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Long-term bridge health monitoring and performance assessment based on a Bayesian approach

机译:基于贝叶斯方法的长期桥梁健康监测与性能评估

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摘要

This study presents a damage detection approach for the long-term health monitoring of bridge structures. The Bayesian approach comprising both Bayesian regression and Bayesian hypothesis testing is proposed to detect the structural changes in an in-service seven-span steel plate girder bridge with Gerber system. Both temperature and vehicle weight effects are accounted in the analysis. The acceleration responses at four points of the bridge span are utilised in this investigation. The data covering three different time periods are used in the bridge health monitoring (BHM). Regression analyses showed that the autoregressive exogenous model considering both temperature and vehicle weight effects has the best performance. The Bayesian factor is found to be a sensitive damage indicator in the BHM. The Bayesian approach can provide updated information in the real-time monitoring of bridge structures. The information provided from the Bayesian approach is convenient and easy to handle compared to the traditional approaches. The applicability of this approach is also validated in a case study where artificially generated damage data is added to the observation data.
机译:本研究提出了桥梁结构长期健康监测的损伤检测方法。提出了包括贝叶斯回归和贝叶斯假设检测的贝叶斯方法,以检测使用Gerber系统的七跨钢板梁梁桥中的结构变化。在分析中核算了温度和车辆重量效应。在这次调查中使用了四个点的加速响应。覆盖三个不同时间段的数据用于桥梁健康监测(BHM)。回归分析表明,考虑到温度和车辆重量效应的自回归性外源模型具有最佳性能。贝叶斯因子被发现是BHM中的敏感损坏指示器。贝叶斯方法可以在桥梁结构的实时监控中提供更新的信息。与传统方法相比,贝叶斯方法提供的信息方便且易于处理。在将人工产生的损坏数据添加到观察数据的情况下,还验证了这种方法的适用性。

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