INSTITUTIONAL DIGITAL REPOSITORY

Bearing fault detection and recognition methodology based on weighted multiscale entropy approach

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dc.contributor.author Minhas, A. S.
dc.contributor.author Kankar, P. K.
dc.contributor.author Kumar, N.
dc.contributor.author Singh, S.
dc.date.accessioned 2021-07-25T11:57:36Z
dc.date.available 2021-07-25T11:57:36Z
dc.date.issued 2021-07-25
dc.identifier.uri http://localhost:8080/xmlui/handle/123456789/2232
dc.description.abstract In the present study, a new bearing fault detection and recognition methodology is proposed based on complementary ensemble empirical mode decomposition method (CEEMD) and a newly developed weighted multiscale entropy method. The need for this methodology is felt due to the inability of the existing multiscale entropy methods in correctly identifying the nature of the signal, particularly in the initial scales. The implication of this drawback is strongly perceived in the experimental analysis in the present work. Vibration signals acquired from test machines/working machines have a substantial presence of noise which severely affects the consistency and reliability of the extracted features. Therefore, for effective implementation and comparing the efficiency of the proposed methods, the original signal is firstly processed with CEEMD. The processing of the signal includes its decomposition into several modes thereafter reconstructing a new signal from the modes chosen through Hurst exponent threshold analysis. From the reconstructed signals, the faulty feature vectors are extracted by the weighted multiscale entropy methods. The capabilities of the proposed method are intensively tested through simulation and experimental analysis. From the analysis of simulated signals, it is demonstrated that the drawback prevailing in the established entropy methods have strongly been mitigated by the newly developed weighted entropy methods. On the experimental front, an impressive improvement is observed by the proposed methods both qualitatively (in indicating the faulty system from the normal system) and quantitatively (in recognizing the fault type and severity by the support vector machine classifier). Apart from the analysis of vibration signals, the versatility of the proposed method is also verified on the acoustic signals acquired under similar experimental conditions. en_US
dc.language.iso en_US en_US
dc.subject Ball bearing en_US
dc.subject Fault diagnosis en_US
dc.subject Refined composite multiscale dispersion en_US
dc.subject entropy en_US
dc.subject Refined composite multiscale fuzzy entropy en_US
dc.subject Refined composite multiscale permutation en_US
dc.subject Complementary ensemble empirical mode en_US
dc.subject decomposition en_US
dc.title Bearing fault detection and recognition methodology based on weighted multiscale entropy approach en_US
dc.type Article en_US


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