Research on fault diagnosis method of turbocharger rotor based on Hu-SVM-RFE

IF 1.5 4区 工程技术 Q3 MECHANICS Journal of Mechanics Pub Date : 2023-01-01 DOI:10.1093/jom/ufad028
Chunyu Zhang, Xinyang Qiu, Haiyu Qian, Yun Liu, Junchao Zhu
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Abstract

Abstract Several parameters need to be monitored for turbocharger rotor faults and the overlap between different fault parameters as well as the redundancy of data, which leads to increased calculation time and reduced classification accuracy. To improve the recognition rate of turbocharger rotor faults, a recursive elimination method based on the support vector machine-recursive feature elimination (SVM-RFE) combined with improved Hu invariant moments is developed for the axial orbit feature extraction of turbocharger rotor with rotor fault. Firstly, improved Hu-invariant moments are extracted for different rotor fault axis orbits, and then the feature ranking and selection are performed by the SVM-RFE method to filter out the feature combinations with higher classification recognition rates. Then, the feature matrix of the Hu-SVM-RFE algorithm screening combination was identified for classification using each of the three diagnostic algorithms. The results show that the optimal feature subset obtained by the Hu-SVM-RFE method can ensure the richness of the fault information of the turbocharger rotor with small number of features. And, a high classification rate can be obtained with low time consumption in combination with the probabilistic neural network (PNN) algorithm. Therefore, Hu-SVM-RFE feature screening method combined with PNN fault diagnosis technology has high accuracy and efficiency, which is of great significance for online fault identification of the supercharger rotor.
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基于Hu-SVM-RFE的涡轮增压器转子故障诊断方法研究
涡轮增压器转子故障需要监测多个参数,不同故障参数之间存在重叠和数据冗余,导致计算时间增加,分类精度降低。为了提高涡轮增压器转子故障的识别率,提出了一种基于支持向量机递归特征消去(SVM-RFE)结合改进Hu不变矩的涡轮增压器转子轴向轨道特征提取方法。首先对不同的转子故障轴轨道提取改进的hu不变矩,然后采用SVM-RFE方法对特征进行排序和选择,过滤出分类识别率较高的特征组合;然后,分别使用三种诊断算法识别Hu-SVM-RFE算法筛选组合的特征矩阵进行分类。结果表明,采用Hu-SVM-RFE方法得到的最优特征子集能够以较少的特征保证涡轮增压器转子故障信息的丰富性。结合概率神经网络(PNN)算法,可以在较短的时间内获得较高的分类率。因此,将Hu-SVM-RFE特征筛选方法与PNN故障诊断技术相结合,具有较高的准确率和效率,对增压器转子的在线故障识别具有重要意义。
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来源期刊
Journal of Mechanics
Journal of Mechanics 物理-力学
CiteScore
3.20
自引率
11.80%
发文量
20
审稿时长
6 months
期刊介绍: The objective of the Journal of Mechanics is to provide an international forum to foster exchange of ideas among mechanics communities in different parts of world. The Journal of Mechanics publishes original research in all fields of theoretical and applied mechanics. The Journal especially welcomes papers that are related to recent technological advances. The contributions, which may be analytical, experimental or numerical, should be of significance to the progress of mechanics. Papers which are merely illustrations of established principles and procedures will generally not be accepted. Reports that are of technical interest are published as short articles. Review articles are published only by invitation.
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