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A method to integrate KSSOMFA and WKNN together on faults identification of rotating machinery

机译:一种将KSSOMFA和WKNN集成在一起的旋转机械故障识别方法

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Aiming at the problems of the dimension of fault feature data sets of the rotating machinery are too high and labeled information of the sample is insufficient, which lead to fault recognition too difficult. A kind of combinational method of fault identification of rotating machinery based on Kernel Semi-supervised Orthogonal Marginal Fisher Analysis (Kernel Semi - Supervised Orthogonal Marginal Fisher Analysis, KSSOMFA) and Weighted K-Nearest Neighbor (Weighted K-Nearest Neighbor, WKNN) classifier is proposed. Firstly, this method needs to establish multi-domain multi-channel high-dimensional fault feature dataset which can comprehensively reflect the characteristics of different fault information. Then, KSSOMFA algorithm is used to reduce the dimension of the dataset, which extracted the low dimensional essential and good discriminant fault feature subset. After the dimension reduction, making the distance between the same kinds of samples was closer and the distance between heterogeneous was pushed away. At the same time, making the output of based vectors are orthogonal to each other. Finally, the extracted feature set of the lower dimensional nature was fed into WKNN classifier to recognize fault pattern. The advantage of this method is that it can combine the excellent properties of dimension reduction of the KSSOMFA algorithm and high classification accuracy and stable classification decision of the WKNN algorithm, which can improve the accuracy of fault identification. The method was applied in fault feature set of a double span rotor system, and the conditions show that the data driven fault identification technology was able to improve the accuracy of fault identification through data mining, which provides a certain of theoretical reference for fault identification.
机译:针对旋转机械故障特征数据集规模过大,样本标注信息不足等问题,导致故障识别难度较大。一种基于核半监督正交边际Fisher分析(KSSOMFA)和加权K最近邻(加权K最近邻,WKNN)分类器的旋转机械故障识别的组合方法。建议的。首先,该方法需要建立能够全面反映不同故障信息特征的多域多通道高维故障特征数据集。然后,采用KSSOMFA算法对数据集进行降维处理,提取出低维的基本和良好的判别性故障特征子集。降维后,使同类样本之间的距离更近,异类之间的距离被推开。同时,使基础向量的输出彼此正交。最后,将提取的低维特征集输入到WKNN分类器中以识别故障模式。该方法的优点是可以将KSSOMFA算法的降维性能和WKNN算法的高分类精度以及稳定的分类决策结合起来,提高故障识别的准确性。将该方法应用于双跨转子系统的故障特征集,条件表明,数据驱动的故障识别技术能够通过数据挖掘提高故障识别的准确性,为故障识别提供一定的理论参考。

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