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A Performance Degradation Condition Recognition Method Based on Improved Pattern Spectrum Entropy and Fuzzy C-Means

机译:一种基于改进模式谱熵和模糊C型方式的性能下降条件识别方法

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In allusion to performance degradation condition recognition issue for rolling bearing, a method based on improved pattern spectrum entropy (abbreviated as IPSE) and fuzzy C-means algorithm (abbreviated as FCM) is proposed in this paper. In the course of performance degradation feature extraction, morphological corrosion operator is introduced and IPSE is proposed as the degradation feature parameter in describing bearing performance degradation degree. Simulation analysis is processed and shows that, the value of IPSE will increase correspondingly along with the deepening of the degradation degree and the relevance between IPSE and degradation degree is stable. On this basis, in consideration of the fuzzy character of performance degradation condition boundary, FCM is introduced in degradation condition recognition and the degradation condition could be recognized effectively in line with maximum subordination degree principle. Rolling bearing fatigue life enhancement testing was carried out in Hangzhou Bearing Test & Research Center, the whole life data was gathered and applied in this paper, the result shows that the proposed technique has an excellent effect.
机译:在本文提出了一种基于改进的模式谱熵(缩写为IPSE)和模糊C-MEACE算法(缩写为FCM)的方法的性能下降条件识别问题。在性能下降特征提取过程中,引入了形态腐蚀操作员,并提出了IPSE作为描述轴承性能劣化程度的劣化特征参数。处理仿真分析并表明,IPSE的值将相应地增加,随着降解程度的深化,IPSE和劣化程度之间的相关性稳定。在此基础上,考虑到性能下降条件边界的模糊特性,在降解条件识别中引入FCM,并且可以符合最大从属度原理有效地识别降解条件。滚动轴承疲劳寿命增强试验在杭州轴承测试和研究中心进行,整个生命数据都收集和应用,结果表明,该技术具有出色的效果。

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