Chen Xiaoguang, Liu Dan, Xu Guanghua, Jiang Kuosheng, Liang Lin
School of Mechanical Engineering, Xi'an Jiaotong University, Xi'an 710049, China.
Sensors (Basel). 2014 Dec 26;15(1):341-51. doi: 10.3390/s150100341.
For decades, bearing factory quality evaluation has been a key problem and the methods used are always static tests. This paper investigates the use of piezoelectric ultrasonic transducers (PUT) as dynamic diagnostic tools and a relevant signal classification technique, wavelet packet entropy (WPEntropy) flow manifold learning, for the evaluation of bearing factory quality. The data were analyzed using wavelet packet entropy (WPEntropy) flow manifold learning. The results showed that the ultrasonic technique with WPEntropy flow manifold learning was able to detect different types of defects on the bearing components. The test method and the proposed technique are described and the different signals are analyzed and discussed.
几十年来,轴承厂质量评估一直是个关键问题,所采用的方法一直都是静态测试。本文研究了将压电超声换能器(PUT)用作动态诊断工具以及一种相关信号分类技术——小波包熵(WPEntropy)流形学习,用于轴承厂质量评估。使用小波包熵(WPEntropy)流形学习对数据进行了分析。结果表明,采用WPEntropy流形学习的超声技术能够检测出轴承部件上不同类型的缺陷。描述了测试方法和所提出的技术,并对不同信号进行了分析和讨论。