对lhoumawe镇客户权力一致性的分类分类

Andik Bintoro, Safwandi Safwandi
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引用次数: 0

摘要

本研究对K个最近邻进行分类,以确定分组中看到的安装家庭用电客户的适宜性。然后,系统可以看到想要了解给定电量并想要添加新电量的客户。相反,如果客户想要减少已经给予的电力,因为它太大,条件是房子不大,不怎么使用,可以在这个系统中看到。本研究的目的是为了方便老客户客户在测试数据分组的基础上,看到空调变量、冰箱变量、洗衣机变量等电子数量的装机功率。首先调整到新的测试数据。k近邻法的过程是输入客户姓名,空调(AC)的数量值为2,冰箱的数量值为2,洗衣机的数量值为1,其他电子产品的数量值为7。然后通过在训练训练中看到附近的邻居来训练,看到距离最近的数据为1.73205。此外,对C2类分类中ID为P-05的客户进行数据培训。该系统的结果以客户分组的形式,分为4安培,6安培或12安培类别分类类型,每一种类型都是从安装的功率来看的。本研究旨在帮助Lhokseumawe市的PLN客户了解分组类型中包含的老客户。关键词:分类,电功率,k近邻
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KLASIFIKASI PENGELOMPOKAN DALAM MELIHAT KESESUAIAN DAYA PELANGGAN KOTA LHOKSEUMAWE
Classification of K Nearest Neighbors in this study to determine the grouping in seeing the suitability of the installed household electricity customers. Then the system built can see customers who want to know the amount of power given and want to add new. Conversely, if customers who want to reduce the power that has been given because it is too large with the condition of houses that are not large and not much use, can be seen in this system. The purpose of this study is to facilitate old customer customers in seeing the installed power with a variable amount of air conditioner (AC), number of refrigerators, number of washing machines and other electronic quantities based on the grouping of test data. first adjusted to the new test data. The process of the K-Nearest Neighbor method is to input the customer's name with the value of the amount of air conditioner (AC) with a value of 2, the number of refrigerators with a value of 2, the number of washing machines with a value of 1 and the number of other electronics with a value of 7. Then the data is seen with distance closest is 1.73205 by being trained by seeing neighbors nearby in training training. Furthermore, training of the data was obtained by customers with ID P-05 found in class C2 classifications. The results of this system are in the form of customer grouping which is categorized into 4 ampere, 6 ampere or 12 ampere category classification types, each of which is seen from the amount of power installed. This research is expected to help PLN customers of the city of Lhokseumawe in knowing the old customers who are included in the type of grouping.Keywords: Classification, Electrical Power, K-Nearest Neighbors
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