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Detection and Diagnosis of Centrifugal Pump Bearing Faults Based on the Envelope Analysis of Airborne Sound Signals

机译:基于空中声音信号包络分析的离心泵轴承故障的检测与诊断

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As key components in centrifugal pumps rolling bearings work to reduce friction and maintain the impeller rotor in correct alignment with stationary parts under the action of radial and transverse loads. Effective fault detection of bearings allows appropriate preventive action to be taken timely, where required, and enhances performance operation. To develop an easy implementation and yet effective method for detecting and diagnosing pump bearing faults, the focus of this study is on utilising airborne sound signals which can be acquired more remotely and at lower cost, compared with vibration based methods which needs high numbers of sensors for monitoring a pump system. However, acoustic signals are much noisy, and it is difficult to detect machine faults using conventional signal processing methods such as time domain features, where the results have a limited and weak fault signatures. Thus, a more advanced signal processing technique: the envelope spectrum is adopted to establish accurate diagnostic fault patterns. The evaluating results show that the proposed method is effective and accurate to enhance the amplitudes at bearing characteristic frequencies, allowing diagnostic information to be extracted reliably, which also makes the Root Mean Square (RMS) of the envelope signals give a full separation between faulty and healthy cases over a wide range of pump operation, outperforming the vibration signals.
机译:随着离心泵中的关键部件滚动轴承工作以减少摩擦力并将叶轮转子与径向和横向载荷的作用下的固定部件保持正确。轴承的有效故障检测允许及时采取适当的预防措施,并在必要的情况下,增强性能操作。为了开发一种易于实现和有效的检测和诊断泵轴承故障的方法,本研究的重点是利用空气传输信号,该信号可以更远程且以较低的成本更低,而基于振动的方法,这需要高量的传感器。用于监控泵系统。然而,声学信号很大,并且难以使用传统的信号处理方法检测机器故障,例如时域特征,其中结果具有有限且弱故障签名。因此,采用更高级的信号处理技术:采用信封谱建立精确的诊断故障模式。评估结果表明,该方法是有效且准确地提高轴承特性频率的幅度,允许可靠地提取诊断信息,这也使包络信号的根均线(RMS)在故障之间提供完全分离健康案例在各种泵操作中,优于振动信号。

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