FPETD: Fault-Tolerant and Privacy-Preserving Electricity Theft Detection

Electricity theft occurs from time to time in the smart grid, which can cause great losses to the power supplier, so it is necessary to prevent the occurrence of electricity theft. Using machine learning as an electricity theft detection tool can quickly lock participants suspected of electricity th...

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Main Authors: Siliang Dong, Zhixin Zeng, Yining Liu
Format: Article
Language:English
Published: Hindawi-Wiley 2021-01-01
Series:Wireless Communications and Mobile Computing
Online Access:http://dx.doi.org/10.1155/2021/6650784
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spelling doaj-abe307aad2884cc4b8692a1eb018ca4e2021-06-21T02:25:22ZengHindawi-WileyWireless Communications and Mobile Computing1530-86772021-01-01202110.1155/2021/6650784FPETD: Fault-Tolerant and Privacy-Preserving Electricity Theft DetectionSiliang Dong0Zhixin Zeng1Yining Liu2School of Computer and Information SecuritySchool of Computer and Information SecuritySchool of Computer and Information SecurityElectricity theft occurs from time to time in the smart grid, which can cause great losses to the power supplier, so it is necessary to prevent the occurrence of electricity theft. Using machine learning as an electricity theft detection tool can quickly lock participants suspected of electricity theft; however, directly publishing user data to the detector for machine learning-based detection may expose user privacy. In this paper, we propose a real-time fault-tolerant and privacy-preserving electricity theft detection (FPETD) scheme that combines n-source anonymity and a convolutional neural network (CNN). In our scheme, we designed a fault-tolerant raw data collection protocol to collect electricity data and cut off the correspondence between users and their data, thereby ensuring the fault tolerance and data privacy during the electricity theft detection process. Experiments have proven that our dimensionality reduction method makes our model have an accuracy rate of 92.86% for detecting electricity theft, which is much better than others.http://dx.doi.org/10.1155/2021/6650784
collection DOAJ
language English
format Article
sources DOAJ
author Siliang Dong
Zhixin Zeng
Yining Liu
spellingShingle Siliang Dong
Zhixin Zeng
Yining Liu
FPETD: Fault-Tolerant and Privacy-Preserving Electricity Theft Detection
Wireless Communications and Mobile Computing
author_facet Siliang Dong
Zhixin Zeng
Yining Liu
author_sort Siliang Dong
title FPETD: Fault-Tolerant and Privacy-Preserving Electricity Theft Detection
title_short FPETD: Fault-Tolerant and Privacy-Preserving Electricity Theft Detection
title_full FPETD: Fault-Tolerant and Privacy-Preserving Electricity Theft Detection
title_fullStr FPETD: Fault-Tolerant and Privacy-Preserving Electricity Theft Detection
title_full_unstemmed FPETD: Fault-Tolerant and Privacy-Preserving Electricity Theft Detection
title_sort fpetd: fault-tolerant and privacy-preserving electricity theft detection
publisher Hindawi-Wiley
series Wireless Communications and Mobile Computing
issn 1530-8677
publishDate 2021-01-01
description Electricity theft occurs from time to time in the smart grid, which can cause great losses to the power supplier, so it is necessary to prevent the occurrence of electricity theft. Using machine learning as an electricity theft detection tool can quickly lock participants suspected of electricity theft; however, directly publishing user data to the detector for machine learning-based detection may expose user privacy. In this paper, we propose a real-time fault-tolerant and privacy-preserving electricity theft detection (FPETD) scheme that combines n-source anonymity and a convolutional neural network (CNN). In our scheme, we designed a fault-tolerant raw data collection protocol to collect electricity data and cut off the correspondence between users and their data, thereby ensuring the fault tolerance and data privacy during the electricity theft detection process. Experiments have proven that our dimensionality reduction method makes our model have an accuracy rate of 92.86% for detecting electricity theft, which is much better than others.
url http://dx.doi.org/10.1155/2021/6650784
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AT zhixinzeng fpetdfaulttolerantandprivacypreservingelectricitytheftdetection
AT yiningliu fpetdfaulttolerantandprivacypreservingelectricitytheftdetection
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