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Decentralized damage detection of seismically-excited buildings using multiple banks of Kalman estimators

机译:使用多组卡尔曼估计器对地震激励建筑物进行分散式损伤检测

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摘要

Natural hazards result in ill-conditioned structures with unfavorable damage. To early recognize damage existence, structures can be screened by damage detection methods after a critical hazard event. These damage detection methods are often developed based on a centralized acquiring and computing system that challenges the feasibility of deployment in a large-scale structure. Decentralized damage detection methods alter a single system to multiple subsystems that allow spatially distributing in a structure and yield comparable performance with the centralized approach. In this study, a decentralized damage detection method based on modal prediction errors via multiple banks of Kalman estimators is proposed. First, a sensor network is comprised of multiple subsystems over a structure of which the subsystems have overlapped sensing nodes. These subsystems are individually identified by an input–output frequency-domain system identification method under ambient vibrations. The identified models are then converted into several banks of Kalman estimators, and the estimators generate the estimation of structural modal responses. The prediction errors are calculated from the differentiation between measured and estimated modal responses, and the accumulated standard deviations of modal prediction errors serve as the damage indices for recognizing the damage occurrence, locations, and levels. A numerical example is introduced to demonstrate the proposed method as well as to evaluate the detection effectiveness. Moreover, the proposed method is also experimentally verified by a scaled twin-tower building using shake table testing. The experimental results indicate that the proposed method is quite effective to inform damage of structures in terms of damage occurrence, locations, and levels.
机译:自然灾害会导致状况不佳的结构受损。为了及早发现损坏的存在,可以在重大危险事件发生后通过损坏检测方法对结构进行筛选。这些损坏检测方法通常是基于集中式获取和计算系统开发的,这对大规模结构中部署的可行性提出了挑战。分散式损坏检测方法将单个系统更改为多个子系统,这些子系统允许空间分布在结构中并产生与集中式方法相当的性能。在这项研究中,提出了一种基于模态预测误差的,通过多个卡尔曼估计器库的分散式损伤检测方法。首先,传感器网络由多个子系统组成,在这些子系统的结构上,子系统具有重叠的传感节点。这些子系统通过环境振动下的输入-输出频域系统识别方法进行单独识别。然后,将识别出的模型转换为多个Kalman估计器,估计器将生成结构模态响应的估计。根据测得的模态响应和估计的模态响应之间的差异来计算预测误差,并且模态预测误差的累积标准偏差将用作识别损坏发生,位置和级别的损坏指标。数值例子介绍了该方法的有效性,并评价了检测效果。此外,提出的方法还通过使用振动台测试的规模化双塔建筑进行了实验验证。实验结果表明,所提出的方法在损伤发生,位置和水平方面可以非常有效地告知结构损伤。

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