Abstract
AbstractThe failure of rolling bearings affects the function and precision of rotating machinery significantly, which has drawn lots of attention in this field. Dealing with the failure of rolling bearings, fault feature extraction is the first and most important problem. In this work, we convert the bearing fault signal into stochastic resonance dynamics equivalently. And, adaptive stochastic resonance is adopted to extract the fault signal feature. In addition, for industrial application of fault signal processing with large amplitude and noise intensity greater than 1, normalized scale transformation is introduced into adaptive stochastic resonance and then solved by fifth-order Runge–Kutta algorithm. Then, to further optimize the solving precision of stochastic resonance model, the scaling coefficient and step size of Runge–Kutta algorithm are chosen with the help of Grey Wolf Optimizer (GWO). Thus, we can obtain a fast convergence speed, high calculation accuracy and effective improvement of signal-to-noise ratio fault feature extraction method for rolling bearing fault signal processing. Finally, a comparation simulation was carried out to demonstrate the efficiency of the proposed method. Compared with Cuckoo Search Optimizer-based stochastic resonance signal processing method, the proposed method achieved a higher signal-to-noise ratio (SNR) to benefit the fault feature extraction. In summary, this work gives out a more practical and effective solution for rolling bearing fault feature extraction in rotating machinery fault diagnosis field.
Publisher
Springer Science and Business Media LLC
Subject
General Earth and Planetary Sciences,General Physics and Astronomy,General Engineering,General Environmental Science,General Materials Science,General Chemical Engineering
Reference24 articles.
1. Hao B, Xiaolin W, Zhiquan D (2020) B1earing fault detection for brushless DC motors based on stator current. J Nanjing Univ Aeronaut Astronaut 52(2):224–231
2. Chunsheng H, Guoli L, Yong Z, et al (2022) Summary of fault diagnosis methods for rolling bearings under variable working conditions. Comput Eng Appl
3. Qinggen S, Shuiying Z (2012) Equipment fault diagnosis. In: Introduction, section 1. Beijing, pp 3–20.
4. Lingli C, Xin W, Huaqing W et al (2019) Feature extraction of bearing fault based on improved switching Kalman filter. J Mech Eng 55(7):44–51. https://doi.org/10.3901/JME.2019.07.044
5. Hua L, Liu TW, Xing et al (2022) Application of EEMD and optimized frequency band entropy to bearing fault feature extraction. J Vib Eng 33(2):414–423
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