Broken Wire Detection System for PCCPs Based on Raspberry Pi and Deep Learning

Broken wire electromagnetic detection technology for prestressed concrete cylinder pipes (PCCPs) is an important technical means to maintain the safety of PCCP engineering. Although electromagnetic detection technology has a high detection accuracy rate and wide application, it still faces the probl...

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Main Authors: SUN Xuechao, ZHANG Youyuan, ZHU Jinxiang, WANG Ping, YIN Da
Format: Article
Language:zho
Published: Editorial Office of Pearl River 2024-01-01
Series:Renmin Zhujiang
Subjects:
Online Access:http://www.renminzhujiang.cn/thesisDetails?columnId=67369553&Fpath=home&index=0
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author SUN Xuechao
ZHANG Youyuan
ZHU Jinxiang
WANG Ping
YIN Da
author_facet SUN Xuechao
ZHANG Youyuan
ZHU Jinxiang
WANG Ping
YIN Da
author_sort SUN Xuechao
collection DOAJ
description Broken wire electromagnetic detection technology for prestressed concrete cylinder pipes (PCCPs) is an important technical means to maintain the safety of PCCP engineering. Although electromagnetic detection technology has a high detection accuracy rate and wide application, it still faces the problems of complicated data processing and high labor time, which limits its large-scale application in actual engineering. In order to solve the problems of low identification efficiency and high labor cost of traditional broken wire detection equipment for PCCPs, a broken wire detection system based on raspberry pi and deep learning was proposed. The raspberry pi was used as the core of the main control system to collect data, and then the long short-term memory (LSTM) network model trained in advance on the PC platform was imported. The powerful feature extraction capability of the LSTM model was used to process the collected data, and the broken wire detection results were given in real time, successfully overcoming the limitations of traditional methods and realizing efficient and accurate identification of broken wires. The test results show that the detection accuracy of the system on the test set data reaches 80%, which provides a feasible solution for the engineering application of broken wire detection for PCCPs.
format Article
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institution Kabale University
issn 1001-9235
language zho
publishDate 2024-01-01
publisher Editorial Office of Pearl River
record_format Article
series Renmin Zhujiang
spelling doaj-art-5a0fdee75cf8404a859824c8c866d9222025-01-15T03:01:17ZzhoEditorial Office of Pearl RiverRenmin Zhujiang1001-92352024-01-011967369553Broken Wire Detection System for PCCPs Based on Raspberry Pi and Deep LearningSUN XuechaoZHANG YouyuanZHU JinxiangWANG PingYIN DaBroken wire electromagnetic detection technology for prestressed concrete cylinder pipes (PCCPs) is an important technical means to maintain the safety of PCCP engineering. Although electromagnetic detection technology has a high detection accuracy rate and wide application, it still faces the problems of complicated data processing and high labor time, which limits its large-scale application in actual engineering. In order to solve the problems of low identification efficiency and high labor cost of traditional broken wire detection equipment for PCCPs, a broken wire detection system based on raspberry pi and deep learning was proposed. The raspberry pi was used as the core of the main control system to collect data, and then the long short-term memory (LSTM) network model trained in advance on the PC platform was imported. The powerful feature extraction capability of the LSTM model was used to process the collected data, and the broken wire detection results were given in real time, successfully overcoming the limitations of traditional methods and realizing efficient and accurate identification of broken wires. The test results show that the detection accuracy of the system on the test set data reaches 80%, which provides a feasible solution for the engineering application of broken wire detection for PCCPs.http://www.renminzhujiang.cn/thesisDetails?columnId=67369553&Fpath=home&index=0PCCPbroken wire detectiondeep learningraspberry pi
spellingShingle SUN Xuechao
ZHANG Youyuan
ZHU Jinxiang
WANG Ping
YIN Da
Broken Wire Detection System for PCCPs Based on Raspberry Pi and Deep Learning
Renmin Zhujiang
PCCP
broken wire detection
deep learning
raspberry pi
title Broken Wire Detection System for PCCPs Based on Raspberry Pi and Deep Learning
title_full Broken Wire Detection System for PCCPs Based on Raspberry Pi and Deep Learning
title_fullStr Broken Wire Detection System for PCCPs Based on Raspberry Pi and Deep Learning
title_full_unstemmed Broken Wire Detection System for PCCPs Based on Raspberry Pi and Deep Learning
title_short Broken Wire Detection System for PCCPs Based on Raspberry Pi and Deep Learning
title_sort broken wire detection system for pccps based on raspberry pi and deep learning
topic PCCP
broken wire detection
deep learning
raspberry pi
url http://www.renminzhujiang.cn/thesisDetails?columnId=67369553&Fpath=home&index=0
work_keys_str_mv AT sunxuechao brokenwiredetectionsystemforpccpsbasedonraspberrypianddeeplearning
AT zhangyouyuan brokenwiredetectionsystemforpccpsbasedonraspberrypianddeeplearning
AT zhujinxiang brokenwiredetectionsystemforpccpsbasedonraspberrypianddeeplearning
AT wangping brokenwiredetectionsystemforpccpsbasedonraspberrypianddeeplearning
AT yinda brokenwiredetectionsystemforpccpsbasedonraspberrypianddeeplearning