A Mode Sensitivity Enhancement Method for Beam Bridge Using High-density Strain Feedback

Zheng Zhou, Qianen Xu, Qingfei Gao, Yang Liu
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Abstract

Closed-loop damage diagnosis method has attracted some attention in recent years, however, for lack of sufficient measuring points, it is difficult to achieve robust control of large structures cause the output dimension is not enough to meet the demand of system controllability and observability. On this basis, a mode sensitivity enhancement method for beam bridge using high-density strain feedback is proposed, in which high density dynamic strain measurements of the girder structure can be collected by distributed fiber sensor. Utilizing strain-displacement transformation relationship of the girder structure, the dynamic displacements can be obtained and used as output with high dimension to achieve the feedback control for eigenvalue sensitivity enhancement. To verify the proposed method, a series of numerical case studies of a beam bridge structure are performed, and it is demonstrated that the eigenvalue sensitivity can be enhanced effectively.
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利用高密度应变反馈增强梁桥模式灵敏度的方法
近年来,闭环损伤诊断方法备受关注,但由于缺乏足够的测量点,输出维度不足以满足系统可控性和可观测性的要求,因此难以实现大型结构的鲁棒控制。在此基础上,提出了一种利用高密度应变反馈增强梁桥模态灵敏度的方法,即通过分布式光纤传感器采集梁体结构的高密度动态应变测量值。利用梁体结构的应变-位移变换关系,可获得动态位移并将其作为高维度输出,从而实现特征值灵敏度增强的反馈控制。为了验证所提出的方法,对梁桥结构进行了一系列数值案例研究,结果表明可以有效提高特征值灵敏度。
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