Clusterization of customer energy usage to detect power shrinkage in an effort to increase the efficiency of electric energy consumption

Asri, Yessy and Kuswardani, Dwina and Yosrita, Efy and Wullur, Ferdinand Hendrik (2021) Clusterization of customer energy usage to detect power shrinkage in an effort to increase the efficiency of electric energy consumption. Indonesian Journal of Electrical Engineering and Computer Science, 22 (1). pp. 10-17. ISSN 25024752

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Abstract

Automatic meter reading (AMR) is a reading system result the measurement of electrical energy consumen, both locally and remotely. The problems faced is the high non-technical shrinkage of AMR customers due to installation, maintenance errors as well as dishonest actions some consumers, this has a major influence on electrical power losses. PT. PLN Disjaya currently faces difficulties having to choose which customers should be checked first, so the field can only find a little damage. The K-means method based on historical electric power usage and determine the most optimal number of groups the davies-bouldin index (DBI) method. Based on the results of testing with 2-6 sets of clusters, the cluster set results are the most optimal is set cluster 4 because it has the smallest DBI value 0.893. The set of 4 clusters has the best performance in data grouping of historical power usage of AMR customers the business class, each centroid of each cluster is used as an attribute and value of the AMR customer power usage business chart. The testing phase is customers who categorized as customers with un-normal usage electricity power. The test is, by determining the distance data testing each centroid in the cluster 4 set.

Item Type: Article
Uncontrolled Keywords: Automatic meter reading; Clustering; Davies-bouldin index; Electricity; K-Means; Losses
Subjects: Bidang Keilmuan > Energy
Bidang Keilmuan > Energy Economics
Jurnal
Bidang Keilmuan > Teknik Informatika
Divisions: Fakultas Telematika Energi > S1 Teknik Informatika
Depositing User: Yudha Formanto
Date Deposited: 29 Oct 2025 03:07
Last Modified: 29 Oct 2025 03:07
URI: https://repository.itpln.ac.id/id/eprint/3088

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