PENGELOMPOKAN PRODUKSI TAMBAK GARAM DENGAN METODE CLUSTER K-MEANS DAN OPTIMASI CLUSTER MENGGUNAKAN ELBOW (STUDI KASUS: DINAS KELAUTAN KABUPATEN BANGKALAN)

Ach Muqoddam Adam
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Abstract

Salt ponds in Madura are known by the Indonesian people as salt producers or it can be said that Madura is generally called a salt island, especially salt ponds in Bangkalan Regency in 2014 salt production increased from the previous year. But not long after that in 2020 and 2021 Salt Pond production decreased. The problem that occurs in the field of salt pond business in Kwanyar District, Bangkalan Regency is to analyze the problems that exist in salt ponds regarding the characteristics and potential of the salt pond business and the salt pond production system. And the problems that exist in the Maritime Service of Bangkalan Regency are difficult to classify salt pond production data. Responding to the problem of salt ponds in Bangkalan, a data mining system is needed to classify salt pond production. The grouping of salt ponds is grouped into 3 clusters. Where 3 groups (clusters) are used here, namely the need to increase production (cluster 1), it is enough to increase production (cluster 2), there is no need to increase production (cluster 3), which is useful for evaluating and providing solutions. The method used is the K-Means Clustering method, as well as finding an optimal group using Elbow Optimization. The results of the K-Means process of grouping the results obtained are group 1 = 65 data that need to increase production, group 2 = 55 data that simply needs to increase production, and group 3 = 21 data that doesn't need to increase production. Elbow Optimization Test to find the most optimal K, by conducting a 7 cluster trial. The result is K = 3 which is optimal from a comparison test with other Ks, looking at the resulting SSE and Elbow Garp values.
使用ELBOW(案例研究:班加兰县海洋服务中心)对盐田生产的一组化。
马都拉的盐池被印尼人称为盐的生产者或者可以说,马都拉一般被称为盐岛,特别是邦卡兰摄政的盐池在2014年的盐产量比上一年有所增加。但不久之后,在2020年和2021年,盐池产量下降。针对邦卡兰县关雅区盐池经营领域存在的问题,从盐池经营的特点和潜力、盐池生产体系等方面分析盐池经营中存在的问题。Bangkalan reggency海事部门存在的问题是难以对盐池生产数据进行分类。针对Bangkalan地区的盐池问题,需要一个数据挖掘系统对盐池产量进行分类。盐池分组分为3个集群。这里使用3组(集群),即需要增加产量(集群1),增加产量(集群2)就足够了,不需要增加产量(集群3),这对评估和提供解决方案很有用。使用的方法是K-Means聚类方法,以及使用肘部优化找到最优组。对得到的结果进行K-Means分组处理的结果是:第1组= 65个需要增产的数据,第2组= 55个单纯需要增产的数据,第3组= 21个不需要增产的数据。弯头优化测试通过进行7个聚类试验来找到最优K。结果是K = 3,这是与其他K进行比较测试的最佳值,查看结果SSE和肘关节间隙值。
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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