Impact Localization of CFRP Structure Based on FBG Sensor Network

Abstract Low energy impact can induce invisible damage of carbon fiber reinforced polymer (CFRP). The damage can seriously affect the safety of the CFRP structure. Therefore, damage detection is crucial to the CFRP structure. Impact location information is the premise of damage detection. Hence, imp...

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Main Authors: Yaozhang Sai, Xiuxia Zhao, Lili Wang, Dianli Hou
Format: Article
Language:English
Published: SpringerOpen 2019-03-01
Series:Photonic Sensors
Subjects:
Online Access:http://link.springer.com/article/10.1007/s13320-019-0546-9
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spelling doaj-9e4880845b2143369c441edaa9f9fdd62020-11-25T03:51:10ZengSpringerOpenPhotonic Sensors1674-92512190-74392019-03-01101889610.1007/s13320-019-0546-9Impact Localization of CFRP Structure Based on FBG Sensor NetworkYaozhang Sai0Xiuxia Zhao1Lili Wang2Dianli Hou3School of Information and Electrical Engineering, Ludong UniversityTIANRUN CRANKSHAFT CO., LTDSchool of Information and Electrical Engineering, Ludong UniversitySchool of Information and Electrical Engineering, Ludong UniversityAbstract Low energy impact can induce invisible damage of carbon fiber reinforced polymer (CFRP). The damage can seriously affect the safety of the CFRP structure. Therefore, damage detection is crucial to the CFRP structure. Impact location information is the premise of damage detection. Hence, impact localization is the primary issue. In this paper, an impact localization system, based on the fiber Bragg grating (FBG) sensor network, is proposed for impact detection and localization. For the completed impact signal, the FBG sensor and narrow-band laser demodulation technology are applied. Wavelet packet decomposition is introduced to extract available frequency band signals and attenuate noise. According to the energy of the available frequency band signal, an impact localization model, based on the extreme learning machine (ELM), is established with the faster training speed and less parameters. The above system is verified on the 500 mm × 500 mm × 2 mm CFRP plate. The maximum localization error and the minimum localization error are 30.4 mm and 6.7 mm, respectively. The average localization error is 14.7 mm, and training time is 0.7 s. Compared with the other machine learning methods, the localization system, proposed in this paper, has higher accuracy and faster training speed. This paper provides a practical system for impact localization of the CFRP structure.http://link.springer.com/article/10.1007/s13320-019-0546-9Carbon fiber reinforced polymerfiber Bragg gratingextreme learning machineimpact localizationwavelet packet decomposition
collection DOAJ
language English
format Article
sources DOAJ
author Yaozhang Sai
Xiuxia Zhao
Lili Wang
Dianli Hou
spellingShingle Yaozhang Sai
Xiuxia Zhao
Lili Wang
Dianli Hou
Impact Localization of CFRP Structure Based on FBG Sensor Network
Photonic Sensors
Carbon fiber reinforced polymer
fiber Bragg grating
extreme learning machine
impact localization
wavelet packet decomposition
author_facet Yaozhang Sai
Xiuxia Zhao
Lili Wang
Dianli Hou
author_sort Yaozhang Sai
title Impact Localization of CFRP Structure Based on FBG Sensor Network
title_short Impact Localization of CFRP Structure Based on FBG Sensor Network
title_full Impact Localization of CFRP Structure Based on FBG Sensor Network
title_fullStr Impact Localization of CFRP Structure Based on FBG Sensor Network
title_full_unstemmed Impact Localization of CFRP Structure Based on FBG Sensor Network
title_sort impact localization of cfrp structure based on fbg sensor network
publisher SpringerOpen
series Photonic Sensors
issn 1674-9251
2190-7439
publishDate 2019-03-01
description Abstract Low energy impact can induce invisible damage of carbon fiber reinforced polymer (CFRP). The damage can seriously affect the safety of the CFRP structure. Therefore, damage detection is crucial to the CFRP structure. Impact location information is the premise of damage detection. Hence, impact localization is the primary issue. In this paper, an impact localization system, based on the fiber Bragg grating (FBG) sensor network, is proposed for impact detection and localization. For the completed impact signal, the FBG sensor and narrow-band laser demodulation technology are applied. Wavelet packet decomposition is introduced to extract available frequency band signals and attenuate noise. According to the energy of the available frequency band signal, an impact localization model, based on the extreme learning machine (ELM), is established with the faster training speed and less parameters. The above system is verified on the 500 mm × 500 mm × 2 mm CFRP plate. The maximum localization error and the minimum localization error are 30.4 mm and 6.7 mm, respectively. The average localization error is 14.7 mm, and training time is 0.7 s. Compared with the other machine learning methods, the localization system, proposed in this paper, has higher accuracy and faster training speed. This paper provides a practical system for impact localization of the CFRP structure.
topic Carbon fiber reinforced polymer
fiber Bragg grating
extreme learning machine
impact localization
wavelet packet decomposition
url http://link.springer.com/article/10.1007/s13320-019-0546-9
work_keys_str_mv AT yaozhangsai impactlocalizationofcfrpstructurebasedonfbgsensornetwork
AT xiuxiazhao impactlocalizationofcfrpstructurebasedonfbgsensornetwork
AT liliwang impactlocalizationofcfrpstructurebasedonfbgsensornetwork
AT dianlihou impactlocalizationofcfrpstructurebasedonfbgsensornetwork
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