An Improved AlexNet for Power Edge Transmission Line Anomaly Detection

Since most outdoor transmission line equipment suffers from harsh disasters, they are prone to wire breakage, tower collapse and insulator flashover. When anomaly occurs, too much time is required for the State Grid Corporation to fix it manually. To reduce the inspection burden, many methods have b...

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Main Authors: Yanpeng Guo, Zhenjiang Pang, Jun Du, Fan Jiang, Qilong Hu
Format: Article
Language:English
Published: IEEE 2020-01-01
Series:IEEE Access
Subjects:
SVM
Online Access:https://ieeexplore.ieee.org/document/9097293/
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spelling doaj-8e7256d5c5a24f26bc5d8b215f8c338c2021-03-30T02:15:46ZengIEEEIEEE Access2169-35362020-01-018978309783810.1109/ACCESS.2020.29959109097293An Improved AlexNet for Power Edge Transmission Line Anomaly DetectionYanpeng Guo0https://orcid.org/0000-0002-0152-5314Zhenjiang Pang1Jun Du2Fan Jiang3Qilong Hu4Beijing Smartchip Microelectronics Technology Company, Ltd., Beijing, ChinaBeijing Smartchip Microelectronics Technology Company, Ltd., Beijing, ChinaBeijing Smartchip Microelectronics Technology Company, Ltd., Beijing, ChinaBeijing Smartchip Microelectronics Technology Company, Ltd., Beijing, ChinaBeijing Smartchip Microelectronics Technology Company, Ltd., Beijing, ChinaSince most outdoor transmission line equipment suffers from harsh disasters, they are prone to wire breakage, tower collapse and insulator flashover. When anomaly occurs, too much time is required for the State Grid Corporation to fix it manually. To reduce the inspection burden, many methods have been presented in the past to diagnose and locate anomaly. In this paper, we propose an improved AlexNet model for anomaly detection. In the aspect of feature extraction, the proposed model extracts the characteristics of transmission line equipment through a deep convolutional neural network (DCNN). In the aspect of the recognition algorithm, by referring to the advantages of the traditional machine learning method and incorporating the advantages of the support vector machine (SVM), an SVM classification method incorporating deep learning is proposed. Finally, the improved AlexNet model and SVM classification method are used to classify images of various types of power equipment. The results show that the proposed methods can be effectively applied to the image recognition of various types of power equipment, and they greatly improve the recognition rate of power equipment images, which has great potential for future real-time transmission line monitoring platform design.https://ieeexplore.ieee.org/document/9097293/Transmission lineedge computingAlexNetSVManomaly detection
collection DOAJ
language English
format Article
sources DOAJ
author Yanpeng Guo
Zhenjiang Pang
Jun Du
Fan Jiang
Qilong Hu
spellingShingle Yanpeng Guo
Zhenjiang Pang
Jun Du
Fan Jiang
Qilong Hu
An Improved AlexNet for Power Edge Transmission Line Anomaly Detection
IEEE Access
Transmission line
edge computing
AlexNet
SVM
anomaly detection
author_facet Yanpeng Guo
Zhenjiang Pang
Jun Du
Fan Jiang
Qilong Hu
author_sort Yanpeng Guo
title An Improved AlexNet for Power Edge Transmission Line Anomaly Detection
title_short An Improved AlexNet for Power Edge Transmission Line Anomaly Detection
title_full An Improved AlexNet for Power Edge Transmission Line Anomaly Detection
title_fullStr An Improved AlexNet for Power Edge Transmission Line Anomaly Detection
title_full_unstemmed An Improved AlexNet for Power Edge Transmission Line Anomaly Detection
title_sort improved alexnet for power edge transmission line anomaly detection
publisher IEEE
series IEEE Access
issn 2169-3536
publishDate 2020-01-01
description Since most outdoor transmission line equipment suffers from harsh disasters, they are prone to wire breakage, tower collapse and insulator flashover. When anomaly occurs, too much time is required for the State Grid Corporation to fix it manually. To reduce the inspection burden, many methods have been presented in the past to diagnose and locate anomaly. In this paper, we propose an improved AlexNet model for anomaly detection. In the aspect of feature extraction, the proposed model extracts the characteristics of transmission line equipment through a deep convolutional neural network (DCNN). In the aspect of the recognition algorithm, by referring to the advantages of the traditional machine learning method and incorporating the advantages of the support vector machine (SVM), an SVM classification method incorporating deep learning is proposed. Finally, the improved AlexNet model and SVM classification method are used to classify images of various types of power equipment. The results show that the proposed methods can be effectively applied to the image recognition of various types of power equipment, and they greatly improve the recognition rate of power equipment images, which has great potential for future real-time transmission line monitoring platform design.
topic Transmission line
edge computing
AlexNet
SVM
anomaly detection
url https://ieeexplore.ieee.org/document/9097293/
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