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Clustering Spatial Temporal Distribution of Fishing Vessel Based lOn VMS Data Using K-Means

机译:使用K-Meance基于渔船的LON VMS数据的空间时间分布

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Management of sustainable marine resources is a national and global problem, and fisheries management has a complex issue, more research is need with a more comprehensive approach. Through the Ministry of Marine Affairs and Fisheries, the Government of Indonesia has made the Vessel Monitoring System (VMS). VMS data contains the position, movement, and activity of the fishing vessels utilized in this research. Data mining techniques and machine learning are using, and this study consists of three steps: i) Finding the number of optimum clusters by the Elbow Method, ii) Conducting clustering with the K-Means algorithm with the optimum k-value that has set, iii) Analyze the distribution of VMS data spatially and temporally. Overall, the optimum number of clusters obtained is 7 with the results of the compactness of the cluster members the percentage is 90.7%, spatially the distribution of VMS data in the Fisheries Management Area WPPNRI-711 is uneven and temporally very volatile. The results of this study can provide information about the intensity and location of fishing activity and prevent overfishing.
机译:可持续海洋资源的管理是一个国家和全球问题,渔业管理有一个复杂的问题,更多的研究需要更全面的方法。通过海事和渔业部,印度尼西亚政府已制定船舶监测系统(VMS)。 VMS数据包含本研究中使用的渔船的位置,运动和活动。数据挖掘技术和机器学习正在使用,这项研究包括三个步骤:i)通过肘部方法,ii)用k-means算法进行elbow方法的最佳集群数量,其中最佳k值具有集合, iii)在空间和时间上分析VMS数据的分布。总的来说,获得的最佳簇数为7,群体成员紧凑性的结果百分比为90.7%,空间上的VMS数据在渔业管理区域WPPNRI-711中的分布是不均匀的,并且时间非常挥发。本研究的结果可以提供有关捕捞活动的强度和位置的信息,并防止过度捕捞。

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