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FAULT
DIAGNOSIS APPROACH FOR
GEARS BASED
ON EMD AND SVM
Yu Dejie Yang Yu Cheng Junsheng
(College of Mechanical and Automotive
Engineering, Hunan University, Changsha 410082)
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Abstract: Support sector machine (SVM) has stronger generalization
ability than artificial neural networks and can guarantee that the local
optimal solution is exactly the global optimal one. Meanwhile, it can
solve the learning problem of smaller number of samples. According to
the situation that it is hard to obtain enough fault samples and the
non-stationary characteristics of gears fault vibration signals, a gears
fault diagnosis method based on empirical mode decomposition (EMD) and
SVM is proposed. Firstly, vibration signals are decomposed into a finite
number of stationary intrinsic mode functions (IMFs), then the AR model
of each IMF component is established, finally, the auto-regressive
parameters and the variance of remnant are regarded as the fault
characteristic vectors and served as input parameter of SVM classifier
to classify working condition of gears. The experimental results show
that the proposed approach can classify working condition of gears
accurately and effectively even in the case of smaller number of
samples.
Key
words: EMD
SVM Gears Fault diagnosis AR model
CLC No: TH165
国家自然科学基金(50275050)和高等学校博士点专项科研基金(20020532024)资助项目.
Received 20040308, received in revised form 20040811 |