An operation site security detection method based on point cloud data and improved YOLO algorithm under the architecture of the power internet of things

Abstract An operation site safety detection method based on point cloud data and improved YOLO algorithm under the power Internet of Things architecture is proposed to address the complex environment of power construction sites and the poor effectiveness of most existing object detection methods. Fi...

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Main Authors: Shibo Yang, Yu Wang, Shuai Guo, Shijie Feng
Format: Article
Language:English
Published: Wiley 2024-01-01
Series:The Journal of Engineering
Subjects:
Online Access:https://doi.org/10.1049/tje2.12344
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author Shibo Yang
Yu Wang
Shuai Guo
Shijie Feng
author_facet Shibo Yang
Yu Wang
Shuai Guo
Shijie Feng
author_sort Shibo Yang
collection DOAJ
description Abstract An operation site safety detection method based on point cloud data and improved YOLO algorithm under the power Internet of Things architecture is proposed to address the complex environment of power construction sites and the poor effectiveness of most existing object detection methods. Firstly, an operation site safety supervision system was designed based on the power Internet of Things architecture, and efficient image processing was achieved through cloud edge collaboration. Then, point cloud data and on‐site monitoring information are used on the edge side to extract the accessible area, ensuring that the target is located in a safe area. Finally, the YOLO algorithm is improved in the cloud by using clustering algorithms, network structure optimization, and other methods, and used to detect targets and determine whether their behaviour meets the safety requirements of the operation site. Based on the PyTorch deep learning framework, the proposed method was experimentally demonstrated, and the results showed that its average detection accuracy and time were 94.53% and 68 ms, respectively, providing technical support for achieving remote monitoring of power operation sites.
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spelling doaj.art-5e48ba6cc0d340b2ae0a8d1b8042aba22024-01-24T13:52:30ZengWileyThe Journal of Engineering2051-33052024-01-0120241n/an/a10.1049/tje2.12344An operation site security detection method based on point cloud data and improved YOLO algorithm under the architecture of the power internet of thingsShibo Yang0Yu Wang1Shuai Guo2Shijie Feng3State Grid Hebei Extra High Voltage Company Shijiazhuang Heibei ChinaState Grid Hebei Extra High Voltage Company Shijiazhuang Heibei ChinaState Grid Hebei Extra High Voltage Company Shijiazhuang Heibei ChinaState Grid Hebei Extra High Voltage Company Shijiazhuang Heibei ChinaAbstract An operation site safety detection method based on point cloud data and improved YOLO algorithm under the power Internet of Things architecture is proposed to address the complex environment of power construction sites and the poor effectiveness of most existing object detection methods. Firstly, an operation site safety supervision system was designed based on the power Internet of Things architecture, and efficient image processing was achieved through cloud edge collaboration. Then, point cloud data and on‐site monitoring information are used on the edge side to extract the accessible area, ensuring that the target is located in a safe area. Finally, the YOLO algorithm is improved in the cloud by using clustering algorithms, network structure optimization, and other methods, and used to detect targets and determine whether their behaviour meets the safety requirements of the operation site. Based on the PyTorch deep learning framework, the proposed method was experimentally demonstrated, and the results showed that its average detection accuracy and time were 94.53% and 68 ms, respectively, providing technical support for achieving remote monitoring of power operation sites.https://doi.org/10.1049/tje2.12344power system measurementpower system stability
spellingShingle Shibo Yang
Yu Wang
Shuai Guo
Shijie Feng
An operation site security detection method based on point cloud data and improved YOLO algorithm under the architecture of the power internet of things
The Journal of Engineering
power system measurement
power system stability
title An operation site security detection method based on point cloud data and improved YOLO algorithm under the architecture of the power internet of things
title_full An operation site security detection method based on point cloud data and improved YOLO algorithm under the architecture of the power internet of things
title_fullStr An operation site security detection method based on point cloud data and improved YOLO algorithm under the architecture of the power internet of things
title_full_unstemmed An operation site security detection method based on point cloud data and improved YOLO algorithm under the architecture of the power internet of things
title_short An operation site security detection method based on point cloud data and improved YOLO algorithm under the architecture of the power internet of things
title_sort operation site security detection method based on point cloud data and improved yolo algorithm under the architecture of the power internet of things
topic power system measurement
power system stability
url https://doi.org/10.1049/tje2.12344
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