Data Mining-based Structural Damage Identification of Composite Bridge using Support Vector Machine

M. Gordan, S. Sabbagh-Yazdi, Z. Ismail, Khaled Ghaedi, H. H. Ghayeb
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引用次数: 7

Abstract

A structural health monitoring system contains two components, i.e. a data collection approach comprising a network of sensors for recording the structural responses as well as an extraction methodology in order to achieve beneficial information on the structural health condition. In this regard, data mining which is one of the emerging computer-based technologies, can be employed for extraction of valuable information from obtained sensor databases. On the other hand, data inverse analysis scheme as a problem-based procedure has been developing rapidly. Therefore, the aforesaid scheme and data mining should be combined in order to satisfy increasing demand of data analysis, especially in complex systems such as bridges. Consequently, this study develops a damage detection methodology based on these strategies. To this end, an inverse analysis approach using data mining is applied for a composite bridge. To aid the aim, the support vector machine (SVM) algorithm is utilized to generate the patterns by means of vibration characteristics dataset. To compare the robustness and accuracy of the predicted outputs, four kernel functions, including linear, polynomial, sigmoid, and radial basis function (RBF) are applied to build the patterns. The results point out the feasibility of the proposed method for detecting damage in composite slab-on-girder bridges.
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基于数据挖掘的支持向量机组合梁结构损伤识别
结构健康监测系统包括两个组成部分,即包括用于记录结构响应的传感器网络的数据收集方法以及提取方法,以便获得关于结构健康状况的有益信息。在这方面,数据挖掘是新兴的基于计算机的技术之一,可以用于从所获得的传感器数据库中提取有价值的信息。另一方面,数据反分析方案作为一种基于问题的程序得到了快速发展。因此,应将上述方案与数据挖掘相结合,以满足日益增长的数据分析需求,尤其是在桥梁等复杂系统中。因此,本研究开发了一种基于这些策略的损伤检测方法。为此,将数据挖掘反分析方法应用于一座组合桥梁。为了帮助实现这一目标,利用支持向量机(SVM)算法通过振动特征数据集生成模式。为了比较预测输出的鲁棒性和准确性,应用四个核函数,包括线性、多项式、S形和径向基函数(RBF)来构建模式。研究结果表明,该方法用于梁桥组合板损伤检测的可行性。
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