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Feature Extraction Based on Adaptive Multiwavelets and LTSA for Rotating Machinery Fault Diagnosis

机译:基于自适应多灯和LTSA的特征提取,用于旋转机械故障诊断

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Feature extraction is a key procedure in the fault diagnosis of rotating machinery. To obtain fault features with lower dimensionality and higher sensitivity, a feature extraction method based on adaptive multiwavelets transform (AMWT) and local tangent space alignment (LTSA) is proposed in this paper. AMWT is first used to obtain multiple features from the vibration signals of the machine under test to form a high-dimensional feature set. Then, in order to avoid the adverse effect of the irrelevant features in this high-dimensional feature set on the fault diagnosis result, a detection index (DI) is investigated to evaluate the sensitivity of the features and those with lower sensitivity are removed. After that, LTSA is applied for feature fusion to reduce the redundant features in the high-dimensional feature set. To validate the proposed method, performance of four feature extraction schemes based on (i) wavelet and LTSA, (ii) Geronimo, Hardin, and Massopust (GHM) multiwavelets and LTSA, (iii) AMWT and principal component analysis (PCA), and (iv) AMWT and multidimensional scaling (MDS) is compared with the proposed method. The feature extraction results by these methods are then fed into K-medoids classifier to discriminate the faults. The results show that the proposed method can improve the sensitivity of the extracted features and obtain higher fault recognition rate.
机译:特征提取是旋转机械故障诊断中的关键程序。为了获得具有较低维度和更高灵敏度的故障特征,本文提出了一种基于自适应多主导变换(AMWT)和局部切换空间对准(LTSA)的特征提取方法。 AMWT首先用于从正在测试的机器的振动信号中获得多个特征以形成高维特征集。然后,为了避免在故障诊断结果上设定的该高维特征中的不相关特征的不相关特征的不利影响,研究了检测指数(DI)以评估特征的灵敏度,并且除了较低灵敏度的灵敏度。之后,LTSA用于特征融合,以减少高维特征集中的冗余功能。为了验证所提出的方法,基于(i)小波和LTSA,(ii)Geronimo,Hardin和Massopumust(GHM)多小波和LTSA,(III)AMWT和主要成分分析(PCA)的四个特征提取方案的性能。 (iv)与所提出的方法进行比较AMWT和多维缩放(MDS)。然后将这些方法的特征提取结果送入K-METOIDS分类器以区分故障。结果表明,该方法可以提高提取特征的灵敏度并获得更高的故障识别率。

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