Analysis of Household Electricity Consumption Segmentation using K-means Clustering

Dublin Core

Title

Analysis of Household Electricity Consumption Segmentation using K-means Clustering

Subject

K-Means Clustering, Electricity Consumption, Energy Prediction, Household Segmentation

Description

This research focuses on predicting household electricity usage by applying K-Means Clustering segmentation in support of energy-saving strategies. In this study, we gather historical monthly electricity consumption data over three yearsfor analysis, considering attributes such as the number of occupants and the number of electrical appliances. The segmentation process resulted in three main clusters: low, medium, and high consumption. This segmentation enables easier identification of consumption patternsand serves as a foundation for constructing more accurate and targeted prediction models.The prediction model was developed using both linear and non-linear (exponential) regression methods. Evaluation results show that the non-linear model delivers the best performance, with a correlation of up to 99.84% and lower error values compared to thelinear model. The integrative approach combining clustering and prediction proves effective in identifying consumption characteristics and supporting adaptive and sustainable decision-making in household energy efficiency management.

Creator

Siswandari Noertjahjani1,Danu Putra Setyawan2, Aris Kiswanto3

Source

https://ijicom.respati.ac.id/index.php/ijicom/article/view/147/108

Publisher

nternational Journal of Informatics and Computation (IJICOM)

Date

2025

Contributor

Fajar bagus W

Format

PDF

Language

English

Type

Text

Files

Collection

Citation

Siswandari Noertjahjani1,Danu Putra Setyawan2, Aris Kiswanto3, “Analysis of Household Electricity Consumption Segmentation using K-means Clustering,” Repository Horizon University Indonesia, accessed December 31, 2025, https://repository.horizon.ac.id/items/show/9771.