Recursive Variational Mode Transform for Weak Fault Feature Recognition in Rotor-Bearing Systems
22 Pages Posted: 5 Nov 2024
Abstract
Traditional variational methods face difficulties in extracting fault information from noisy signals. They often struggle to balance minimizing residual energy and suppressing mode aliasing, leading to signal loss and failure to extract the desired mode. To address this, the Recursive Variational Mode Transform (RVMT) is proposed for extracting early weak fault features. The core ideas include: 1) minimizing residual energy based on the narrowband hypothesis to solve the variational problem, 2) dynamically updating the parameters of multi-component signals, and 3) using a spectrum overlap algorithm based on the Hilbert transform for accurate mode decomposition. First, the concept of residual energy is introduced to solve the variational problem and determine the direction of decomposition. Then, adaptive dynamic parameter updating and the spectrum overlap algorithm based on the Hilbert transform are used to reverse correct mode aliasing components, improving signal resolution accuracy. Finally, by reconstructing the fault information, redundant modes are eliminated. Compared with FMD, EFD, and VME, RVMT demonstrates greater effectiveness and robustness in extracting weak fault features under noise interference, as shown by simulations and experimental data of bearing faults. Additionally, quantitative SNR evaluation shows an average increase of 62.09\% for the outer ring and 183.56\% for the inner ring.
Keywords: Recursive variational mode transform, Adaptive signal decomposition, Fault diagnosis, Defective bearing, Kinetic analysis
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