基于印尼海域VMS数据的Naïve贝叶斯支持向量机定位金枪鱼渔点网站设计

Hery, Samuel Lukas, P. Yugopuspito, I. M. Murwantara, D. Krisnadi
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引用次数: 1

摘要

印度尼西亚是一个海洋国家,拥有世界上最大的海洋,位于两大洲和两大洋之间(图1)。印度尼西亚是一个海洋国家,拥有陆地和海洋都非常大的自然动力源。在水域利用源能源,特别是在一个地区捕捞鱼类,必须遵守适用的规定和条例,并遵循渔业负责的程序,因为这需要一个有效和准确的系统。渔业监测系统和船舶监测系统普遍采用,世界上几个国家都使用的仪器是船舶监测系统(VMS)。本文的目的是制作一个基于web的系统,旨在确定捕获金枪鱼的位置。系统必须准确和快速,有利于渔民谁是寻找金枪鱼在印度尼西亚的水域。在本研究中使用了两种机器学习方法。有朴素贝叶斯和支持向量机。本文的结果是一个网站,该网站使用基于数据VMS的朴素贝叶斯和支持向量机的方法来确定印度尼西亚水域捕捞金枪鱼的位置。结果表明,支持向量机的准确率为97。在确定金枪鱼时,6种贝叶斯方法(94.2)优于Naïve贝叶斯方法(94.2),但在某些区域Naïve贝叶斯方法优于前者。
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Website Design for Locating Tuna Fishing Spot Using Naïve Bayes and SVM Based on VMS Data on Indonesian Sea
Indonesia as a state maritime country has the largest ocean in the world and locates between two continents and two oceans (Figure 1). As a state maritime, Indonesia has a source power of nature which is very large both on land and at sea. Utilization of source power in waters particularly about catching fish in an area must comply with the provisions and regulations that apply, as well as follow procedures like fisheries are responsible, for it required a system that is effective and accurate. System monitoring and surveillance vessel fisheries are generally used in several countries around the world are using the instrument Vessel Monitoring System (VMS). The aim of this paper is to make a based web system that aims to determine the location of catching tuna. System has to be accurate and fast that beneficial for the fishermen who are looking for tuna in the waters of Indonesia. Two methods of machine learning are used in this research. There are Naives Bayes and Support Vector Machine. The results of this paper is a website that serves to determine the location of fishing tuna using the method of Naives Bayes and SVM -Based on Data VMS in the waters of Indonesia. The result shows that the accuracy of SVM is 97. 6 better than that of Naïve Bayes (94.2) in determining the tuna but some area Naïve Bayes is better.
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