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A novel approach for the structural identification and monitoring of a full-scale 17-story building based on ambient vibration measurements

机译:一种基于环境振动测量的全尺寸17层建筑结构识别和监控的新方法

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For reliable and practical application of structural health monitoring approaches in conjunction with dense sensor arrays deployed on 'smart' systems, there is a need to develop and evaluate alternate strategies for efficient problem decomposition to rapidly and accurately determine the occurrence, location and level of small changes in the underlying structural characteristics of a monitored system based on its vibrational signature. Furthermore, there is also a need to quantify the level of uncertainties in the identified system characteristics so as to have a measurable level of confidence in the parameters to be relied on for the detection of genuine changes (damage) in the monitored system. This study presents the results of two time-domain identification techniques applied to a full-scale 17-story building, based on ambient vibration measurements. The Factor building is a steel frame structure located on the UCLA campus. This building was instrumented permanently with a dense array of 72-channel accelerometers, and the acceleration data are being continuously recorded. The first identification method used in this study is the NExT/ERA, which is regarded as a global (or centralized) approach, since it deals with the global dynamic properties of the structure. The second method is a time-domain identification technique for chain-like MDOF systems. Since in this method the identification of each link of the chain is performed independently, it is regarded as a local (or decentralized) identification methodology. For the same reason, this method can be easily adopted for large-scale sensor network architectures in which the centralized approaches are not feasible due to massive storage, power, bandwidth and computational requirements. To have a statistically meaningful results, 50 days of recorded data are considered in this study. The modal parameter and chain identification procedures are performed over time windows of 2 h each and with 50% overlap. Using the NExT/ERA method, 12 dominant modes of the building were identified. It was observed that variations in the frequency estimation are relatively small; the coefficient of variation is about 1-2% for most of the estimated modal frequencies. Chain system identification was successfully implemented using the output-only data acquired from the Factor building. Probability distributions of the estimated coefficients of displacement and velocity terms in the interstory restoring functions (which are the mass-normalized local stiffness and damping values) that were found based on the chain system identification are presented. The variability of the estimated parameters due to temperature fluctuations is investigated. It is shown that there is a strong correlation between the modal frequency variations and the temperature variations in a 24 h period.
机译:为了将结构健康监控方法与部署在“智能”系统上的密集传感器阵列一起可靠而实际地应用,需要开发和评估可有效分解问题的替代策略,以快速准确地确定小事件的发生,位置和级别根据其振动特征改变受监视系统的基础结构特征。此外,还需要对所识别的系统特性中的不确定性水平进行量化,以便对要检测的被监视系统中的真实变化(损坏)所依赖的参数具有可测量的置信度。这项研究基于环境振动测量结果,提出了两种应用于全尺寸17层建筑物的时域识别技术的结果。因子大楼是位于UCLA校园内的钢框架结构。该建筑物永久安装有密集的72通道加速度计阵列,并且不断记录加速度数据。本研究中使用的第一种识别方法是NExT / ERA,由于它处理结构的整体动态特性,因此被视为全局(或集中式)方法。第二种方法是链状MDOF系统的时域识别技术。由于在此方法中,链的每个链接的识别都是独立执行的,因此被视为本地(或分散式)识别方法。出于同样的原因,这种方法可以很容易地用于大规模传感器网络体系结构,在这些体系结构中,由于大量的存储,功率,带宽和计算要求,因此集中式方法不可行。为了获得有意义的统计结果,本研究考虑了50天的记录数据。模态参数和链识别过程在每个2小时的时间窗口内执行,并且有50%的重叠。使用NExT / ERA方法,确定了建筑物的12种主要模式。据观察,频率估计中的变化相对较小。对于大多数估计的模态频率,变异系数约为1-2%。链系统识别成功地使用了从Factor大楼获取的仅输出数据来实现。给出了基于链系统识别找到的层间恢复函数(质量标准化的局部刚度和阻尼值)中位移和速度项的估计系数的概率分布。研究了由于温度波动导致的估计参数的可变性。结果表明,在24小时内,模态频率变化与温度变化之间存在很强的相关性。

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