Condition Monitoring and Fault Diagnosis Based on Multipoint Optimal Minimum Entropy Deconvolution Adjusted Technique

I. Alqatawneh, Kuosheng Jiang, Zainab Mones, Q. Zeng, F. Gu, A. Ball
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引用次数: 2

Abstract

Planetary gearbox (PG) exhibits unique dynamic behaviour that imposes great challenges in gear fault diagnosis. In particular, multiple and time-varying vibration transmission paths from the gear meshing point to the sensor, usually mounted on the PG housing, cause not only additional spectral components in the signal but also strong noise. Thus, the influence of the transmission paths and multiple vibration sources make fault indications hard to distinguish. This paper presents a new approach for fault diagnosis of PG based on Multipoint Optimal Minimum Entropy Deconvolution Adjusted (MOMEDA). MOMEDA has been demonstrated effective to suppress the path dissertation for linear time-invariant (LTI) system. However, its performance has not been examined with the case of a time-variant system such as PG vibration system. Therefore, an experimental evaluation is carried out to evaluate and optimise MOMEDA analysis for minimising the path influnces and enhancing periodic fault impulses generated by the faulty gear. A set of experimental data acquired from the PG with seeded with common faults on the planet gear and sun gear. The results obtained by the optimised filter length show that the MOMEDA has the expected capability and allows the seeded faults to be diagnostic successfully under different loads, confirming the generality of the approach.
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基于多点最优最小熵反褶积调整技术的状态监测与故障诊断
行星齿轮箱具有独特的动态特性,这给齿轮故障诊断带来了很大的挑战。特别是,从齿轮啮合点到传感器(通常安装在PG外壳上)的多个时变振动传递路径不仅会在信号中产生额外的频谱成分,还会产生强烈的噪声。因此,由于传输路径和多个振动源的影响,使得故障信号难以区分。提出了一种基于多点最优最小熵反褶积调整(MOMEDA)的PG故障诊断新方法。在线性时不变(LTI)系统中,MOMEDA已被证明能有效地抑制路径偏移。然而,对于时变系统,如PG振动系统,其性能尚未得到检验。因此,进行了实验评估,以评估和优化MOMEDA分析,以最小化路径影响并增强故障齿轮产生的周期性故障脉冲。从行星齿轮和太阳齿轮上采集了一组常见故障种子的PG实验数据。优化后的滤波长度结果表明,MOMEDA具有预期的性能,并能在不同负载下成功诊断种子故障,证实了该方法的通用性。
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