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首页> 外文期刊>Frontiers in Marine Science >The Importance of Environmental Exposure History in Forecasting Dungeness Crab Megalopae Occurrence Using J-SCOPE, a High-Resolution Model for the US Pacific Northwest
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The Importance of Environmental Exposure History in Forecasting Dungeness Crab Megalopae Occurrence Using J-SCOPE, a High-Resolution Model for the US Pacific Northwest

机译:环境暴露史与J-Scope,美国太平洋西北地区高分辨率模型预测肿瘤蟹巨大发生的重要性

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摘要

The Dungeness crab (Metacarcinus magister) fishery is one of the highest value fisheries in the US Pacific Northwest, but its catch size fluctuates widely across years. Although the underlying causes of this wide variability are not well understood, the abundance of M. magister megalopae has been linked to recruitment into the adult fishery four years later. These pelagic megalopae are exposed to a range of ocean conditions during their dispersal period, which may drive their occurrence patterns. Environmental exposure history has been found to be important for some pelagic organisms, so we hypothesized that inclusion of environmental exposure history would improve our ability to predict inter-annual variability in M. magister megalopae occurrence patterns compared to using 'in situ' conditions alone. We combined eight years of local observations of M. magister megalopae and regional simulations of ocean conditions to model megalopae occurrence using a generalized linear model (GLM) framework. The modeled ocean conditions were extracted from J-SCOPE, a high-resolution coupled physical-biogeochemical model. The analysis included variables from J-SCOPE identified in the literature as important for larval crab occurrence: temperature, salinity, dissolved oxygen concentration, nitrate concentration, phytoplankton concentration, pH, aragonite and calcite saturation state. GLMs were developed with either in situ ocean conditions or environmental exposure histories generated using particle tracking experiments. We found that inclusion of exposure history improved the ability of the GLMs to predict megalopae occurrence 98% of the time. Of the five swimming behaviors used to simulate megalopae dispersal, four behaviors generated GLMs with the best fits to the observations, so a biological ensemble of these models was constructed. When the biological ensemble was used for forecasting, the model showed skill in predicting megalopae occurrence (AUC = 0.94). Our results highlight the importance of including exposure history in larval occurrence modeling and help provide a method for predicting pelagic megalopae occurrence. This work is a step towards developing a forecast product to support management of the fishery.
机译:Dungension Crab(Metacarcinus Magister)渔业是美国太平洋西北部最高的渔业之一,但其捕捞量跨越多年来波动。虽然这种广泛变异性的潜在原因尚不清楚,但在四年后甲状腺魔法玛戈莫加甲的丰富与招聘征收到成人渔业。在分散期间,这些脑膜巨大暴露于一系列海洋状况,这可能会驱动其发生模式。已经发现环境暴露史对于某些脑皮生物来说是重要的,因此我们假设包含环境暴露史会提高我们在与单独使用“原位”条件的情况下预测Mm. Magister巨大发生模式的年度变异性的能力。我们组合八年的麦克马罗德巨大观察,使用广义线性模型(GLM)框架来模拟巨大的发生巨大的肿瘤态度。从J范围内提取了模拟的海洋状况,高分辨率耦合物理生物地球化学模型。该分析包括在文献中鉴定的J-SCOPE的变量,这对于幼虫螃蟹发生至关重要:温度,盐度,溶解氧浓度,硝酸盐浓度,浮游植物浓度,pH,化石和方解石饱和状态。通过使用粒子跟踪实验产生的环境暴露历史而开发了GLMS。我们发现包含曝光史提高了GLMS预测98%的巨大发生的能力。在用于模拟巨大分散的五种游泳行为中,四种行为产生了最适合观察的GLM,因此构建了这些模型的生物学集合。当生物合奏用于预测时,该模型显示了预测巨甲虫发生的技巧(AUC = 0.94)。我们的结果突出了幼虫发生模拟中包括暴露史的重要性,并有助于提供一种预测骨质肿瘤发生的方法。这项工作是开发预测产品以支持渔业管理的一步。

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