Engineering Research Express, Год журнала: 2024, Номер 6(4), С. 045536 - 045536
Опубликована: Окт. 25, 2024
Abstract Mechanical fault diagnosis is of great significance to industrial automation, and extracting vibration signals one the important tasks in mechanical health monitoring diagnosis. However, due complex working environment rolling bearings, a large amount noise makes it difficult extract signals. Denoising signal bearings can remove interference noise, simplify early identification features, thus improve diagnostic accuracy maintenance efficiency. This paper proposes bearing denoising algorithm, which constructs new feature extraction function. method first decomposes noisy into Intrinsic Mode Functions (IMFs) by Computing Expressive Empirical Decomposition with Adaptive Noise (ICEEMDAN). Secondly, adaptive information entropy threshold function constructed IMFs from it. Then, IMF denoised wavelet Finally, noise-free are reconstructed reconstruct signal. To verify actual performance comparative experiments were conducted on self-collected dataset public dataset, results show that this improves continuity reconstruction various types more effectively accurately, thereby improving detection 2%–9%.
Язык: Английский