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A three-dimensional geometric features-based SCA algorithm for compound faults diagnosis

机译:基于三维几何特征的SCA算法,用于复合故障诊断

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摘要

To achieve compound faults diagnosis with single channel signal, a three-dimensional geometric features-based sparse component analysis (TGF-SCA) method is proposed. Intrinsic characteristic-scale decomposition (ICD) is used to decompose the single channel of mixed signal into three channels. Then, the three-dimensional potential function (TPF) is constructed based on the three-dimensional geometric features to estimate matrix. In addition, an energy factor (EF) is introduced to improve the computational efficiency in the process. Ultimately, the minimal l(1) norm algorithm is used to obtain the separated signal based on the estimated matrix. Experimental analysis results for roller bearing show that the fault feature frequencies of bearings acquired using the proposed approach are evidently close to the theoretical values. For example, when the rotating speed is 900 rpm, the feature frequency 60.27 Hz is very similar to the theoretical calculation of ball pass frequency of the outer race (BPFO) 60.5 Hz and the feature frequency 74.01 Hz is close to the theoretical calculation of the ball pass frequency of the roller (BPFR) 74.4 Hz. Compared with the ICA method, the SCA method based on Fuzzy C-means algorithm (FCM) and the SCA method based on K-means algorithm, the experimental verification results indicate that the TGF-SCA method can separate the source signal, extract the fault features and realize compound faults diagnosis for roller bearing. (C) 2018 Elsevier Ltd. All rights reserved.
机译:为了实现单通道信号的复合故障诊断,提出了一种三维几何特征的稀疏分量分析(TGF-SCA)方法。内在特征级分解(ICD)用于将混合信号的单个通道分解为三个通道。然后,基于三维几何特征来构建三维潜在功能(TPF)以估计矩阵。另外,引入了能量因子(EF)以提高过程中的计算效率。最终,最小的L(1)规范算法用于基于估计的矩阵获得分离信号。滚子轴承的实验分析结果表明,使用所提出的方法获取的轴承故障特征频率明显接近理论值。例如,当旋转速度为900rpm时,特征频率60.27Hz非常类似于外圈(BPFO)60.5Hz的球通频率的理论计算,并且特征频率74.01Hz接近理论计算滚子通频频率(BPFR)74.4 Hz。与ICA方法相比,基于模糊C型算法(FCM)的SCA方法和基于K-Mean算法的SCA方法,实验验证结果表明TGF-SCA方法可以分离源信号,提取故障特点,实现滚子轴承的复合故障诊断。 (c)2018年elestvier有限公司保留所有权利。

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