Bagus Nur Bakti Aji, Nur Nafi’iyah, Miftahus Sholihin
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引用次数: 1

摘要

从Pekalongan reggency的海鱼收集的数据可以被处理,其中一个是聚类的。集群是基于相同的标准对数据进行分组。聚类的目的是能够帮助根据相同的标准对情况进行排序和划分。贝加隆岸摄政区的海鱼产品将分为三组,即:小型海鱼产品组、中型海鱼产品组和大型海鱼产品组。聚类过程采用SOM算法,数据取自网站data.go.id/dataset。对数据进行处理,以显示鱼的产量是小、中、大。在处理过程中,将鱼类的种类、年份和海鱼的结果等变量存储在Excel文件中,然后使用Matlab进行处理。结果表明:中低鱼群为虾类、鱿鱼类、梭鱼类、石斑鱼类、姜黄鱼类和鳐鱼类;进入鱼群的鱼种类很多都是提加瓦加鱼。进入中等集群的鱼有Beloso、Pihi、Pepetek,进入低集群的鱼有18种,进入低、中、多集群的鱼有Petek。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Implementasi SOM Dalam Clustering Hasil Ikan Laut Kabupaten Pekalongan
Data from sea fish in Pekalongan Regency can be processed, one of which is clustered. Clusters are grouping data based on the same criteria. The purpose of doing clustering is to be able to help in sorting and dividing a situation based on the same criteria. Clustering of marine fish products in Pekalongan Regency will be grouped into three groups, namely: a small group of marine fish products, a medium group of marine fish products, and a large group of marine fish products. The clustering process uses the SOM algorithm, and the data is taken from the website data.go.id/dataset. Data is processed in order to show which fish yields are small, medium and large. The processing process uses variable types of fish, years and results of sea fish that are stored in Excel files and then processed using Matlab. The results show that there are fish species that are classified as low and moderate clusters, namely shrimp, squid, serimping, grouper, turmeric, and ray species. The types of fish that enter the cluster and many are Tigawaja. The types of fish that enter the medium cluster are Beloso, Pihi, Pepetek, and those who enter the low cluster are 18 fish species, while those who enter the low, medium and many clusters are Petek.
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