Adapting standardized trout monitoring to a changing climate for the upper Yellowstone River, Montana, USA

IF 1.3 4区 农林科学 Q3 FISHERIES
Michelle A. Briggs, Hayley C. Glassic, Christopher S. Guy, Scott T. Opitz, Jay J. Rotella, David A. Schmetterling
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Abstract

ObjectiveLong‐term standardized monitoring programs are fundamental to assessing how fish populations respond to anthropogenic stressors. Standardized monitoring programs may need to adopt new methods to adapt to rapid environmental changes that are associated with a changing climate. In the upper Yellowstone River, Montana, biologists have used a standardized, mark–recapture monitoring protocol to annually estimate the abundance of trout since 1978 to assess population status and trends. However, within the past two decades, climate change has caused changes in discharge timing that have prevented standardized monitoring from occurring annually.MethodsWe investigated the feasibility of using two analytical methods, N‐mixture models and mean capture probability, for estimating the abundance of three trout species in the upper Yellowstone River using the historical long‐term data set; these methods allow abundance to be estimated when a mark–recapture estimate cannot be obtained due to hydrologic conditions.ResultWhen compared with abundance estimates from mark–recapture methods, N‐mixture models most often resulted in negatively biased abundance estimates, whereas mean capture probability analyses resulted in positively biased abundance estimates. Additionally, N‐mixture models produced negatively biased estimates when tested against true abundance values from simulated data sets. The bias in the N‐mixture model estimates was caused by poor model fit and variation in capture probability. The bias in the mean capture probability estimates was caused by heterogeneity in capture probability, likely caused by variable environmental conditions, which were not accounted for in the models.ConclusionN‐mixture models and mean capture probability are not viable alternatives for estimating abundance in the upper Yellowstone River. Thus, exploring additional adaptations to sampling methodologies and analytical approaches, including models that require individually marked fish, will be valuable for this system. Climate change will undoubtedly necessitate changes to standardized sampling methods throughout the world; thus, developing alternative sampling and analytical methods will be important for maintaining the utility of long‐term data sets.
美国蒙大拿州黄石河上游标准化鳟鱼监测适应不断变化的气候
目标长期标准化监测计划是评估鱼类种群如何应对人为压力因素的基础。标准化监测计划可能需要采用新的方法,以适应与气候变化相关的快速环境变化。在蒙大拿州黄石河上游,自 1978 年以来,生物学家每年都会使用标准化的标记重捕监测方案来估算鳟鱼的丰度,以评估种群状况和趋势。方法我们研究了使用两种分析方法(N-混合物模型和平均捕获概率)的可行性,利用历史长期数据集估算黄石河上游三种鳟鱼的丰度;当由于水文条件而无法获得标记再捕获估算值时,可以使用这些方法估算丰度。结果与标记再捕获方法得出的丰度估计值相比,N-混杂模型最常导致丰度估计值出现负偏差,而平均捕获概率分析则导致丰度估计值出现正偏差。此外,在用模拟数据集的真实丰度值进行测试时,N-混合物模型产生了负偏差的估计值。N 混合物模型估计值的偏差是由模型拟合不良和捕获概率变化造成的。平均捕获概率估计值的偏差是由捕获概率的异质性造成的,这可能是由环境条件的变化造成的,而模型中没有考虑到这一点。因此,探索更多适应采样方法和分析方法,包括需要单独标记鱼类的模型,对这一系统将很有价值。气候变化无疑会导致全球标准化取样方法的改变;因此,开发替代性取样和分析方法对于保持长期数据集的实用性非常重要。
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来源期刊
CiteScore
2.60
自引率
18.20%
发文量
118
审稿时长
2 months
期刊介绍: The North American Journal of Fisheries Management promotes communication among fishery managers with an emphasis on North America, and addresses the maintenance, enhancement, and allocation of fisheries resources. It chronicles the development of practical monitoring and management programs for finfish and exploitable shellfish in marine and freshwater environments. Contributions relate to the management of fish populations, habitats, and users to protect and enhance fish and fishery resources for societal benefits. Case histories of successes, failures, and effects of fisheries programs help convey practical management experience to others.
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