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首页> 外文期刊>Journal of intelligent & fuzzy systems: Applications in Engineering and Technology >Fault diagnosis based on orthogonal semi-supervised LLTSA for feature extraction and Transductive SVM for fault identification
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Fault diagnosis based on orthogonal semi-supervised LLTSA for feature extraction and Transductive SVM for fault identification

机译:基于正交半监控LLTSA的故障诊断特征提取和转导SVM故障识别

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摘要

To overcome the low diagnosis accuracy caused by the scarcity of labeled training samples, a fault diagnosis method was proposed using orthogonal Semi-supervised linear local tangent space alignment (OSSLLTSA) for feature extraction and transductive support vector machine (TSVM) for fault identification. Through extracting the statistical features were extracted from the sub-bands of vibration signals decomposed by wavelet packet decomposition (WPD), the high-dimensional feature set could be obtained. Following that, the improved kernel space distance evaluation method was applied to remove non-sensitive fault features. Then, a semi-supervised manifold learning method (OSSLLTSA) was proposed to reduce the dimensionality of the fault feature set, and thus to extract fused fault features with high clustering performance. OSSLLTSA overcomes the over-learning of supervised manifold learning and projection aimlessness of unsupervised manifold learning. Finally, the low-dimensional feature set after dimension reduction was inputted into TSVM for fault diagnosis. TSVM was able to completely utilize the fault information contained in unlabelled samples to modify the model, and the trained fault diagnosis model has better generalization ability. The effectiveness of the proposed method was verified based on the case of gearbox fault. Experimental results showed that the proposed method is able to achieve very high fault diagnosis accuracy even when labeled samples were insufficient.
机译:为了克服标记训练样本的稀缺引起的低诊断精度,使用正交半监督线性局部切线(OSSLTSA)来提出故障诊断方法,用于特征提取和转换支撑矢量机(TSVM)进行故障识别。通过提取从通过小波分组分解(WPD)分解的振动信号的子带中提取统计特征,可以获得高维特征集。在此之后,应用了改进的内核空间距离评估方法来删除非敏感故障特征。然后,提出了一种半监督歧管学习方法(OSSLRSA)以降低故障特征集的维度,从而提取具有高群集性能的熔断故障特征。 OSSLLTSA克服了监督多方学习的过度学习和无监督的流形学习的预测。最后,在减少尺寸减少后设定的低维特征被输入到TSVM以进行故障诊断。 TSVM能够完全利用未标记的样本中包含的故障信息来修改模型,并且训练有素的故障诊断模型具有更好的泛化能力。基于齿轮箱故障的情况验证了所提出的方法的有效性。实验结果表明,即使标记样品不足,所提出的方法也能够实现非常高的故障诊断精度。

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