Affiliation:
1. School of Power and Energy, Northwestern Polytechnical University, Xi’an 710072, China
Abstract
The precise monitoring of bearings is crucial for the timely detection of issues in rotating mechanical systems. However, the high complexity of the structures makes the paths of vibration signal transmission exceedingly intricate, posing significant challenges in diagnosing aero-engine bearing faults. Therefore, a Rotational-Spectrum-informed Scale-aware Robustness (RSSR) neural network is proposed in this study to address intricate fault characteristics and significant noise interference. The RSSR algorithm amalgamates a scale-aware feature extraction block, a non-activation convolutional network, and an innovative channel attention block, striking a balance between simplicity and efficacy. We provide a comprehensive analysis by comparing traditional CNNs, transformers, and their respective variants. Our strategy not only elevates diagnostic precision but also judiciously moderates the network’s parameter count and computational intensity, mitigating the propensity for overfitting. To assess the efficacy of our proposed network, we performed rigorous testing using two complex, publicly available datasets, with additional artificial noise introductions to simulate challenging operational environments. On the noise-free dataset, our technique increased the accuracy by 5.11% on the aero-engine dataset compared with the current mainstream methods. Even under maximal noise conditions, it enhances the average accuracy by 4.49% compared with other contemporary approaches. The results demonstrate that our approach outperforms other techniques in terms of diagnostic performance and generalization ability.
Funder
National Key Research and Development Program of China
Reference34 articles.
1. Rolling element bearing diagnostics—A tutorial;Randall;Mech. Syst. Signal Process.,2011
2. On the vibration transfer path analysis of aero-engines using bond graph theory;Behdinan;Aerosp. Sci. Technol.,2019
3. Fault detection and diagnosis in propulsion systems—A fault parameter estimation approach;Duyar;J. Guid. Control. Dyn.,1994
4. Observer-based fault detection and diagnosis strategy for industrial processes;Bernardi;J. Frankl. Inst.,2020
5. Basri, H.M., Lias, K., Abidin, W.W.Z., Tay, K., and Zen, H. (2012, January 6–7). Fault detection using dynamic parity space approach. Proceedings of the 2012 IEEE International Power Engineering and Optimization Conference, Melaka, Malaysia.