4.4 Article

Study on Fault Diagnosis of Rolling Bearing Based on Time-Frequency Generalized Dimension

期刊

SHOCK AND VIBRATION
卷 2015, 期 -, 页码 -

出版社

HINDAWI LTD
DOI: 10.1155/2015/808457

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资金

  1. National High Technology Research and Development Program [2013AA041108]
  2. Research Foundation of Education Bureau of Liaoning Province, China [L2012166]
  3. Foundation of State Key Laboratory [sklms2012006, sklms2012003]
  4. National Natural Science Foundation of China [51475065]

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The condition monitoring technology and fault diagnosis technology of mechanical equipment played an important role in the modern engineering. Rolling bearing is the most common component of mechanical equipment which sustains and transfers the load. Therefore, fault diagnosis of rolling bearings has great significance. Fractal theory provides an effective method to describe the complexity and irregularity of the vibration signals of rolling bearings. In this paper a novel multifractal fault diagnosis approach based on time-frequency domain signals was proposed. The method and numerical algorithm of Multi-fractal analysis in time-frequency domain were provided. According to grid type J and order parameter q in algorithm, the value range of J and the cut-off condition of q were optimized based on the effect on the dimension calculation. Simulation experiments demonstrated that the effective signal identification could be complete by multifractal method in time-frequency domain, which is related to the factors such as signal energy and distribution. And the further fault diagnosis experiments of bearings showed that the multifractal method in time-frequency domain can complete the fault diagnosis, such as the fault judgment and fault types. And the fault detection can be done in the early stage of fault. Therefore, the multifractal method in time-frequency domain used in fault diagnosis of bearing is a practicable method.

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