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Comparing spatial distribution modelling of fisheries data with single-area or spatially-explicit integrated population models, a case study of toothfish in the Ross Sea region

机译:将渔业数据与单区域或空间显式综合人口模型的空间分布建模进行比较,罗斯海域牙鱼的案例研究

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Most models used for assessing the status of fish stocks and providing quantitative advice for fisheries management are not spatially explicit despite the well-known spatial heterogeneity of fish populations. Statistical spatial distribution modelling, which can derive spatially-resolved biomass from catch rates, is a method increasingly used to infer trends in population biomass, particularly where integrated population models are not available. Although the spatial distribution modelling tool VAST was developed to analyze survey data, such methods have also been used with fisheries-dependent catch and effort data, particularly when survey data are not available. We developed a statistical spatial distribution model for Antarctic toothfish (Dissostichus mawsoni) in the Ross Sea region of the Southern Ocean using the VAST (Vector Autoregressive Spatio-Temporal model) approach. We based the VAST model on catch-rate (catch per unit effort) data from the long-line fishery and compared the biomass time series obtained to that of existing single-area and spatially-explicit integrated population models which have also been developed for this population. The time series obtained from the statistical spatial distribution modelling approach was highly variable between years, inconsistent with constraints imposed on population dynamics by biological parameters, and substantially different from biomass trends obtained from the integrated models. Although it has been used successfully in other analyses, in this instance, the spatial distribution modelling could not overcome fine-scale spatial and vessel-based variability in fishery catch rates to estimate the underlying abundance of toothfish at the scale of the Ross Sea region measurable with the more-informed integrated models.
机译:尽管鱼群的众所周知的空间异质性,但大多数用于评估鱼类库存的现状和为渔业管理提供量化建议的模型也不会在空间上进行清晰。统计空间分布建模,其可以从捕获率中得出空间分离的生物质,是一种越来越多地用于推断人口生物质的趋势的方法,特别是在没有综合人口模型的情况下。虽然空间分布建模工具广泛开发用于分析调查数据,但这些方法也已与渔业依赖捕获和努力数据一起使用,特别是当调查数据不可用时。我们使用广阔(Vector Futorygerive Spatio-Temporal Model)方法在南海的罗斯海域罗斯海地区开发了南极牙床(Dissrosichus Mawsoni)的统计空间分布模型。我们基于庞大的捕获率(每单位努力)来自长线渔业的数据模型,并将生物量时间系列与现有的单区域和空间显式综合群体模型进行了比较,这也为此开发了人口。从统计空间分布建模方法获得的时间序列在几年之间具有高度变化,对通过生物参数对人口动态产生的限制不一致,并且与从集成模型获得的生物量趋势基本上不同。虽然它已在其他分析中成功使用,但在这种情况下,空间分布模型无法克服渔业捕捞速率的微量空间和船舶的可变性,以估计罗斯海域的规模可测量的牙床下面的牙床使用更明智的集成模型。

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