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Gear Multi-Faults Diagnosis of a Rotating Machinery Based on Independent Component Analysis and Fuzzy K-Nearest Neighbor

机译:基于独立分量分析的旋转机械齿轮多故障诊断和模糊K最近邻居

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Gearboxes are extensively used in various areas including aircraft, mining, manufacturing, and agriculture, etc. The breakdowns of the gearbox are mostly caused by the gear failures. It is therefore crucial for engineers and researchers to monitor the gear conditions in time in order to prevent the malfunctions of the plants. In this paper, a condition monitoring and faults identification technique for rotating machineries based on independent component analysis (ICA) and fuzzy k-nearest neighbor (FKNN) is described. In the diagnosis process, the ICA was initially employed to separate characteristic vibration signal and interference vibration signal from the parallel time series obtained from multi-channel accelerometers mounted on different positions of the gearbox. The wavelet transform (WT) and autoregressive (AR) model method then were performed as the feature extraction technique to attain the original feature vector of the characteristic signal. Meanwhile, the ICA was used again to reduce the dimensionality of the original feature vector. Hence, the useless information in the feature vector could be removed. Finally, the FKNN algorithm was implemented in the pattern recognition process to identify the conditions of the gears of interest. The experimental results suggest that the sensitive fault features can be extracted efficiently after the ICA processing, and the proposed diagnostic system is effective for the gear multi-faults diagnosis, including the gear crack failure, pitting failure, gear tooth broken, compound fault of wear and spalling, etc. In addition, the proposed method can achieve higher performance than that without ICA processing with respect to the classification rate.
机译:齿轮箱广泛用于包括飞机,采矿,制造和农业等各种领域等。齿轮箱的故障主要由齿轮故障引起。因此,对于工程师和研究人员来说至关重要,以防止植物的故障监测齿轮条件。在本文中,描述了基于独立分量分析(ICA)和模糊K最近邻(FKNN)的旋转机械的状态监测和故障识别技术。在诊断过程中,ICA最初用于将特征振动信号和干扰振动信号从安装在齿轮箱的不同位置的多通道加速度计中获得的并行时间序列分离。然后,执行小波变换(WT)和自回归(AR)模型方法作为特征提取技术,以获得特征信号的原始特征向量。同时,再次使用ICA以减少原始特征向量的维度。因此,可以删除特征向量中的无用信息。最后,在模式识别过程中实现了FKNN算法以识别感兴趣的齿轮的条件。实验结果表明,在ICA处理之后可以有效地提取敏感故障特征,并且所提出的诊断系统对于齿轮多故障诊断有效,包括齿轮裂纹破坏,蚀力故障,齿轮齿破碎,磨损复合故障另外,所提出的方法可以实现比在分类率的ICA处理的情况下实现更高的性能。

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