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A clustering approach for structural health monitoring on bridges

机译:桥梁结构健康监测的聚类方法

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摘要

Structural health monitoring is a process for identifying damage in civil infrastructures using sensing system. It has been increasingly employed due to advances in sensing technologies and data analytic using machine learning. A common problem within this scenario is that limited data of real structural faults are available. Therefore, unsupervised and novelty detection machine learning methods must be employed. This work presents a clustering based approach to group substructures or joints with similar behaviour on bridge and then detect abnormal or damaged ones, as part of efforts in applying structural health monitoring to the Sydney Harbour Bridge, one of iconic structures in Australia. The approach is a combination of feature extraction, a nearest neighbor based outlier removal, followed by a clustering approach over both vibration events and joints representatives. Vibration signals caused by passing vehicles from different joints are then classified and damaged joints can be detected and located. The validity of the approach was demonstrated using real data collected from the Sydney Harbour Bridge. The clustering results showed correlations among similarly located joints in different bridge zones. Moreover, it also helped to detect a damaged joint and a joint with a faulty instrumented sensor, and thus demonstrated the feasibility of the proposed clustering based approach to complement existing damage detection strategies.
机译:结构健康监测是使用传感系统识别民用基础设施中损坏的过程。由于传感技术和使用机器学习的数据分析的进步,它已被越来越多地采用。在这种情况下,一个常见的问题是实际结构故障的有限数据可用。因此,必须采用无监督和新颖的机器学习方法。这项工作提出了一种基于聚类的方法,将桥上具有相似行为的子结构或接头分组,然后检测异常或损坏的构件,这是将结构健康监控应用于悉尼标志性建筑之一悉尼海港大桥的努力的一部分。该方法是特征提取,基于最近邻点的离群值去除,然后是针对振动事件和关节代表的聚类方法的组合。然后,对来自不同关节的车辆驶过而产生的振动信号进行分类,并可以检测和定位损坏的关节。使用从悉尼海港大桥收集的真实数据证明了该方法的有效性。聚类结果显示了在不同桥梁区域中位置相似的节之间的相关性。此外,它还有助于检测损坏的关节和带有故障的仪表传感器的关节,从而证明了提出的基于聚类方法来补充现有的损坏检测策略的可行性。

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