分数阶傅里叶变换在轴承故障诊断中的应用
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2017
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Abstract
In fault diagnosis of rolling bearings,the fault signal is easy to be interfered by the ambient noise,
Therefore,an approach based on Fractional Fourier Transform( FRFT) is studied in this research to collect valid
data of rolling bearing fault. With utilizing this approach,data can be analyzed by being converted into fractional
domain,as well as 3D simulation. Consequently,the fractional can be changed to extract the weak fault to search
for the maximum peak of weak fault. According to the analysis,the Fractional Fourier Transform algorithm is able
to effectively reduce the mutual interference of other components and noise,and accurately extract the target
component. Hence,the research findings are able to prove the validity and feasibility of the approach studied in
this paper.
| Reference Key |
yan2017journal
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|---|---|
| Authors | ;SHAO Yan;LU Di;YANG Guang-xue |
| Journal | journal of economic and financial sciences |
| Year | 2017 |
| DOI |
10. 15938 /j. jhust. 2017. 03. 012
|
| URL | |
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