Data Mining Application for the Spread of Endemic Butterfly Cenderawasih Bay using the K-Means Clustering Algorithm

IF 1.7 Q3 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS
F. Y. Wattimena, Abilliyo S. Mampioper, Reni Koibur, I. Nyoman G. A. Astawa, D. Novaliendry, Noper Ardi, N. Mahyuddin
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引用次数: 0

Abstract

The superfamily Papilionoidea day butterfly, which is endemic to the Cenderawasih Bay islands (Numfor, Supiori, Biak and Yapen), consists of 6 family species: the Papilionidae, Hesperiidae, Pieridae, Riodinidae, Lycaenidae and Nymphalidae families. This study aims to analyze the grouping of endemic butterflies of the Bay of Cendrawasih based on wings and colours in 4 Clusters, namely Numfor, Supiori, Biak and Yapen Islands, by applying the function of the K-Means Clustering algorithm data mining method. The grouping selection was carried out 7 times with the conclusion that Numfor had 13 types of Endemic Butterfly species, Biak had 7 Papuan Endemic Butterfly Species, Supiori had 9 Endemic Butterfly Species, and Yapen had 11 Endemic Butterfly Species. The analysis results were then retested in an application built using the Waterfall system development method and the PHP and MySQL programming languages. In addition to applying the K-Means Clustering algorithm for grouping endemic butterflies, the application created produces a butterfly distribution map that displays butterfly information based on family.
K-Means聚类算法在蝴蝶Cenderawasih湾传播数据挖掘中的应用
蝶蝶总科是Cenderawasih湾群岛(Numfor、Supiori、Biak和Yapen)的特有物种,由6科物种组成:蝶蝶科、灰蝶科、粉蝶科、Riodinidae、石蝶科和睡蝶科。本研究旨在应用K-Means聚类算法的数据挖掘方法,分析Cendrawash湾特有蝴蝶在Numfor、Supiori、Biak和Yapen群岛4个集群中的翅膀和颜色分组。进行了7次分组选择,得出Numfor有13种特有蝴蝶,Biak有7种巴布亚特有蝴蝶,Supiori有9种特有蝴蝶和Yapen有11种特有蝴蝶的结论。然后在使用Waterfall系统开发方法以及PHP和MySQL编程语言构建的应用程序中重新测试分析结果。除了应用K-Means聚类算法对特有蝴蝶进行分组外,创建的应用程序还生成了一个蝴蝶分布图,显示基于家族的蝴蝶信息。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
CiteScore
4.00
自引率
46.20%
发文量
143
审稿时长
12 weeks
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