Energy Theft Detection in an Edge Data Center Using Deep Learning

With the development of smart grid information physical systems, some of the data processing functions gradually approach the edge layer of end-users. To better realize the energy theft detection function at the edge, we proposed an energy theft detection method based on the power consumption inform...

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Main Authors: Guixue Cheng, Zhemin Zhang, Qilin Li, Yun Li, Wenxing Jin
Format: Article
Language:English
Published: Hindawi Limited 2021-01-01
Series:Mathematical Problems in Engineering
Online Access:http://dx.doi.org/10.1155/2021/9938475
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spelling doaj-4009a665679b4adba61ea7a0aafd763c2021-07-19T01:04:35ZengHindawi LimitedMathematical Problems in Engineering1563-51472021-01-01202110.1155/2021/9938475Energy Theft Detection in an Edge Data Center Using Deep LearningGuixue Cheng0Zhemin Zhang1Qilin Li2Yun Li3Wenxing Jin4College of Computer and Science and TechnologyCollege of Computer and Science and TechnologyMetering Center of Sichuan Electric Power CorporationSchool of Computer Science and EngineeringCollege of Computer and Science and TechnologyWith the development of smart grid information physical systems, some of the data processing functions gradually approach the edge layer of end-users. To better realize the energy theft detection function at the edge, we proposed an energy theft detection method based on the power consumption information acquisition system of power enterprises. The method involves the following steps. In the centralized data center, K-means is used to decompose a large amount of data into small data and then input and train neural network parameters to realize feature extraction. We design a neural network named DWMCNN, which can extract features from the day, week, and month and can extract more accurate features. In the edge data center, the random forest (RF) algorithm is used to classify the extracted features. The experimental results show that the clustering method accords with the idea of edge computing-distributed processing and improves the operation speed and that the feature extractor has good convergence performance. In addition, compared with the methods based on various classifiers, this method has higher accuracy and lower computational complexity, which is suitable for the deployment of edge data centers.http://dx.doi.org/10.1155/2021/9938475
collection DOAJ
language English
format Article
sources DOAJ
author Guixue Cheng
Zhemin Zhang
Qilin Li
Yun Li
Wenxing Jin
spellingShingle Guixue Cheng
Zhemin Zhang
Qilin Li
Yun Li
Wenxing Jin
Energy Theft Detection in an Edge Data Center Using Deep Learning
Mathematical Problems in Engineering
author_facet Guixue Cheng
Zhemin Zhang
Qilin Li
Yun Li
Wenxing Jin
author_sort Guixue Cheng
title Energy Theft Detection in an Edge Data Center Using Deep Learning
title_short Energy Theft Detection in an Edge Data Center Using Deep Learning
title_full Energy Theft Detection in an Edge Data Center Using Deep Learning
title_fullStr Energy Theft Detection in an Edge Data Center Using Deep Learning
title_full_unstemmed Energy Theft Detection in an Edge Data Center Using Deep Learning
title_sort energy theft detection in an edge data center using deep learning
publisher Hindawi Limited
series Mathematical Problems in Engineering
issn 1563-5147
publishDate 2021-01-01
description With the development of smart grid information physical systems, some of the data processing functions gradually approach the edge layer of end-users. To better realize the energy theft detection function at the edge, we proposed an energy theft detection method based on the power consumption information acquisition system of power enterprises. The method involves the following steps. In the centralized data center, K-means is used to decompose a large amount of data into small data and then input and train neural network parameters to realize feature extraction. We design a neural network named DWMCNN, which can extract features from the day, week, and month and can extract more accurate features. In the edge data center, the random forest (RF) algorithm is used to classify the extracted features. The experimental results show that the clustering method accords with the idea of edge computing-distributed processing and improves the operation speed and that the feature extractor has good convergence performance. In addition, compared with the methods based on various classifiers, this method has higher accuracy and lower computational complexity, which is suitable for the deployment of edge data centers.
url http://dx.doi.org/10.1155/2021/9938475
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AT zheminzhang energytheftdetectioninanedgedatacenterusingdeeplearning
AT qilinli energytheftdetectioninanedgedatacenterusingdeeplearning
AT yunli energytheftdetectioninanedgedatacenterusingdeeplearning
AT wenxingjin energytheftdetectioninanedgedatacenterusingdeeplearning
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