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A Bayesian approach for condition assessment and damage alarm of bridge expansion joints using long-term structural health monitoring data

机译:使用长期结构健康监测数据的桥梁扩展关节条件评估和损伤警报的贝叶斯方法

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摘要

Premature failure of bridge expansion joints has been increasingly observed in recent years, and nowadays it becomes a major concern of bridge owners. A better understanding of their performance in service is highly desired. Deterministic linear regression models between bridge temperature and expansion joint displacement have widely been adopted to characterize the in-service performance of bridge expansion joints. When such a regression pattern is elicited using real-time monitoring data, the deterministic models fail to account for uncertainty inherent in the monitoring data and interpret the model error. In this study, a probabilistic approach for characterization of the regression pattern between bridge temperature and expansion joint displacement by use of Structural Health Monitoring (SHM) data and for SHM-based condition assessment and damage alarm of bridge expansion joints is developed in the Bayesian context. The proposed approach enables to account for the uncertainty contained in the monitoring data and quantify the model error and the prediction uncertainty. By combining the Bayesian regression model and reliability theory, an anomaly index is formulated to evaluate the health condition of the expansion joint when newly collected monitoring data are available and to provide damage alarm once the probability of damage exceeds a certain threshold. In the case study, real-world monitoring data acquired from a cable-stayed bridge are used to illustrate the proposed approach, including examining the appropriateness of the design values of expansion joint displacements under extreme temperatures in serviceability limb state.
机译:近年来,桥梁膨胀关节的过早失效已经越来越多地观察到,现在它成为桥梁所有者的主要关注点。强烈希望更好地了解其在服务中的表现。桥梁温度和膨胀接头位移之间的确定性线性回归模型广泛采用了桥梁膨胀接头的施用性能。当使用实时监视数据引发这样的回归模式时,确定性模型无法解释监视数据中固有的不确定性并解释模型错误。在这项研究中,在贝叶斯语境中开发了一种通过使用结构健康监测(SHM)数据和基于SHM的条件评估和基于SHM的条件评估和SHM的条件评估和SHM条件评估和桥梁膨胀接头损伤警报的概率方法。该方法可以解释监测数据中包含的不确定性,并量化模型错误和预测不确定性。通过组合贝叶斯回归模型和可靠性理论,配制异常指数以评估新收集的监测数据时膨胀节的健康状况,并且一旦损坏的概率超过一定阈值,就会提供损坏警报。在实例研究中,使用从缆绳座桥中获取的现实监测数据来说明所提出的方法,包括检查在可维护性肢体状态下极端温度下的膨胀关节位移的设计值的适当性。

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