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兵工学报 ›› 2016, Vol. 37 ›› Issue (6): 979-987.doi: 10.3969/j.issn.1000-1093.2016.06.003

• 论文 • 上一篇    下一篇

S变换相对谱熵及其在液压泵退化状态识别中的应用

王余奎1,2, 李洪儒2, 黄之杰1, 赵徐成1   

  1. (1.空军勤务学院, 江苏 徐州 221000; 2.军械工程学院, 河北 石家庄 050003)
  • 收稿日期:2015-07-07 修回日期:2015-07-07 上线日期:2016-08-06
  • 作者简介:王余奎(1987—),男,讲师,博士
  • 基金资助:
    国家自然科学基金项目(51275524)

S Transform Relative Spectrum Entropy and Its Application in Degradation State Identification of Hydraulic Pump

WANG Yu-kui1,2, LI Hong-ru1, HUANG Zhi-jie1, ZHAO Xu-cheng1   

  1. (1.Air Force Logistics College, Xuzhou 221000, Jiangsu, China;2.Ordnance Engineering College, Shijiazhuang 050003, Hebei, China)
  • Received:2015-07-07 Revised:2015-07-07 Online:2016-08-06

摘要: 为更好地表征液压泵的退化状态,对液压泵退化特征提取方法和退化状态识别方法进行研究。基于S变换分析非平稳信号的优异能力以及相对熵较好表征振动信号概率分布差异的特性,提出S变换相对谱熵的液压泵退化特征提取方法,对液压泵仿真信号分析结果验证了所提出的S变换相对能谱熵和S变换相对奇异谱熵作为退化特征的有效性和可行性。将两个特征指标组成退化特征向量,对滑靴磨损和松靴故障模式下不同故障程度的液压泵振动信号进行分析,进一步验证所提出的特征指标作为液压泵退化特征的有效性。将加权灰关联法用于液压泵退化状态识别,建立了液压泵的标准退化模式矩阵,对两种故障模式下液压泵待检测样本的退化特征向量和标准模式矩阵做加权灰关联分析,根据灰关联度的大小判定液压泵的退化状态,结果验证了所提出方法的良好性能。

关键词: 兵器科学与技术, 液压泵, 退化状态识别, S变换, 相对谱熵, 加权灰关联分析

Abstract: In order to characterize the degradation state of hydraulic pump, the degradation feature extraction method and degradation state identification method are studied. The degradation feature extraction method for pump which is named S transform relative spectrum entropy (STRSE) is proposed based on S transform (ST) for analyzing non-stationary vibration signal and relative entropy (RE)for characterizing the probability distribution difference among different signals. The analysis results of simulation signal demonstrate the availability and rationality of the proposed ST relative energy spectrum entropy (STRESE) and ST relative singular spectrum entropy (STRSSE) used as degradation features. The degradation feature vector is composed of the two features. The practical vibration signals of pump with piston shoe wear-out and loose faults are analyzed, and the results demonstrate the effectiveness of the proposed two features. The weighted grey relation method is used in the pump degradation state identification. A standard degradation mode matrix is built, and the degradation feature vectors of the samples to be identified are extracted. The grey relational analysis of degradation feature vectors and standard degradation mode matrix are performed. The grey correlation degrees are used to judge the degradation state of pump, and the analysis results demonstrate the favorable performance of the proposed method.

Key words: ordnance science and technology, hydraulic pump, degradation state identification, S transform, relative spectrum entropy, weighted grey relational analysis

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