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A spectral-based clustering for structural health monitoring of the Sydney Harbour Bridge

机译:基于光谱的聚类,用于悉尼海港大桥的结构健康监测

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This paper presents the results of a large scale Structural Health Monitoring application on the Sydney Harbour Bridge in Australia. This bridge has many structural components, and our work focuses on a subset of 800 jack arches under the traffic lane 7. Our goal is to identify which of these jack arches (if any) respond differently to the traffic input, due to potential structural damages or instrumentation issues. We propose a novel non-model-based method to achieve this objective, using a spectrum-driven feature based on the Spectral Moments (SMs) from measured responses from the jack arches. SMs contain information from the entire frequency range, thus subtle differences between the normal signals and distorted ones could be identified. Our method then applies a modified k-means-clustering algorithm to these features, followed by a selection mechanism on the clustering results to identify jack arches with abnormal responses. We performed an extensive evaluation of the proposed method using real data from the bridge. This evaluation included a control component, where the approach successfully detected jack arches with already known damage or issues. It also included a test component, which applied the method to a large set of nodes over a month of data to detect any potential anomaly. The detected anomalies turned out to have indeed system issues after further investigations.
机译:本文介绍了在澳大利亚悉尼海港大桥上进行大规模结构健康监测的结果。这座桥具有许多结构组件,我们的工作重点是在车道7下的800个千斤顶拱门的子集中。我们的目标是确定这些千斤顶拱门中的哪些(如果有的话)对交通输入的反应不同,因为它们可能造成结构性损坏或仪器问题。我们提出了一种新颖的非基于模型的方法来实现此目标,它使用基于从千斤顶拱门测得的响应基于频谱矩(SM)的频谱驱动功能。 SM包含来自整个频率范围的信息,因此可以识别正常信号和失真信号之间的细微差异。然后,我们的方法将改进的k均值聚类算法应用于这些特征,然后对聚类结果进行选择,以识别具有异常响应的千斤顶。我们使用来自桥梁的真实数据对提出的方法进行了广泛的评估。该评估包括一个控制组件,该方法可以成功地检测出具有已知损坏或问题的千斤顶。它还包括一个测试组件,该组件在一个月的数据中将该方法应用于大量节点,以检测任何潜在的异常情况。经过进一步调查,发现的异常确实确实存在系统问题。

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