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一种用于估计虹鳟鱼洄游和数量的贝叶斯嵌套斑块占用模型。

A Bayesian nested patch occupancy model to estimate steelhead movement and abundance.

作者信息

Waterhouse Lynn, White Jody, See Kevin, Murdoch Andrew, Semmens Brice X

机构信息

Scripps Institution of Oceanography, University of California San Diego, 9500 Gilman Drive #0202, La Jolla, California, 92093-0202, USA.

John G. Shedd Aquarium, 1200 South Lake Shore Drive, Chicago, Illinois, 60605, USA.

出版信息

Ecol Appl. 2020 Dec;30(8):e02202. doi: 10.1002/eap.2202. Epub 2020 Aug 2.

Abstract

Anthropogenic impacts on riverine systems have, in part, led to management concerns regarding the population status of species using these systems. In an effort to assess the efficacy of restoration actions, and in order to improve monitoring of species of concern, managers have turned to PIT (passive integrated transponder) tag studies with in-stream detectors to monitor movements of tagged individuals throughout river networks. However, quantifying movements in a river network using PIT tag data with incomplete coverage and imperfect detections presents a challenge. We propose a flexible Bayesian analytic framework that models the imperfectly detected movements of tagged individuals in a nested PIT tag array river network. This model structure provides probabilistic estimates of up-stream migration routes for each tagged individual based on a set of underlying nested state variables. These movement estimates can be converted into abundance estimates when an estimate of abundance is available for a location within the river network. We apply the model framework to data from steelhead (Oncorhynchus mykiss) in the Upper Columbia River basin and evaluate model performance (precision/variance of simulated population sizes) as a function of population tagging rates and PIT tag array detection probability densities within the river system using a simulation framework. This simulation framework provides both model validation (precision) and the ability to evaluate expected performance improvements (variance) due to changes in tagging rates or PIT receiver array configuration. We also investigate the impact of different network configurations on model estimates. Results from such investigations can help inform decisions regarding future monitoring and management.

摘要

人类活动对河流系统的影响,在一定程度上引发了人们对利用这些系统的物种种群状况的管理担忧。为了评估恢复行动的成效,并改进对相关物种的监测,管理人员转向了使用河流内探测器的被动集成应答器(PIT)标签研究,以监测被标记个体在整个河网中的移动情况。然而,利用覆盖不完整且检测不完善的PIT标签数据来量化河网中的移动情况是一项挑战。我们提出了一个灵活的贝叶斯分析框架,该框架对嵌套PIT标签阵列河网中被标记个体检测不完善的移动情况进行建模。这种模型结构基于一组潜在的嵌套状态变量,为每个被标记个体提供上游迁移路线的概率估计。当河网内某个位置的丰度估计可用时,这些移动估计可以转换为丰度估计。我们将该模型框架应用于哥伦比亚河上游流域虹鳟(Oncorhynchus mykiss)的数据,并使用模拟框架评估模型性能(模拟种群大小的精度/方差)作为种群标记率和河流系统内PIT标签阵列检测概率密度的函数。这个模拟框架既提供了模型验证(精度),也具备评估由于标记率或PIT接收器阵列配置变化而带来的预期性能提升(方差)的能力。我们还研究了不同网络配置对模型估计的影响。此类调查结果有助于为未来监测和管理决策提供参考。

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