Spatial distribution of fishing intensity of canvas stow net fishing vessels in the East China Sea and the Yellow Sea

Pub Date : 2023-03-31 DOI:10.21077/ijf.2023.70.1.125766-01
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引用次数: 1

Abstract

 Present study used the position data of BeiDou Vessel Monitoring System (VMS) in 2018, with respect to motorised fishingvessels in the East China Sea and the Yellow Sea to construct a fishing vessel operating status classification model based onthreshold, deep neural network and DBSCAN density clustering algorithm. The geographic grid was divided into cells of0.1°×0.1° and the average fishing time per square km (h km-2) in each grid was calculated to obtain the spatial distributionof fishing intensity in the study region in 2018. The results showed that the threshold method could classify fishing vesselsailing, anchoring and other states with an accuracy of more than 95%. The deep neural network and DBSCAN algorithmcould classify the two states of netting and closing with an accuracy of 94.7%. By classifying the status of fishing vessels,quantitative monitoring can be carried out to better serve the management of marine fishery resources and marine ecologicalprotectionKeywords: China, DBSCAN, Deep neural network, Fishing intensity, Spatial distribution, VMS, Voyage extraction
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东海、黄海帆布拖网渔船捕捞强度的空间分布
本研究利用2018年北斗船舶监测系统(VMS)对东海和黄海机动渔船的位置数据,构建了基于阈值、深度神经网络和DBSCAN密度聚类算法的渔船作业状态分类模型。将地理网格划分为0.1°×0.1°的单元格,计算每个单元格内每平方公里平均捕捞时间(h km-2),得到研究区2018年捕捞强度的空间分布。结果表明,阈值法可以对渔船航行、锚泊等状态进行分类,准确率在95%以上。采用深度神经网络和DBSCAN算法对两种状态进行分类,准确率达94.7%。通过对渔船状态进行分类,可以进行定量监测,更好地为海洋渔业资源管理和海洋生态保护服务。关键词:中国,DBSCAN,深度神经网络,捕捞强度,空间分布,VMS,航次提取
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