首页> 外文期刊>Canadian Journal of Fisheries and Aquatic Sciences >Using hidden Markov models to infer vessel activities in the snow crab (Chionoecetes opilio) fixed gear fishery and their application to catch standardization
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Using hidden Markov models to infer vessel activities in the snow crab (Chionoecetes opilio) fixed gear fishery and their application to catch standardization

机译:使用隐马尔可夫模型推断雪蟹(Chionoecetes opilio)固定渔具中的船只活动及其在实现标准化中的应用

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Tracking vessel movements has become increasingly important in fisheries research to identify fishing grounds, monitor responses to area closures, and other actions for fishery managers. Vessel monitoring systems (VMS) have given fishery managers and researchers the ability to study vessel interactions by automated tracking of vessels throughout fishing seasons. The high spatial and temporal resolution obtained from VMS records in the Gulf of St. Lawrence snow crab (Chionoecetes opilio) fishery provides information on movement patterns and fishing locations. With the use of hidden Markov models (HMM), we inferred behaviours exhibited by the fishermen during the course of fishing trips and related these behaviours to catch rates across years with varying abundance estimates. TheHMMclassified three behavioural states in the VMS data that were identified with travelling, setting traps in novel locations (new sets), and retrieving previously set traps (resets). Catches within a trip were modeled by combining VMS-based estimates of these behaviours with logbook information in a generalized linear model. Our model demonstrates that behavioural variables can contribute to the standardization of catch similar to classical trip and vessel variables used in constructing abundance indices.
机译:在渔业研究中,确定渔场,监测对禁渔区的反应以及对渔业管理者的其他行动,跟踪船只的动向已变得越来越重要。船只监视系统(VMS)使渔业管理人员和研究人员能够通过自动跟踪整个捕鱼季节的船只来研究船只的相互作用。从圣劳伦斯湾雪蟹(Chionoecetes opilio)渔业的VMS记录中获得的高时空分辨率可提供有关运动方式和捕鱼地点的信息。通过使用隐马尔可夫模型(HMM),我们可以推断出渔民在钓鱼旅行过程中表现出的行为,并将这些行为与不同的丰度估计值相关联,以跨年度捕获率。 HMM对VMS数据中的三个行为状态进行了分类,这些状态通过移动,在新位置设置陷阱(新集合)以及检索先前设置的陷阱(重置)来识别。通过将基于VMS的这些行为的估计与日志信息结合到广义线性模型中,可以模拟出一次行程中的抓捕行为。我们的模型表明,行为变量可以促进渔获量的标准化,类似于用于构造丰度指标的经典行程和船只变量。

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