Kiakojouri Amirmasoud, Lu Zudi, Mirring Patrick, Powrie Honor, Wang Ling
National Centre for Advanced Tribology at Southampton (nCATS), School of Engineering, University of Southampton, Southampton SO17 1BJ, UK.
Southampton Statistical Sciences Research Institute (S3RI), School of Mathematical Sciences, University of Southampton, Southampton SO17 1BJ, UK.
Sensors (Basel). 2023 Nov 8;23(22):9048. doi: 10.3390/s23229048.
Rolling element bearings (REBs) are an essential part of rotating machinery. A localised defect in a REB typically results in periodic impulses in vibration signals at bearing characteristic frequencies (BCFs), and these are widely used for bearing fault detection and diagnosis. One of the most powerful methods for BCF detection in noisy signals is envelope analysis. However, the selection of an effective band-pass filtering region presents significant challenges in moving towards automated bearing fault diagnosis due to the variable nature of the resonant frequencies present in bearing systems and rotating machinery. Cepstrum Pre-Whitening (CPW) is a technique that can effectively eliminate discrete frequency components in the signal whilst detecting the impulsive features related to the bearing defect(s). Nevertheless, CPW is ineffective for detecting incipient bearing defects with weak signatures. In this study, a novel hybrid method based on an improved CPW (ICPW) and high-pass filtering (ICPW-HPF) is developed that shows improved detection of BCFs under a wide range of conditions when compared with existing BCF detection methods, such as Fast Kurtogram (FK). Combined with machine learning techniques, this novel hybrid method provides the capability for automated bearing defect detection and diagnosis without the need for manual selection of the resonant frequencies. The results from this novel hybrid method are compared with a number of established BCF detection methods, including Fast Kurtogram (FK), on vibration signals collected from the project I2BS (An EU Clean Sky 2 project 'Integrated Intelligent Bearing Systems' collaboration between Schaeffler Technologies and the University of Southampton. Safran Aero Engines was the topic manager for this project) and those from three databases available in the public domain-Case Western Reserve University (CWRU), Intelligent Maintenance Systems (IMS) datasets, and Safran jet engine data-all of which have been widely used in studies of this kind. By calculating the Signal-to-Noise Ratio (SNR) of each case, the new method is shown to be effective for a much lower SNR (with an average of 30.21) compared with that achieved using the FK method (average of 14.4) and thus is much more effective in detecting incipient bearing faults. The results also show that it is effective in detecting a combination of several bearing faults that occur simultaneously under a wide range of bearing configurations and test conditions and without the requirement of further human intervention such as extra screening or manual selection of filters.
滚动元件轴承(REB)是旋转机械的重要组成部分。REB中的局部缺陷通常会在轴承特征频率(BCF)处的振动信号中产生周期性脉冲,这些脉冲被广泛用于轴承故障检测和诊断。包络分析是在噪声信号中检测BCF的最有效方法之一。然而,由于轴承系统和旋转机械中共振频率的可变性质,在迈向自动化轴承故障诊断的过程中,选择有效的带通滤波区域面临重大挑战。倒谱预白化(CPW)是一种能够有效消除信号中的离散频率成分,同时检测与轴承缺陷相关的脉冲特征的技术。然而,CPW对于检测特征微弱的早期轴承缺陷无效。在本研究中,开发了一种基于改进的CPW(ICPW)和高通滤波(ICPW-HPF)的新型混合方法,与现有的BCF检测方法(如快速峭度图(FK))相比,该方法在广泛的条件下对BCF的检测效果有所提高。结合机器学习技术,这种新型混合方法能够实现轴承缺陷的自动检测和诊断,而无需人工选择共振频率。将这种新型混合方法的结果与多种已确立的BCF检测方法进行比较,包括快速峭度图(FK),这些比较基于从项目I2BS(欧盟清洁天空2项目“集成智能轴承系统”,由舍弗勒技术公司与南安普顿大学合作开展。赛峰航空发动机公司是该项目的主题经理)收集的振动信号,以及公共领域中三个可用数据库——凯斯西储大学(CWRU)、智能维护系统(IMS)数据集和赛峰喷气发动机数据——中的信号,所有这些数据集在这类研究中都被广泛使用。通过计算每种情况的信噪比(SNR),结果表明,与使用FK方法(平均为14.4)相比,新方法在更低的信噪比(平均为30.21)下也有效,因此在检测早期轴承故障方面更有效。结果还表明,该方法能够在广泛的轴承配置和测试条件下有效检测同时出现的多种轴承故障组合,且无需进一步的人工干预,如额外筛选或手动选择滤波器。