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Sparse Bayesian Identification of Temperature-Displacement Model for Performance Assessment and Early Warning of Bridge Bearings

机译:用于桥梁支座性能评估与预警的温度-位移模型稀疏贝叶斯辨识

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Bearings usually play numerous important functionalities such as deformation regulation, load transfer, and seismic isolation in bridges. A better mastery of their service performance is increasingly desired for bridge owners. In the present study, a novel sparse Bayesian temperature-displacement relationship (TDR) model is proposed to characterize and predict the bearing displacement responses induced by temperature actions in a probabilistic manner, based on the use of long-term structural health monitoring (SHM) data. Compared with the traditional deterministic TDR model, the newly proposed model can deal with two critical problems: (1) most of temperature difference terms barely have effects on bearing displacement responses, leading to the sparsity of model parameters; and (2) uncertainties will inevitably arise from factors such as measurement noise and inherent randomness, resulting in the uncertainty of model parameters. Therefore, it enables to account for the uncertainty associated with the predictions of temperature-induced bearing displacement responses. By combining the probabilistic prediction results with the reliability and anomaly analysis principles, a reliability index is adopted to assess the service performance of bearings subjected to extreme temperature actions. In addition, an anomaly index is defined to determine whether there are performance degradations and then trigger early warnings for the degraded bearings. The long-term SHM data from an in-service long-span railway bridge is employed for effectiveness verifications. The results show that the sparse Bayesian TDR model can achieve effective probabilistic predictions for temperature-induced bearing displacement responses and the reliability and anomaly indices are favorable for bearing performance assessment and early warning.
机译:支座通常具有许多重要的功能,例如桥梁中的变形调节、荷载传递和隔震。桥梁所有者越来越希望更好地掌握他们的服务性能。本研究基于长期结构健康监测(SHM)数据,提出了一种新的稀疏贝叶斯温度-位移关系(TDR)模型,以概率方式表征和预测温度作用引起的轴承位移响应。与传统的确定性TDR模型相比,新提出的模型可以解决两个关键问题:(1)大多数温差项对轴承位移响应几乎没有影响,导致模型参数稀疏;(2)测量噪声、固有随机性等因素不可避免地会产生不确定性,导致模型参数的不确定性。因此,它能够解释与温度引起的轴承位移响应预测相关的不确定性。将概率预测结果与可靠性和异常分析原理相结合,采用可靠性指标对轴承在极端温度作用下的使用性能进行评价。此外,还定义了一个异常指数,以确定是否存在性能下降,然后触发对降级轴承的早期预警。利用在役大跨度铁路桥梁的长期SHM数据进行有效性验证。结果表明,稀疏贝叶斯TDR模型能够对温度引起的轴承位移响应进行有效的概率预测,可靠性和异常指标有利于轴承性能评估和预警。

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