空间显式贝叶斯层次模型改进了对鸟类种群状况和趋势的估计

Adam C Smith, Allison D. Binley, Lindsay Daly, Brandon P M Edwards, Danielle Ethier, Barbara Frei, David Iles, Timothy D Meehan, Nicole L Michel, Paul A Smith
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引用次数: 0

摘要

种群趋势估计是北美鸟类保护评估的核心,它反映了自然界状态的重要变化。用于估计这些趋势的模型如果明确地考虑到监测数据的空间位置,将更有效和提供更多的保护信息。我们创建了一些用于北美鸟类长期监测数据的标准状态和趋势模型的空间明确版本。我们将空间模型与相同模型的更简单的非空间版本进行了比较,并将其与3个大范围监测项目的模拟数据和实际数据进行了拟合:北美繁殖鸟类调查(BBS)、圣诞鸟类统计和一系列我们称为迁徙滨鸟调查的项目。当数据较多时,所有模型均能较好地再现模拟趋势和人口轨迹,而当数据较少时,以及在局部趋势与范围平均值不同的地点,空间模型的表现较好。当与真实数据拟合时,空间模型揭示了有趣的空间趋势模式,例如最近在阿巴拉契亚山脉东部的人口增长(Antrostomus vociferus),这在非空间版本的结果中要明显得多。空间模型对物种选择的预测精度也高于非空间模型。空间显式的信息共享允许用更小的层来拟合模型,从而允许趋势中的细粒度模式。空间信息趋势将促进更多与当地相关的保护,突出保护成功和挑战的领域,并有助于产生和测试关于人口变化的空间依赖性驱动因素的假设。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Spatially explicit Bayesian hierarchical models improve estimates of avian population status and trends
Population trend estimates form the core of avian conservation assessments in North America and indicate important changes in the state of the natural world. The models used to estimate these trends would be more efficient and informative for conservation if they explicitly considered the spatial locations of the monitoring data. We created spatially explicit versions of some standard status and trend models applied to long-term monitoring data for birds across North America. We compared the spatial models to simpler non-spatial versions of the same models, fitting them to simulated data and real data from 3 broad-scale monitoring programs: the North American Breeding Bird Survey (BBS), the Christmas Bird Count, and a collection of programs we refer to as Migrating Shorebird Surveys. All the models generally reproduced the simulated trends and population trajectories when there were many data, and the spatial models performed better when there were fewer data and in locations where the local trends differed from the range-wide means. When fit to real data, the spatial models revealed interesting spatial patterns in trend, such as recent population increases along the Appalachian Mountains for the Eastern Whip-poor-will (Antrostomus vociferus), that were much less apparent in results from the non-spatial versions. The spatial models also had higher out-of-sample predictive accuracy than the non-spatial models for a selection of species using BBS data. The spatially explicit sharing of information allows fitting the models with much smaller strata, allowing for finer-grained patterns in trends. Spatially informed trends will facilitate more locally relevant conservation, highlight areas of conservation successes and challenges, and help generate and test hypotheses about the spatially dependent drivers of population change.
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