Intelligent Fault Diagnosis for Bridge via Modal Analysis

W. Zhuang
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引用次数: 0

Abstract

Due to natural disasters and man-made reasons, bridges are prone to structural damage during long-term usage, which reduces the associated carrying capacity, increases natural aging, and reduces safety. It is urgent to monitor the health status of bridge structure via intelligent technology. This paper proposes a bridge fault recognition structure. First, the signals of bridge parameter are collected by using distributed sensors. Then, the collected signals are processed by signal processing to extract the features in time and frequency domain. Lastly, the extracted features are used to learn an intelligent classifier. The large margin distribution machine is adopted as a classification model. The experimental results have proven the feasibility of the proposed bridge fault recognition structure.
基于模态分析的桥梁智能故障诊断
由于自然灾害和人为原因,桥梁在长期使用过程中容易发生结构破坏,降低了相应的承载能力,增加了自然老化,降低了安全性。利用智能技术对桥梁结构的健康状态进行监测已迫在眉睫。提出了一种桥式故障识别结构。首先,采用分布式传感器采集桥梁参数信号;然后,对采集到的信号进行信号处理,提取时域和频域特征。最后,将提取的特征用于学习智能分类器。采用大余量分配机作为分类模型。实验结果证明了所提出的桥梁故障识别结构的可行性。
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