首页> 外文期刊>Journal of Performance of Constructed Facilities >Detection and Location of the Degraded Bearings Based on Monitoring the Longitudinal Expansion Performance of the Main Girder of the Dashengguan Yangtze Bridge
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Detection and Location of the Degraded Bearings Based on Monitoring the Longitudinal Expansion Performance of the Main Girder of the Dashengguan Yangtze Bridge

机译:基于大胜关长江大桥主梁纵向伸缩性能监测的退化支座检测与定位

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摘要

Temperature field data from the steel truss arch girder and longitudinal displacement data from six groups of rubber bearings were collected by the structural health monitoring system for the Dashengguan Yangtze Bridge. By using long-term monitoring data, two correlations are investigated: the linear correlation between the longitudinal displacement and the temperature field (including uniform temperature and temperature gradient); and the linear correlation of the longitudinal displacements in different locations. A multivariate linear regression equation is used to model the first correlation, and a Lagrange polynomial interpolation is used to model the second correlation. The final mathematical models, representing the healthy state of the bearings, can be applied to simulate the longitudinal displacements of the main girder. Furthermore, the change regularity of longitudinal displacements for the degraded rubber bearings is revealed taking advantage of a hysteretic model and presumed envelope curves of frictions caused by bearing degradation. A method of detection and location for the degraded bearings is proposed in four detailed steps, and the numerical results demonstrate that this method is effective. (C) 2015 American Society of Civil Engineers.
机译:利用大胜关长江大桥结构健康监测系统,收集了钢桁架拱梁的温度场数据和六组橡胶轴承的纵向位移数据。通过使用长期监测数据,研究了两种相关性:纵向位移与温度场之间的线性相关性(包括均匀的温度和温度梯度);以及不同位置的纵向位移的线性相关性。多元线性回归方程用于模拟第一相关性,而拉格朗日多项式插值用于模拟第二相关性。代表轴承健康状态的最终数学模型可以应用于模拟主梁的纵向位移。此外,利用滞后模型和假定的由轴承退化引起的摩擦的包络曲线,揭示了退化橡胶轴承纵向位移的变化规律。通过四个详细步骤提出了一种退化轴承的检测和定位方法,数值结果表明该方法是有效的。 (C)2015年美国土木工程师学会。

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