性指标的函数来建模。在这里,我们展示了如何利用新西兰以前 10 次重新引入的雀形目鸟类(Petroica longipes)的数据来预测一个由捕食者控制的高连通性重新引入地区的种群动态,然后利用释放后的数据更新预测结果。对之前的数据进行贝叶斯分层建模,得出了生产力、成鱼存活率和表观幼鱼存活率的先验分布,这些分布考虑了区域间的随机变化以及大鼠密度和连通性。将表观幼鼠存活率作为连通性的函数进行建模,可以将其划分为存活率和忠实率的估计值。基于释放后数据的贝叶斯更新得出的参数后验分布与先验数据一致,但更加精确。先验数据还允许将新区域的估计招募率划分为生产力、幼体存活率和幼体忠诚度的单独估计值。因此,不仅可以估计当前管理下的种群增长,还可以预测减少捕食者控制规模或强度的后果,从而促进适应性管理。更新后的模型可用于预测拟重引地区的种群增长,作为连接性和捕食者控制制度的函数,同时考虑地区间的随机变化。
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来源期刊
Animal Conservation
Animal Conservation 环境科学-生态学
CiteScore
7.50
自引率
5.90%
发文量
71
审稿时长
12-24 weeks
期刊介绍: Animal Conservation provides a forum for rapid publication of novel, peer-reviewed research into the conservation of animal species and their habitats. The focus is on rigorous quantitative studies of an empirical or theoretical nature, which may relate to populations, species or communities and their conservation. We encourage the submission of single-species papers that have clear broader implications for conservation of other species or systems. A central theme is to publish important new ideas of broad interest and with findings that advance the scientific basis of conservation. Subjects covered include population biology, epidemiology, evolutionary ecology, population genetics, biodiversity, biogeography, palaeobiology and conservation economics.
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