Improving SVM-based nontechnical loss detection in power utility using the fuzzy inference system

This letter extends previous research work in modeling a nontechnical loss (NTL) framework for the detection of fraud and electricity theft in power distribution utilities. Previous work was carried out by using a support vector machine (SVM)-based NTL detection framework resulting in a detection hi...

Full description

Saved in:
Bibliographic Details
Main Authors: Nagi, J., Yap, K.S., Tiong, S.K., Ahmed, S.K., Nagi, F.
Format: Article
Language:English
Published: 2017
Tags: Add Tag
No Tags, Be the first to tag this record!
Institution: Universiti Tenaga Nasional
Language: English
id my.uniten.dspace-5016
record_format dspace
spelling my.uniten.dspace-50162017-11-14T06:30:21Z Improving SVM-based nontechnical loss detection in power utility using the fuzzy inference system Nagi, J. Yap, K.S. Tiong, S.K. Ahmed, S.K. Nagi, F. This letter extends previous research work in modeling a nontechnical loss (NTL) framework for the detection of fraud and electricity theft in power distribution utilities. Previous work was carried out by using a support vector machine (SVM)-based NTL detection framework resulting in a detection hitrate of 60%. This letter presents the inclusion of human knowledge and expertise into the SVM-based fraud detection model (FDM) with the introduction of a fuzzy inference system (FIS), in the form of fuzzy if-then rules. The FIS acts as a postprocessing scheme for short-listing customer suspects with higher probabilities of fraud activities. With the implementation of this improved SVM-FIS computational intelligence FDM, Tenaga Nasional Berhad Distribution's detection hitrate has increased from 60% to 72%, thus proving to be cost effective. © 2011 IEEE. 2017-11-14T03:21:20Z 2017-11-14T03:21:20Z 2011 Article 10.1109/TPWRD.2010.2055670 en IEEE Transactions on Power Delivery Volume 26, Issue 2, April 2011, Article number 5738432, Pages 1284-1285
institution Universiti Tenaga Nasional
building UNITEN Library
collection Institutional Repository
continent Asia
country Malaysia
content_provider Universiti Tenaga Nasional
content_source UNITEN Institutional Repository
url_provider http://dspace.uniten.edu.my/
language English
description This letter extends previous research work in modeling a nontechnical loss (NTL) framework for the detection of fraud and electricity theft in power distribution utilities. Previous work was carried out by using a support vector machine (SVM)-based NTL detection framework resulting in a detection hitrate of 60%. This letter presents the inclusion of human knowledge and expertise into the SVM-based fraud detection model (FDM) with the introduction of a fuzzy inference system (FIS), in the form of fuzzy if-then rules. The FIS acts as a postprocessing scheme for short-listing customer suspects with higher probabilities of fraud activities. With the implementation of this improved SVM-FIS computational intelligence FDM, Tenaga Nasional Berhad Distribution's detection hitrate has increased from 60% to 72%, thus proving to be cost effective. © 2011 IEEE.
format Article
author Nagi, J.
Yap, K.S.
Tiong, S.K.
Ahmed, S.K.
Nagi, F.
spellingShingle Nagi, J.
Yap, K.S.
Tiong, S.K.
Ahmed, S.K.
Nagi, F.
Improving SVM-based nontechnical loss detection in power utility using the fuzzy inference system
author_facet Nagi, J.
Yap, K.S.
Tiong, S.K.
Ahmed, S.K.
Nagi, F.
author_sort Nagi, J.
title Improving SVM-based nontechnical loss detection in power utility using the fuzzy inference system
title_short Improving SVM-based nontechnical loss detection in power utility using the fuzzy inference system
title_full Improving SVM-based nontechnical loss detection in power utility using the fuzzy inference system
title_fullStr Improving SVM-based nontechnical loss detection in power utility using the fuzzy inference system
title_full_unstemmed Improving SVM-based nontechnical loss detection in power utility using the fuzzy inference system
title_sort improving svm-based nontechnical loss detection in power utility using the fuzzy inference system
publishDate 2017
_version_ 1644493591147446272