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Volume 53 Issue 9
Sep.  2023
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Article Contents
HUO Linsheng, LI Hongnan, YANG Zhuodong, ZHOU Jing. Research Advances of Intelligent Detection and Monitoring Techniques for Loosening of Steel Structure Bolted Connections[J]. INDUSTRIAL CONSTRUCTION, 2023, 53(9): 10-17. doi: 10.13204/j.gyjzG23080112
Citation: HUO Linsheng, LI Hongnan, YANG Zhuodong, ZHOU Jing. Research Advances of Intelligent Detection and Monitoring Techniques for Loosening of Steel Structure Bolted Connections[J]. INDUSTRIAL CONSTRUCTION, 2023, 53(9): 10-17. doi: 10.13204/j.gyjzG23080112

Research Advances of Intelligent Detection and Monitoring Techniques for Loosening of Steel Structure Bolted Connections

doi: 10.13204/j.gyjzG23080112
  • Received Date: 2023-08-01
    Available Online: 2023-11-08
  • The bolted connection is the most common type of connections in steel structures. Loosening and detachment of bolts can reduce the bearing capacity of the structure and lead to safety hazards. In order to prevent engineering accidents, researchers have proposed many methods of detecting bolt loosening in recent years. The paper reviewed the working principles and research advances of some commonly used bolt loosening detection techniques, including piezoelectric sensing technology, fiber optic sensing technology, digital image processing technology, and percussion acoustic method. The future development direction of bolt failure detection technology was also discussed.
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