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首页> 外文期刊>Fisheries Research >Modeling landings profiles of fishing vessels: An application of Self-Organizing Maps to VMS and logbook data
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Modeling landings profiles of fishing vessels: An application of Self-Organizing Maps to VMS and logbook data

机译:建模渔船着陆剖面:自组织地图在VMS和航海日志数据中的应用

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摘要

Logbook data constitute a key element within the electronic recording and reporting system of the European Fisheries Control Technologies Framework and are used to record, report, process, store and send information about fishing operations, including landings and fishing gear. A relevant application of logbook data is to account for the heterogeneity of fishing practices (e.g., by gear or metier), which is a key aspect of the Common Fishery Policy. However, despite their importance, few published studies have explored the potential and pitfalls of logbook data, even in combination with other powerful data sources such as the Vessel Monitoring System (VMS). Here, a new approach to characterizing the composition of landings for the different types of gear based on the use of Self-Organizing Maps (SOMs a particular type of Artificial Neural Network) is applied to the Italian fleet logbook dataset. The SOM is trained on the landings composition and the resulting patterns are interpreted using some measures obtained from the analysis of the corresponding VMS data. Namely, the mean sea bottom depth and the area of activity are obtained for each fishing trip. Moreover, the ability of the trained SOM to predict gear from landings is tested using a new dataset. The trained SOM classifies logbook records according to the ecological, taxonomical, and trophic characteristics of the species caught, and the depth of fishing activities plays an important role in diversifying the landings associated with certain widely used fishing gear such as the bottom otter trawl. The clustering of SOM units allows the identification of a set of 12 groups, which are strongly related to the types of gear used by the Italian fleet. Furthermore, the trained SOM shows a high ability to recognize gear from logbook data, thus confirming the robustness of the landings profiles detected. (C) 2016 Elsevier B.V. All rights reserved.
机译:日志数据构成欧洲渔业控制技术框架电子记录和报告系统中的关键要素,并用于记录,报告,处理,存储和发送有关捕鱼作业的信息,包括着陆和渔具。日志数据的相关应用是解决捕捞方式的异质性(例如,渔具或等级),这是《共同渔业政策》的一个关键方面。然而,尽管它们很重要,但很少有已发表的研究探索日志数据的潜力和陷阱,即使与其他强大的数据源(例如船舶监控系统(VMS))结合使用也是如此。在这里,一种基于自组织图(SOM,一种特殊类型的人工神经网络)来表征不同类型装备的着陆组成的新方法被应用于意大利舰队日志数据集。对SOM进行着陆组成方面的培训,并使用从相应VMS数据分析中获得的一些措施来解释所得的模式。即,获得每个钓鱼行程的平均海底深度和活动面积。此外,使用新的数据集测试了训练有素的SOM从着陆中预测起落架的能力。训练有素的SOM根据所捕获物种的生态,分类和营养特征对日志记录进行分类,并且捕捞活动的深度在使与某些广泛使用的捕捞工具(例如水獭拖网)相关的着陆面积多样化方面起着重要作用。 SOM单元的聚类可以识别12组,这与意大利机队使用的装备类型密切相关。此外,训练有素的SOM显示出从航海日志数据中识别装备的高能力,从而确认了检测到的着陆轮廓的鲁棒性。 (C)2016 Elsevier B.V.保留所有权利。

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