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An Improved Feature Extraction Method for Rolling Bearing Fault Diagnosis Based on MEMD and PE

机译:基于MEMD和PE的滚动轴承故障诊断的改进特征提取方法。

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The health condition of rolling bearing can directly influence to the efficiency and lifecycle of rotating machinery, thus monitoring and diagnosing the faults of rolling bearing is of great importance. Unfortunately, vibration signals of rolling bearing are usually overwhelmed by external noise, so the fault frequencies of rolling bearing cannot be readily obtained. In this paper, an improved feature extraction method called IMFs_PE, which combines the multivariate empirical mode decomposition with the permutation entropy, is proposed to extract fault frequencies from the noisy bearing vibration signals. First, the raw bearing vibration signals are filtered by an optimal band-pass filter determined by SK to remove the irrelative noise which is not in the same frequency band of fault frequencies. Then the filtered signals are processed by the IMFs_PE to get rid of the relative noise which is in the same frequency band of fault frequencies. Finally, a frequency domain condition indicator FFR(Fault Frequency Ratio), which measures the magnitude of fault frequencies in frequency domain, is calculated to compare the effectiveness of the feature extraction methods. The feature extraction method proposed in this paper has advantages of removing both irrelative noise and relative noise over other feature extraction methods. The effectiveness of the proposed method is validated by simulated and experimental bearing signals. And the results are shown that the proposed method outperforms other state of the art algorithms with regards to fault feature extraction of rolling bearing.
机译:滚动轴承的健康状况直接影响着旋转机械的效率和使用寿命,因此对滚动轴承的故障进行监测和诊断非常重要。不幸的是,滚动轴承的振动信号通常会被外部噪声淹没,因此滚动轴承的故障频率不易获得。本文提出了一种改进的特征提取方法,称为IMFs_PE,该方法将多元经验模式分解与置换熵结合在一起,从噪声较大的轴承振动信号中提取故障频率。首先,原始轴承振动信号通过由SK确定的最佳带通滤波器进行滤波,以消除与故障频率不在同一频带内的无关噪声。然后,由IMFs_PE对滤波后的信号进行处理,以消除位于故障频率相同频带中的相对噪声。最后,计算频域条件指示器FFR(故障频率比),以测量频域中故障频率的大小,以比较特征提取方法的有效性。与其他特征提取方法相比,本文提出的特征提取方法具有消除无关噪声和相对噪声的优点。仿真和实验方位信号验证了该方法的有效性。结果表明,在滚动轴承故障特征提取方面,该方法优于其他现有算法。

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