Electricity Theft Detection in AMI Based on Clustering and Local Outlier Factor

As one of the key components of smart grid, advanced metering infrastructure (AMI) provides an immense number of data, making technologies such as data mining more suitable for electricity theft detection. However, due to the unbalanced dataset in the field of electricity theft, many AI-based method...

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Main Authors: Yanlin Peng, Yining Yang, Yuejie Xu, Yang Xue, Runan Song, Jinping Kang, Haisen Zhao
Format: Article
Language:English
Published: IEEE 2021-01-01
Series:IEEE Access
Subjects:
Online Access:https://ieeexplore.ieee.org/document/9500192/
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spelling doaj-69db26ea8d564eeca9f2832ccc1b8e3c2021-08-05T23:00:22ZengIEEEIEEE Access2169-35362021-01-01910725010725910.1109/ACCESS.2021.31009809500192Electricity Theft Detection in AMI Based on Clustering and Local Outlier FactorYanlin Peng0Yining Yang1Yuejie Xu2Yang Xue3Runan Song4Jinping Kang5https://orcid.org/0000-0002-5571-9034Haisen Zhao6https://orcid.org/0000-0003-3178-2490State Key Laboratory of Alternate Electricity Power System With Renewable Energy Sources, North China Electric Power University, Changping, Beijing, ChinaChina Electric Power Research Institute, Haidian, Beijing, ChinaState Key Laboratory of Alternate Electricity Power System With Renewable Energy Sources, North China Electric Power University, Changping, Beijing, ChinaChina Electric Power Research Institute, Haidian, Beijing, ChinaChina Electric Power Research Institute, Haidian, Beijing, ChinaState Key Laboratory of Alternate Electricity Power System With Renewable Energy Sources, North China Electric Power University, Changping, Beijing, ChinaState Key Laboratory of Alternate Electricity Power System With Renewable Energy Sources, North China Electric Power University, Changping, Beijing, ChinaAs one of the key components of smart grid, advanced metering infrastructure (AMI) provides an immense number of data, making technologies such as data mining more suitable for electricity theft detection. However, due to the unbalanced dataset in the field of electricity theft, many AI-based methods such as deep learning are prone to under-fitting. To evade this problem and to detect as many types of theft attacks as possible, an outlier detection method based on clustering and local outlier factor (LOF) is proposed in this study. We firstly analyze the load profiles with <inline-formula> <tex-math notation="LaTeX">$k$ </tex-math></inline-formula>-means. Then, customers whose load profiles are far from the cluster centers are selected as outlier candidates. After that, the LOF is utilized to calculate the anomaly degrees of outlier candidates. Corresponding framework for practical application is then designed. Finally, numerical experiments based on realistic dataset show the good performance of the presented method.https://ieeexplore.ieee.org/document/9500192/Clusteringdata miningelectricity theft detectionlocal outlier factor
collection DOAJ
language English
format Article
sources DOAJ
author Yanlin Peng
Yining Yang
Yuejie Xu
Yang Xue
Runan Song
Jinping Kang
Haisen Zhao
spellingShingle Yanlin Peng
Yining Yang
Yuejie Xu
Yang Xue
Runan Song
Jinping Kang
Haisen Zhao
Electricity Theft Detection in AMI Based on Clustering and Local Outlier Factor
IEEE Access
Clustering
data mining
electricity theft detection
local outlier factor
author_facet Yanlin Peng
Yining Yang
Yuejie Xu
Yang Xue
Runan Song
Jinping Kang
Haisen Zhao
author_sort Yanlin Peng
title Electricity Theft Detection in AMI Based on Clustering and Local Outlier Factor
title_short Electricity Theft Detection in AMI Based on Clustering and Local Outlier Factor
title_full Electricity Theft Detection in AMI Based on Clustering and Local Outlier Factor
title_fullStr Electricity Theft Detection in AMI Based on Clustering and Local Outlier Factor
title_full_unstemmed Electricity Theft Detection in AMI Based on Clustering and Local Outlier Factor
title_sort electricity theft detection in ami based on clustering and local outlier factor
publisher IEEE
series IEEE Access
issn 2169-3536
publishDate 2021-01-01
description As one of the key components of smart grid, advanced metering infrastructure (AMI) provides an immense number of data, making technologies such as data mining more suitable for electricity theft detection. However, due to the unbalanced dataset in the field of electricity theft, many AI-based methods such as deep learning are prone to under-fitting. To evade this problem and to detect as many types of theft attacks as possible, an outlier detection method based on clustering and local outlier factor (LOF) is proposed in this study. We firstly analyze the load profiles with <inline-formula> <tex-math notation="LaTeX">$k$ </tex-math></inline-formula>-means. Then, customers whose load profiles are far from the cluster centers are selected as outlier candidates. After that, the LOF is utilized to calculate the anomaly degrees of outlier candidates. Corresponding framework for practical application is then designed. Finally, numerical experiments based on realistic dataset show the good performance of the presented method.
topic Clustering
data mining
electricity theft detection
local outlier factor
url https://ieeexplore.ieee.org/document/9500192/
work_keys_str_mv AT yanlinpeng electricitytheftdetectioninamibasedonclusteringandlocaloutlierfactor
AT yiningyang electricitytheftdetectioninamibasedonclusteringandlocaloutlierfactor
AT yuejiexu electricitytheftdetectioninamibasedonclusteringandlocaloutlierfactor
AT yangxue electricitytheftdetectioninamibasedonclusteringandlocaloutlierfactor
AT runansong electricitytheftdetectioninamibasedonclusteringandlocaloutlierfactor
AT jinpingkang electricitytheftdetectioninamibasedonclusteringandlocaloutlierfactor
AT haisenzhao electricitytheftdetectioninamibasedonclusteringandlocaloutlierfactor
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