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Localisation of multiple faults in motorcycles based on the wavelet packet analysis of the produced sounds

机译:基于产生声音的小波包分析的摩托车多个故障定位

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摘要

Service station experts examine the sound patterns of the motorcycles to diagnose the faults. Automatic fault diagnosis is a challenging task and more so is recognition of multiple faults. This study presents a methodology for localisation of multiple faults in motorcycles. The sound signatures of multiple faults are constructed by fusing the individual signatures of faults from engine and exhaust subsystems. Energy distributions in the approximation coefficients of wavelet packets are used as features. Among the classifiers used, artificial neural network is found suitable for detecting the presence of multiple faults. The recognition accuracy is over 78% when trained with individual fault signatures and over 88% when trained with combined fault signatures.
机译:服务站专家检查摩托车的声音模式以诊断故障。自动故障诊断是一项艰巨的任务,对多个故障的识别也更是如此。这项研究提出了一种定位摩托车中多个故障的方法。多个故障的声音特征是通过融合来自发动机和排气子系统的各个故障特征来构建的。小波包的近似系数中的能量分布被用作特征。在使用的分类器中,发现了适用于检测多个故障的人工神经网络。使用单个故障签名进行训练时,识别准确性超过78%;使用组合故障签名进行训练时,识别准确性超过88%。

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