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Force monitoring of steel cables using vision-based sensing technology: methodology and experimental verification

机译:使用基于视觉的传感技术对钢缆进行力监控:方法和实验验证

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摘要

Steel cables serve as the key structural components in long-span bridges, and the force state of the steel cable is deemed to be one of the most important determinant factors representing the safety condition of bridge structures. The disadvantages of traditional cable force measurement methods have been envisaged and development of an effective alternative is still desired. In the last decade, the vision-based sensing technology has been rapidly developed and broadly applied in the field of structural health monitoring (SHM). With the aid of vision-based multi-point structural displacement measurement method, monitoring of the tensile force of the steel cable can be realized. In this paper, a novel cable force monitoring system integrated with a multi-point pattern matching algorithm is developed. The feasibility and accuracy of the developed vision-based force monitoring system has been validated by conducting the uniaxial tensile tests of steel bars, steel wire ropes, and parallel strand cables on a universal testing machine (UTM) as well as a series of moving loading experiments on a scale arch bridge model. The comparative study of the experimental outcomes indicates that the results obtained by the vision-based system are consistent with those measured by the traditional method for cable force measurement.
机译:钢缆是大跨度桥梁的关键结构部件,钢缆的受力状态被认为是代表桥梁结构安全状况的最重要的决定因素之一。已经设想了传统缆索力测量方法的缺点,并且仍然需要开发一种有效的替代方法。在过去的十年中,基于视觉的传感技术得到了快速发展,并广泛应用于结构健康监测(SHM)领域。借助基于视觉的多点结构位移测量方法,可以实现对钢缆拉力的监控。本文开发了一种集成了多点模式匹配算法的新型电缆力监测系统。已开发的基于视觉的力监控系统的可行性和准确性已通过在通用测试机(UTM)上进行钢筋,钢丝绳和平行绞合电缆的单轴拉伸测试以及一系列移动载荷得到了验证在比例拱桥模型上进行实验。对实验结果的比较研究表明,基于视觉的系统所获得的结果与传统缆索力测量方法所获得的结果一致。

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