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A new semi-parametric method for autocorrelated age- and time-varying selectivity in age- structured assessment models

机译:一种新的半导体方法,用于年龄结构化评估模型中的自相关年龄和时变选择性

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摘要

Selectivity is a key parameter in stock assessments that describes how fisheries interact with different ages and sizes of fish. It is usually confounded with other processes (e.g., natural mortality and recruitment) in stock assessments and the assumption of selectivity can strongly affect stock assessment outcome. Here, we introduce a new semi-parametric selectivity method, which we implement and test in Stock Synthesis. This selectivity method includes a parametric component and an autocorrelated nonparametric component consisting of deviations from the parametric component. We explore the new selectivity method using two simulation experiments, which show that the two autocorrelation parameters for selectivity deviations of data-rich fisheries are estimable using either mixed-effect or simpler sample-based algorithms. When selectivity deviations of a data-rich fishery are highly autocorrelated, using the new method to estimate the two autocorrelation parameters leads to more precise estimations of spawning biomass and fully selected fishing mortality. However, this new method fails to improve model performance in low data quality cases where measurement error in the data overwhelms the pattern caused by the autocorrelated process. Finally, we use a case study involving North Sea herring (Clupea harengus) to show that our new method substantially reduces autocorrelations in the Pearson residuals in fit to age composition data.
机译:选择性是股票评估中的关键参数,描述了渔业如何与鱼类不同的鱼类交互。它通常与股票评估中的其他过程(例如,自然死亡率和招聘)混淆,选择性的假设能够强烈影响股票评估结果。在这里,我们介绍了一种新的半参数选择性方法,我们在库存合成中实施和测试。该选择性方法包括参数分量和由与参数分量的偏差组成的自相关的非参数组件。我们探讨了使用两个模拟实验的新选择性方法,表明数据丰富的渔业的选择性偏差的两个自相关参数是使用混合效应或基于样本的算法的估计。当数据丰富的渔业的选择性偏差高度自相关时,使用新方法估计两个自相关参数导致产卵生物质的更精确估计和完全选择的捕捞死亡率。但是,这种新方法无法提高低数据质量情况下的模型性能,其中数据中的测量误差压倒由自相关过程引起的模式。最后,我们使用涉及北海鲱鱼(Clupea Harengus)的案例研究表明我们的新方法大大减少了Pearson残差中的自相关,以适合年龄组成数据。

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  • 作者单位

    Univ Washington Sch Aquat &

    Fishery Sci Box 355020 Seattle WA 98105 USA;

    NOAA Fishery Resource Anal &

    Monitoring Div Northwest Fisheries Sci Ctr Natl Marine Fisheries Serv 2725 Montlake Blvd East Seattle WA 98112 USA;

    NOAA Stock Assessments Natl Marine Fisheries Serv 2725 Montlake Blvd East Seattle WA 98112 USA;

    NOAA Fishery Resource Anal &

    Monitoring Div Northwest Fisheries Sci Ctr Natl Marine Fisheries Serv 2725 Montlake Blvd East Seattle WA 98112 USA;

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  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 水产、渔业;
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