会议专题

Application of Balanced Multi-wavelet in the Fault Diagnosis of Rolling Bearing

  Multi-wavelet has many excellent properties that single wavelet cannot satisfy simultaneously, such as symmetry, orthogonality, compact support and high vanishing moments etc.It contains several scaling functions and wavelet functions, which can make it match different characteristics of analyzed signal.Therefore, it is always used in bearing fault diagnosis.However, multi-wavelet is multi-dimensional and vibration signal is one-dimensional, so the 1-D vibration signal should be preprocessed before being decomposed with multi-wavelet.It means that the initial data need to be converted to r-dimensional data, and then is input to a tower algorithm.If preprocessing is done, multi-wavelet properties will be destroyed.Due to balanced multi-wavelet has unique properties, the preprocessing can be omitted.In this paper, a balanced multi-wavelet called CL4BAL is designed through balancing original CL4 multi-wavelet and is applied in the vibration signal processing.Comparing the frequency band index after decomposition and reconstruction of CL4BAL and CL4 multi-wavelet, it can be proved that CL4BAL is much better than that of CL4 multi-wavelet in bearing fault diagnosis.

Rolling bearing Balanced multi-wavelet Fault indicator Feature extraction

Sui Zheng Zhang Jian Yu Zhang Yang Yang

Key Laboratory of Advanced Manufacturing Technology,Beijing University of Technology,Beijing

国际会议

the 2012 International Conference on Vibration, Structural Engineering and Measurement (2012年振动、结构工程与测量国际会议(ICVSEM2012))

上海

英文

210-215

2012-10-19(万方平台首次上网日期,不代表论文的发表时间)