• CN:11-2187/TH
  • ISSN:0577-6686

›› 2006, Vol. 42 ›› Issue (12): 116-121.

• 论文 • 上一篇    下一篇

混合聚类新算法及其在故障诊断中的应用

雷亚国;何正嘉;訾艳阳;胡桥;丁锋   

  1. 西安交通大学机械工程学院;西安交通大学机械制造系统工程国家重点实验室
  • 发布日期:2006-12-15

NOVEL HYBRID CLUSTERING ALGORITHM AND ITS APPLICATION TO FAULT DIAGNOSIS

LEI Yaguo;HE Zhengjia;ZI Yanyang;HU Qiao;DING Feng   

  1. School of Mechanical Engineering, Xi’an Jiaotong University State Key Laboratory for Manufacturing System, Xi’an Jiaotong University
  • Published:2006-12-15

摘要: 针对模糊C-均值(FCM)聚类算法假设各维特征和每个样本对聚类贡献相同,同时需要预先设定聚类数的不足,利用3层前馈神经网络、点密度函数算法和聚类有效性指标对其进行改进,提出一种新的混合聚类算法。该算法考虑到不同特征和不同样本对聚类结果有不同程度的影响,并根据聚类有效性指标的变化自适应确定聚类数来实现聚类。利用基于梯度下降的3层前馈神经网络通过无监督训练来自适应学习特征权值,使用基于点密度函数的算法获取样本权值,给不同特征和不同样本赋予权重,突出敏感特征和典型样本的主导作用,抑制其他特征和样本对聚类的干扰,以提高聚类性能。研究结果表明,对于国际标准测试数据和某机车轴承的早期故障诊断,该混合聚类算法不但能自动确定聚类数,而且聚类的准确性明显比FCM高。

关键词: 故障诊断, 混合聚类, 聚类有效性指标, 特征权值, 样本权值

Abstract: Aiming at the fuzzy C-means (FCM) clustering algo- rithm supposing the uniform influence to clustering by different features and samples, and setting the cluster number beforehand, a novel hybrid clustering algorithm based on 3 layer forward neural networks(FNN), an algorithm of distribution density function of data point and the cluster validity index is proposed. Feature weighting and sample weighting are considered in this hybrid clustering algorithm and the cluster number is automati-cally set by using the cluster validity index to finish clustering. Feature weights are adaptively learned via FNN with the gradi-ent descent technique under the unsupervised mode of training, and sample weights are computed through the algorithm of distribution density function of data point. Then, the feature weights and the sample weights are assigned to the correspond-ing features and samples to emphasize the leading effect of sensitive features and typical samples, and weaken the interfer-ence of other features and samples. The proposed algorithm is employed to analyze the benchmark data and the practical data from locomotive bearings, and the results show that the algo-rithm enables to automatically and correctly set cluster number and its clustering performance is better than that of the FCM.

Key words: Hybrid clustering, Cluster validity index, Fault diagnosis, Feature weight, Sample weight

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