A Method for Performance Degradation Assessment of Wind Turbine Bearings Based on Hidden Markov Model and Fuzzy C-means Model

Jianmin Zhou, Chenchen Zhang, Faling Wang
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引用次数: 1

Abstract

Bearings used in the wind turbine generators (WTGs) will subject to different degrees of damage during operation, including all kinds of vibration and shock. In this paper, a vibration-based performance degradation assessment method for high-speed shaft wind turbine bearings is proposed using fusion of Hidden Markov Model (HMM) and Fuzzy C-means Model (FCM). The wavelet packet decomposition is used to extract the energy of the wavelet packet nodes of the whole life cycle vibration signal. The autoregressive model (AR) extracts the coefficients and residual of the wavelet packet nodes, and takes the two features as the combined features. The FCM is established using the normal and failure samples and the HMM is established using the normal samples. The two degradation indicators which was obtained by imputing the under test data to FCM and HMM model are input to the FCM model as the input characteristic. Then the performance degradation curve is obtained. Finally, Mahalanobis distance (MD) and FCM models are combined to compare and illustrate. The method combines the advantages of spatial statistical distance model and probabilistic statistical model. Then the WTG bearing’s experimental data are used and the experimental results of AR model combined with FCM model are compared to verify the conclusions of this paper. The experimental analysis shows that the method is consistent with the performance degradation trend of rolling bearings and has certain adaptability.
基于隐马尔可夫模型和模糊c均值模型的风电轴承性能退化评估方法
风力发电机组(wtg)中使用的轴承在运行过程中会受到不同程度的损坏,包括各种振动和冲击。本文提出了一种基于隐马尔可夫模型(HMM)和模糊c均值模型(FCM)融合的高速轴风力机轴承振动性能退化评估方法。利用小波包分解提取振动信号全生命周期小波包节点的能量。自回归模型(AR)提取小波包节点的系数和残差,并将两者作为组合特征。使用正常样本和失效样本建立FCM,使用正常样本建立HMM。将待测数据分别输入FCM和HMM模型得到的两个退化指标作为输入特征输入FCM模型。得到了性能退化曲线。最后,结合马氏距离(MD)模型和FCM模型进行比较和说明。该方法结合了空间统计距离模型和概率统计模型的优点。然后利用WTG轴承的实验数据,将AR模型与FCM模型相结合的实验结果进行对比,验证本文的结论。实验分析表明,该方法符合滚动轴承性能退化趋势,具有一定的适应性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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