Naturally-induced Early Aviation Bearing Fault Test and Early Bearing Fault Detection

Fan Feilong, Cao Ming, L. Qian
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引用次数: 3

Abstract

While the early detection of roller bearing faults has been extensively studied, the research in this area still suffers from the following shortcomings: first, the early bearing faults are artificially implanted, hence not always revealing the true fault mode, morphology, and signal characteristics; second, since the noise reduction & early bearing fault characteristic enhancing algorithms have mainly been developed and validated using data collected under artificially implanted faults, the validity of those diagnosis algorithms is questionable. This paper tries to address those 2 issues. Bearing testing started with brand new and perfectly healthy aero-engine bearings, under multiple times of the typical aero engine load spectrum cycle. Continuously repeating this load spectrum cycle during the test naturally induces early bearing defects, providing the much needed “true failure” test data. The effectiveness of 2 typical modern fault-signal-enhancing algorithms: Maximum Correlated Kurtosis Deconvolution (MCKD) and Fast Spectral Kurtosis (FSK) method is then assessed for early aviation bearing fault, using the artificial implanted fault data and the “true failure” test data collected in this study. Finally, the optimal diagnosis method is proposed. The analysis demonstrates that the aviation bearing early fault progress can be reflected by the change trend of averaging magnitude index at bearing characteristic frequencies.
自然诱发的航空轴承早期故障试验与轴承早期故障检测
虽然滚动轴承故障的早期检测已经得到了广泛的研究,但该领域的研究仍然存在以下不足:一是早期轴承故障是人为植入的,因此并不总是能揭示真实的故障模式、形态和信号特征;其次,由于降噪和早期轴承故障特征增强算法主要是使用人工植入故障下收集的数据开发和验证的,因此这些诊断算法的有效性值得怀疑。本文试图解决这两个问题。轴承测试从全新的、完全健康的航空发动机轴承开始,在多次典型的航空发动机负载谱循环下进行。在测试过程中不断重复这种载荷谱循环自然会导致早期轴承缺陷,从而提供急需的“真实故障”测试数据。利用人工植入的故障数据和本研究收集的“真故障”测试数据,评估了2种典型的现代故障信号增强算法:最大相关峰度反褶积(MCKD)和快速谱峰度(FSK)方法对航空轴承早期故障的有效性。最后,提出了最优诊断方法。分析表明,航空轴承的早期故障进展可以通过轴承特征频率处平均震级指数的变化趋势来反映。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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