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A Comparative Study of the Effectiveness of Adaptive Filter Algorithms, Spectral Kurtosis and Linear Prediction in Detection of a Naturally Degraded Bearing in a Gearbox

机译:自适应滤波算法,谱峰度和线性预测在检测变速箱中自然退化轴承中的有效性的比较研究

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摘要

Diagnosing bearing faults at the earliest stages is critical in avoiding future catastrophic failures. Many techniques have been developed and applied in diagnosing bearings faults; however, these traditional diagnostic techniques are not always successful when the bearing fault occurs in gearboxes where the vibration response is complex; under such circumstances, it may be necessary to separate the bearing signal from the complex signal. In this paper, an adaptive filter has been applied for the purpose of bearing signal separation. Four algorithms were compared to assess their effectiveness in diagnosing a bearing defect in a gearbox, least mean square (LMS), linear prediction, spectral kurtosis and fast block LMS. These algorithms were applied to decompose the measured vibration signal into deterministic and random parts with the latter containing the bearing signal. These techniques were applied to identify a bearing fault in a gearbox employed for an aircraft control system for which endurance tests were performed. The results show that the LMS algorithm is capable of detecting the bearing fault earlier in comparison with the other algorithms.
机译:尽早诊断轴承故障对于避免将来发生灾难性故障至关重要。已经开发了许多技术并将其应用于诊断轴承故障。但是,当振动响应复杂的变速箱出现轴承故障时,这些传统的诊断技术并不总是成功的。在这种情况下,可能有必要将方位信号与复信号分开。在本文中,自适应滤波器已被用于轴承信号分离的目的。比较了四种算法,以评估它们在诊断齿轮箱轴承缺陷,最小均方(LMS),线性预测,光谱峰度和快速阻滞LMS方面的有效性。应用这些算法将测得的振动信号分解为确定性部分和随机部分,后者包含方位信号。这些技术被应用于识别用于飞机控制系统的齿轮箱中的轴承故障,对其进行了耐久性测试。结果表明,与其他算法相比,LMS算法能够更早地检测轴承故障。

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