Fault Diagnosis Method of Distribution Equipment Based on Hybrid Model of Robot and Deep Learning
In view of the poor effect of most fault diagnosis methods on the intelligent recognition of equipment images, a fault diagnosis method of distribution equipment based on the hybrid model of robot and deep learning is proposed to reduce the dependence on manpower and realize efficient intelligent di...
Saved in:
Main Authors: | , , , , , , , |
---|---|
Format: | Article |
Language: | English |
Published: |
Wiley
2022-01-01
|
Series: | Journal of Robotics |
Online Access: | http://dx.doi.org/10.1155/2022/9742815 |
Tags: |
Add Tag
No Tags, Be the first to tag this record!
|
_version_ | 1832565891128098816 |
---|---|
author | Shan Rongrong Ma Zhenyu Ye Hong Lin Zhenxing Qiu Gongming Ge Chengyu Lu Yang Yu Kun |
author_facet | Shan Rongrong Ma Zhenyu Ye Hong Lin Zhenxing Qiu Gongming Ge Chengyu Lu Yang Yu Kun |
author_sort | Shan Rongrong |
collection | DOAJ |
description | In view of the poor effect of most fault diagnosis methods on the intelligent recognition of equipment images, a fault diagnosis method of distribution equipment based on the hybrid model of robot and deep learning is proposed to reduce the dependence on manpower and realize efficient intelligent diagnosis. Firstly, the robot is used to collect the on-site state images of distribution equipment to build the image information database of distribution equipment. At the same time, the robot background is used as the comprehensive database data analysis platform to optimize the sample quality of the database. Then, the massive infrared images are segmented based on chroma saturation brightness space to distinguish the defective equipment images, and the defective equipment areas are extracted from the images by OTSU method. Finally, the residual network is used to improve the region-based fully convolutional networks (R-FCN) algorithm, and the improved R-FCN algorithm trained by the online hard example mining method is used for fault feature learning. The fault type, grade, and location of distribution equipment are obtained through fault criterion analysis. The experimental analysis of the proposed method based on PyTorch platform shows that the fault diagnosis time and accuracy are about 5.5 s and 92.06%, respectively, which are better than other comparison methods and provide a certain theoretical basis for the automatic diagnosis of power grid equipment. |
format | Article |
id | doaj-art-dc286f77e0894c3b9489d30520184701 |
institution | Kabale University |
issn | 1687-9619 |
language | English |
publishDate | 2022-01-01 |
publisher | Wiley |
record_format | Article |
series | Journal of Robotics |
spelling | doaj-art-dc286f77e0894c3b9489d305201847012025-02-03T01:06:33ZengWileyJournal of Robotics1687-96192022-01-01202210.1155/2022/9742815Fault Diagnosis Method of Distribution Equipment Based on Hybrid Model of Robot and Deep LearningShan Rongrong0Ma Zhenyu1Ye Hong2Lin Zhenxing3Qiu Gongming4Ge Chengyu5Lu Yang6Yu Kun7NARI Group Co., LtdZhejiang Electric Power CorporationState Grid Wenzhou Power Supply Company Ouhai Power Supply BranchState Grid Wenzhou Power Supply Company Ouhai Power Supply BranchNARI Group Co., LtdNARI Group Co., LtdNARI Group Co., LtdNARI Group Co., LtdIn view of the poor effect of most fault diagnosis methods on the intelligent recognition of equipment images, a fault diagnosis method of distribution equipment based on the hybrid model of robot and deep learning is proposed to reduce the dependence on manpower and realize efficient intelligent diagnosis. Firstly, the robot is used to collect the on-site state images of distribution equipment to build the image information database of distribution equipment. At the same time, the robot background is used as the comprehensive database data analysis platform to optimize the sample quality of the database. Then, the massive infrared images are segmented based on chroma saturation brightness space to distinguish the defective equipment images, and the defective equipment areas are extracted from the images by OTSU method. Finally, the residual network is used to improve the region-based fully convolutional networks (R-FCN) algorithm, and the improved R-FCN algorithm trained by the online hard example mining method is used for fault feature learning. The fault type, grade, and location of distribution equipment are obtained through fault criterion analysis. The experimental analysis of the proposed method based on PyTorch platform shows that the fault diagnosis time and accuracy are about 5.5 s and 92.06%, respectively, which are better than other comparison methods and provide a certain theoretical basis for the automatic diagnosis of power grid equipment.http://dx.doi.org/10.1155/2022/9742815 |
spellingShingle | Shan Rongrong Ma Zhenyu Ye Hong Lin Zhenxing Qiu Gongming Ge Chengyu Lu Yang Yu Kun Fault Diagnosis Method of Distribution Equipment Based on Hybrid Model of Robot and Deep Learning Journal of Robotics |
title | Fault Diagnosis Method of Distribution Equipment Based on Hybrid Model of Robot and Deep Learning |
title_full | Fault Diagnosis Method of Distribution Equipment Based on Hybrid Model of Robot and Deep Learning |
title_fullStr | Fault Diagnosis Method of Distribution Equipment Based on Hybrid Model of Robot and Deep Learning |
title_full_unstemmed | Fault Diagnosis Method of Distribution Equipment Based on Hybrid Model of Robot and Deep Learning |
title_short | Fault Diagnosis Method of Distribution Equipment Based on Hybrid Model of Robot and Deep Learning |
title_sort | fault diagnosis method of distribution equipment based on hybrid model of robot and deep learning |
url | http://dx.doi.org/10.1155/2022/9742815 |
work_keys_str_mv | AT shanrongrong faultdiagnosismethodofdistributionequipmentbasedonhybridmodelofrobotanddeeplearning AT mazhenyu faultdiagnosismethodofdistributionequipmentbasedonhybridmodelofrobotanddeeplearning AT yehong faultdiagnosismethodofdistributionequipmentbasedonhybridmodelofrobotanddeeplearning AT linzhenxing faultdiagnosismethodofdistributionequipmentbasedonhybridmodelofrobotanddeeplearning AT qiugongming faultdiagnosismethodofdistributionequipmentbasedonhybridmodelofrobotanddeeplearning AT gechengyu faultdiagnosismethodofdistributionequipmentbasedonhybridmodelofrobotanddeeplearning AT luyang faultdiagnosismethodofdistributionequipmentbasedonhybridmodelofrobotanddeeplearning AT yukun faultdiagnosismethodofdistributionequipmentbasedonhybridmodelofrobotanddeeplearning |