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首页> 外文期刊>Fisheries science >Using a multivariate auto-regressive state-space (MARSS) model to evaluate fishery resources abundance in the East China Sea, based on spatial distributional information
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Using a multivariate auto-regressive state-space (MARSS) model to evaluate fishery resources abundance in the East China Sea, based on spatial distributional information

机译:基于空间分布信息,使用多元自回归状态空间(MARSS)模型评估东海渔业资源丰富度

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The abundance index (AI) is a representative indicator used to assess the state of fishery resources. Conventional AI is generally calculated by summing the catch per unit of effort (CPUE) weighted by the size of each fishing area. However, CPUE data has many missing values owing to annual changes in operational fishing areas, and this can lead to a considerable bias in the estimated AI. To obtain an unbiased AI, a multivariate auto-regressive state-space (MARSS) model was used to estimate and interpolate missing values in a spatially arranged, long-term bottom-trawl CPUE dataset for yellow seabream Dentex hypselosomus and largehead hairtail Trichiurus japonicus in the East China Sea. As expected, increasing the number of analyzed fishing grids improved interpolation accuracy, but remarkably increased the time required for the analysis. Reducing the maximum number of expectation–maximization (EM) iterations in the maximum likelihood procedure was an effective way to practically reduce analysis time, while keeping the accuracy of the estimation. Thus, this EM-reduction MARSS model was applied to the entire CPUE datasets of yellow seabream and largehead hairtail to address the annual shifts in their AIs and their seasonal migration.
机译:丰度指数(AI)是用于评估渔业资源状况的代表性指标。常规AI通常是通过将每单位工作量的捕获量(CPUE)乘以每个捕鱼区的大小加权得出的。但是,由于作业捕鱼区的年度变化,CPUE数据缺少许多值,这可能导致估计的AI出现较大偏差。为了获得无偏差的AI,使用多元自回归状态空间(MARSS)模型来估计和插值空间分布的长期海底拖网CPUE数据集中的缺失值,这些数据是黄鲷Dentex hypselosomus和large鱼Trichiurus japonicus东海。不出所料,增加分析的渔网的数量可以提高插值的准确性,但显着增加了分析所需的时间。在最大似然法中,减少期望最大化(EM)迭代的最大次数是有效减少分析时间,同时又保持估计准确性的有效方法。因此,将这种减少电磁场的MARSS模型应用于黄鲷和large鱼的整个CPUE数据集,以解决其AI的年度变化和季节性迁徙。

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