首页> 外文会议>International Congress on Sound and Vibration >FAULT DETECTION IN ROLLING ELEMENT BEARINGS USING ADAPTIVE NOISE CANCELLATION AND VARIATIONAL MODE DECOMPOSITION
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FAULT DETECTION IN ROLLING ELEMENT BEARINGS USING ADAPTIVE NOISE CANCELLATION AND VARIATIONAL MODE DECOMPOSITION

机译:使用自适应噪声消除和变分模式分解在滚动元件轴承中的故障检测

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Rolling element bearing defects are one of the dominant causes of mechanical system failure. Vibration-based diagnostic techniques are commonly used for detecting faulty conditions in rolling element bearings. However, fault characteristics can be easily affected by the normal vibration of other system components and even submerged in heavy background noise. To solve this issue, a method combining variational mode decomposition (VMD) and adaptive noise cancellation (ANC) using a normalized least mean square (NLMS) algorithm is presented in this paper. The ANC is applied to attenuate the noise within the complex vibration signal as a pre-processing step. After that, the denoised signal is decomposed into several different components via VMD. Finally, fault features are extracted from the decomposed signal components by envelope spectrum analysis. The simulation results show that the proposed method can precisely identify fault features and is much better than directly using original VMD without filtering under heavy noise conditions. The effectiveness of the proposed method is also verified by analysis of a practical bearing application.
机译:滚动元件轴承缺陷的机械系统的故障的主导原因之一。基于振动的诊断技术通常用于检测滚动元件轴承故障情况。然而,故障的特性可容易地通过其它系统组件的正常振动的影响,即使是在重背景噪声淹没。为了解决这个问题,使用归一化最小均方(NLMS)算法相结合变模式分解(VMD)和自适应噪声消除(ANC)的方法示于本文中。所述ANC被施加到作为预处理步骤复杂振动信号内衰减的噪声。在此之后,降噪信号被分解成经由VMD几个不同的组件。最后,故障特征从由包络频谱分析分解的信号成分提取。仿真结果表明,该方法能够精确地识别故障特征,并远远好于直接使用原来的VMD不强噪声条件下过滤。所提出的方法的有效性也通过实际轴承应用的分析证实。

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