OPTIMIZATION OF ANOMALY DETECTION IN ELECTRICITY USAGE FOR PREPAID CUSTOMERS USING MACHINE LEARNING

Electricity theft and anomalies in electricity usage pose signijicant challenges for utility companies, leading to financial losses, power supply disruptions, and even fire risks caused by short circuits or overloads. In contrast to previous studies that focused more on postpaid customers, this stud...

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Main Author: Kurniawan, Rahmat
Format: Theses
Language:Indonesia
Online Access:https://digilib.itb.ac.id/gdl/view/87709
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Institution: Institut Teknologi Bandung
Language: Indonesia
id id-itb.:87709
spelling id-itb.:877092025-02-02T22:22:43ZOPTIMIZATION OF ANOMALY DETECTION IN ELECTRICITY USAGE FOR PREPAID CUSTOMERS USING MACHINE LEARNING Kurniawan, Rahmat Indonesia Theses machine learning, prepaid customers, anomaly detection INSTITUT TEKNOLOGI BANDUNG https://digilib.itb.ac.id/gdl/view/87709 Electricity theft and anomalies in electricity usage pose signijicant challenges for utility companies, leading to financial losses, power supply disruptions, and even fire risks caused by short circuits or overloads. In contrast to previous studies that focused more on postpaid customers, this study focuses on prepaid customers who have different characteristics. Postpaid customers pay bills every month, while prepaid customers purchase energy in advance that can be used for the next few months. In addition, prepaid customers are not yet equipped with a real-time electricity consumption reading system and still use one-way/ojjline kWh meters. This study develops an anomaly detection system for electricity usage in prepaid customers with a data-driven approach and supervised learning-based machine learning algorithms namely Classical Classijier (Logistic Regression, KNN, Decision Tree) and Ensemble Classijier (AdaBoost, Random Forest, XGBoost) with data imbalance handling using SMOTE oversampling or undersampling. The data capturing technique is applied in forming the training dataset by cutting off prepaid customer transaction data before inspection. This aims to describe customer behavior before the inspection is carried out and to reduce the time span of the data used. The results show that XGBoost with the SMOTE undersampling imbalance handling technique and data capturing technique provides the best performance with high F 1-Score and hit rate values compared to other models, especially when tested on new data or testing data. This research contributes to the development of machine learning-based solutions to detect anomalies in electricity usage among prepaid customers. text
institution Institut Teknologi Bandung
building Institut Teknologi Bandung Library
continent Asia
country Indonesia
Indonesia
content_provider Institut Teknologi Bandung
collection Digital ITB
language Indonesia
description Electricity theft and anomalies in electricity usage pose signijicant challenges for utility companies, leading to financial losses, power supply disruptions, and even fire risks caused by short circuits or overloads. In contrast to previous studies that focused more on postpaid customers, this study focuses on prepaid customers who have different characteristics. Postpaid customers pay bills every month, while prepaid customers purchase energy in advance that can be used for the next few months. In addition, prepaid customers are not yet equipped with a real-time electricity consumption reading system and still use one-way/ojjline kWh meters. This study develops an anomaly detection system for electricity usage in prepaid customers with a data-driven approach and supervised learning-based machine learning algorithms namely Classical Classijier (Logistic Regression, KNN, Decision Tree) and Ensemble Classijier (AdaBoost, Random Forest, XGBoost) with data imbalance handling using SMOTE oversampling or undersampling. The data capturing technique is applied in forming the training dataset by cutting off prepaid customer transaction data before inspection. This aims to describe customer behavior before the inspection is carried out and to reduce the time span of the data used. The results show that XGBoost with the SMOTE undersampling imbalance handling technique and data capturing technique provides the best performance with high F 1-Score and hit rate values compared to other models, especially when tested on new data or testing data. This research contributes to the development of machine learning-based solutions to detect anomalies in electricity usage among prepaid customers.
format Theses
author Kurniawan, Rahmat
spellingShingle Kurniawan, Rahmat
OPTIMIZATION OF ANOMALY DETECTION IN ELECTRICITY USAGE FOR PREPAID CUSTOMERS USING MACHINE LEARNING
author_facet Kurniawan, Rahmat
author_sort Kurniawan, Rahmat
title OPTIMIZATION OF ANOMALY DETECTION IN ELECTRICITY USAGE FOR PREPAID CUSTOMERS USING MACHINE LEARNING
title_short OPTIMIZATION OF ANOMALY DETECTION IN ELECTRICITY USAGE FOR PREPAID CUSTOMERS USING MACHINE LEARNING
title_full OPTIMIZATION OF ANOMALY DETECTION IN ELECTRICITY USAGE FOR PREPAID CUSTOMERS USING MACHINE LEARNING
title_fullStr OPTIMIZATION OF ANOMALY DETECTION IN ELECTRICITY USAGE FOR PREPAID CUSTOMERS USING MACHINE LEARNING
title_full_unstemmed OPTIMIZATION OF ANOMALY DETECTION IN ELECTRICITY USAGE FOR PREPAID CUSTOMERS USING MACHINE LEARNING
title_sort optimization of anomaly detection in electricity usage for prepaid customers using machine learning
url https://digilib.itb.ac.id/gdl/view/87709
_version_ 1823658247174750208