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Fault diagnosis of wind turbine gearbox based on kernel fuzzy c-means clustering

机译:基于核模糊c均值聚类的风力发电机齿轮箱故障诊断

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Conventional methods for fault diagnosis need a process of supervised training based on historical samples of known fault. However, it is time-consuming and costly to collect all kinds of known fault samples. In practice, it is lack of complete known samples for supervised training. These methods fail to diagnose a new or unknown fault. In this paper, a method based on kernel fuzzy c-means clustering (KFCM) was proposed to diagnose the known and unknown faults for fault diagnosis of wind turbine gearbox. At first, the samples of known samples were classified by KFCM and the class centre of each known fault was acquired. Similarity parameters in kernel space between new data samples and known class centres were employed in this paper. Thereafter similarity parameters were calculated for diagnosing whether the new data samples belong to knows faults. The proposed method was applied in fault diagnosis of wind turbine gearbox. The results show that the proposed method can diagnose both the known faults and unknown faults accurately and effectively.
机译:常规的故障诊断方法需要基于已知故障的历史样本进行监督培训的过程。但是,收集各种已知的故障样本既费时又昂贵。实际上,缺乏用于监督训练的完整已知样本。这些方法无法诊断新故障或未知故障。提出了一种基于核模糊c均值聚类(KFCM)的方法,用于诊断已知和未知故障,以进行风机齿轮箱的故障诊断。首先,通过KFCM对已知样本的样本进行分类,并获取每个已知断层的分类中心。本文采用了新数据样本与已知类中心之间的核空间相似性参数。此后,计算相似性参数以诊断新数据样本是否属于已知故障。该方法被应用于风力发电机齿轮箱的故障诊断。结果表明,该方法能够准确,有效地诊断已知故障和未知故障。

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