首页> 外文期刊>Transactions of the American Fisheries Society >Modeling annual growth variation using a hierarchical Bayesian approach and the von Bertalanffy growth function, with application to lake trout in southern Lake Huron.
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Modeling annual growth variation using a hierarchical Bayesian approach and the von Bertalanffy growth function, with application to lake trout in southern Lake Huron.

机译:使用分级贝叶斯方法和von Bertalanffy增长函数对年增长变化进行建模,并将其应用于休伦湖南部的鳟鱼。

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摘要

We compared two models for time-varying growth using a hierarchical Bayesian approach to inference. Both models were derived from the same time-invariant von Bertalanffy growth function (VBGF), and our model comparisons were based on the deviance information criterion. We fit models to length and age data for 15,675 individual lake trout Salvelinus namaycush collected during annual spring gill-net surveys in southern Lake Huron from 1976 to 2004. We found that a model structured with both year and cohort effects outperformed a model that only used the same year-specific VBGF parameters for all age-groups. For the better model, the full version that allowed all VBGF parameters to vary over time also outperformed alternatives for which some parameters were constant. Length at age changed greatly over the 1976-2004 period, and in some years different ages changed in different directions. These complex patterns, which were due to the combination of cohort-specific growth and year-specific changes in growth environment, were well captured by our model. When we modeled growth as varying over time, inferences about VBGF parameters differed between the two models, and correlations among VBGF parameters also differed from the usually reported relations based on time-invariant models.
机译:我们使用分级贝叶斯方法对两种模型随时间变化的增长进行了比较。这两个模型均来自相同的时不变冯·贝塔朗菲增长函数(VBGF),我们的模型比较是基于偏差信息准则。我们对模型进行了拟合,以适合1976年至2004年在休伦湖南部春季春季刺网调查中收集的15,675条单个湖鳟Salvelinus namaycush的体长和年龄数据。我们发现,具有年和队列效应的模型均优于仅使用所有年龄段的特定年份VBGF参数相同。对于更好的模型,允许所有VBGF参数随时间变化的完整版本也优于某些参数恒定的替代版本。在1976-2004年期间,年龄的长度发生了很大的变化,并且在某些年份中,不同的年龄朝着不同的方向变化。这些复杂的模式是由特定群体的增长和特定年份的增长环境变化共同导致的,我们的模型很好地捕获了这些模式。当我们将增长建模为随时间变化时,两个模型之间关于VBGF参数的推论不同,并且VBGF参数之间的相关性也不同于基于时不变模型的通常报道的关系。

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