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首页> 外文期刊>Journal of difference equations and applications >Difference equation based empirical mode decomposition with application to separation enhancement of multi-fault vibration signals
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Difference equation based empirical mode decomposition with application to separation enhancement of multi-fault vibration signals

机译:基于差分方程的经验模式分解应用于分离多故障振动信号的分离增强

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摘要

Empirical mode decomposition (EMD) has been applied to various applications in signal processing. However, EMD is susceptible to close mode characteristic frequencies and noise, resulting in the problem of mode mixing. The performance of multi-fault detection in gearboxes will be significantly degraded due to mode mixing in the vibration analysis. Hence, this paper presents a new method to address the mode mixing problem in EMD based gearbox multi-fault diagnosis. In this new method, the differential operation is introduced into the decomposition of the intrinsic mode functions. The decomposition ability of close frequency bands can be improved by the differential operation, and hence, the differential EMD can better identify the modes with close characteristic frequencies than its non-differential counterpart. In addition, time synchronous averaging (TSA) is combined with the differential EMD to address the noise issue. Thus, the proposed TAS and differential EMD based method (TDEMD) can solve the mode mixing problem to provide effective multi-fault detection for gearboxes. The TDEMD has been tested experimentally using vibration data collected from a gearbox with concurrent defects on two different gears. Results showed effective detection of gear multiple faults.
机译:经验模式分解(EMD)已应用于信号处理中的各种应用。然而,EMD易于关闭模式特征频率和噪声,从而导致模式混合的问题。由于振动分析中的模式混合,齿轮箱中多故障检测的性能将显着降低。因此,本文提出了一种解决基于EMD变速箱多故障诊断的模式混合问题的新方法。在这种新方法中,将差分操作引入了内部模式功能的分解中。通过差分操作可以提高近频带的分解能力,因此,差分EMD可以更好地识别与其非差分对应的密切特性频率的模式。此外,时间同步平均(TSA)与差分EMD相结合以解决噪声问题。因此,所提出的TAS和差分EMD的方法(TDEMD)可以解决模式混合问题以提供用于齿轮箱的有效的多故障检测。 TDEMD已经使用从齿轮箱收集的振动数据进行了实验测试,并在两个不同的齿轮上具有并发缺陷。结果表明有效地检测齿轮多个故障。

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