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首页> 外文期刊>ICES Journal of Marine Science >Modelling the variability in fish spatial distributions over time with empirical orthogonal functions: anchovy in the Bay of Biscay
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Modelling the variability in fish spatial distributions over time with empirical orthogonal functions: anchovy in the Bay of Biscay

机译:使用经验正交函数对鱼类空间分布随时间的变化建模:比斯开湾的the鱼

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Characterizing the space- time variability in spatial distributions as well as understanding its drivers is basic to designing robust spatial management plans. As a prerequisite, we analyse here how this variability relates to population dynamics in conjunction with environmental conditions. For that, spatio-temporal statistical approaches are needed but seldom used in fisheries science. To fill this gap, we showcase the usefulness of the method of empirical orthogonal functions (EOFs). Guidelines are given to apply the method on a series of gridded maps as derived from fisheries survey data-series that now span over decades. The method is applied to the series, 2000 - 2012, of the spatial distributions of European anchovy in the Bay of Biscay at spawning time. Across the series, the EOF decomposition allowed to identify three main types of spatial distributions. One type corresponded to an extended distribution, another to a restricted distribution in core areas, and the third to a very coastal distribution. The coastal spawning distribution corresponded to a low population growth rate as it was never followed by a large recruitment in the subsequent year. We did not attempt to explain the spatial patterns per se but the drivers of change from one type of distribution to another. Stock size and fish size as well as bottom temperature and water column stratification were the covariates that controlled the variability in the spatial distributions over time. Further, the spatial distribution at spawning time related to recruitment in the following year, meaning that variability in the spatial distribution of spawning affected population dynamics. The typology of maps based on EOF decomposition summarized this spatial variability into spatial spawning configurations, which may serve spatial planning.
机译:表征空间分布中的时空变异性并了解其驱动力是设计稳健的空间管理计划的基础。前提条件是,我们在这里分析这种可变性与环境条件下种群动态的关系。为此,需要时空统计方法,但很少在渔业科学中使用。为了填补这一空白,我们展示了经验正交函数(EOF)方法的实用性。给出了将这种方法应用于一系列网格地图的准则,这些网格地图来源于数十年来的渔业调查数据系列。该方法适用于2000-2012年比斯开湾产卵时欧洲European鱼的空间分布系列。在整个系列中,EOF分解可以识别三种主要的空间分布类型。一种对应于扩展分布,另一种对应于核心区域的受限分布,第三种对应于非常沿海的分布。沿海产卵区的分布与人口增长率较低相对应,因为在随后的一年中从未出现大规模的征募。我们并没有尝试解释空间格局本身,而是解释了从一种分布类型变为另一种分布类型的驱动因素。种群大小和鱼类大小以及底部温度和水柱分层是控制空间分布随时间变化的协变量。此外,产卵时间的空间分布与第二年的征聘有关,这意味着产卵空间分布的变化会影响种群动态。基于EOF分解的地图类型学将这种空间变异性总结为空间生成构型,可以为空间规划服务。

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