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Gear tooth root fatigue test monitoring with continuous acoustic emission: Advanced signal processing techniques for detection of incipient failure

机译:带有连续声发射的齿轮齿根疲劳测试监控:用于检测早期故障的先进信号处理技术

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The phenomenon of fatigue in gears at the tooth root can be a cause of catastrophic failure if not detected in time. Where traditional low-frequency vibration may help in detecting a well-developed crack or a completely failed tooth, a system for early detection of the nucleation and initial propagation of a fatigue crack can be of great use in condition monitoring. Acoustic emission is a potentially suitable technique, as it is sensitive to the higher frequencies generated by crack propagation and is not affected by low-frequency noise. In this article, a static gear pair is tested where a crack was initiated at a tooth root. Continuous acoustic emission was periodically recorded throughout the test. Data were processed in multiple ways to support the early detection of crack initiation. Initially, traditional feature–based acoustic emission was employed. This showed qualitative results indicating fracture initiation around 8000 cycles. A rolling cross-correlation was then employed to compare two given system states, showing a sensitivity to large changes towards the final phases of crack propagation. A banded fast Fourier transform approach showed that the 110- to 120-kHz band was sensitive to the observed crack initiation at 8000 cycles, and to the later larger propagation events at 22,000 cycles. Two advanced data processing techniques were then used to further support these observations. First, a technique based on Chebyshev polynomial decomposition was used to reduce each wavestream data to a vector of 25 descriptors; these were used to track the system deviation from a baseline state and confirmed the previously observed deviations with a higher sensitivity. Further confirmation came from the analysis of wavestream entropy content, providing support from multiple data analysis techniques on the feasibility of system state tracking using continuous acoustic emission.
机译:如果不及时发现,齿根齿轮的疲劳现象可能会导致灾难性故障。在传统的低频振动可能有助于检测裂纹发展良好或牙齿完全失效的情况下,用于早期检测疲劳裂纹的形核和初始传播的系统可以在状态监测中大量使用。声发射是一种潜在的合适技术,因为它对裂纹传播所产生的更高频率敏感,并且不受低频噪声的影响。在本文中,对静态齿轮副进行了测试,该齿轮副的齿根处产生了裂纹。在整个测试过程中定期记录连续的声发射。以多种方式处理数据以支持及早发现裂纹。最初,使用基于传统特征的声发射。这显示出定性结果,表明在大约8000次循环后开始了裂缝。然后采用滚动互相关来比较两个给定的系统状态,显示出对裂纹扩展的最终阶段的大变化敏感。一种带状快速傅里叶变换方法表明,在8000个周期内观察到的110至120kHz频带对裂纹萌生敏感,而在22,000个周期内对后来的较大传播事件敏感。然后,使用了两种先进的数据处理技术来进一步支持这些观察。首先,基于Chebyshev多项式分解的技术被用于将每个波流数据缩减为25个描述符的向量。这些用于跟踪系统与基线状态的偏差,并以更高的灵敏度确认了先前观察到的偏差。对波流熵含量的分析进一步证实了这一点,并为使用连续声发射进行系统状态跟踪的多种数据分析技术提供了支持。

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