TIME DOMAIN BEARING DEFECTS DIAGNOSIS BASED ON GAUSSIAN FILTERING AND FUZZY LOGIC
Abstract
On this paper a novel bearing defects diagnosis method is introduced. This diagnosis method is based on time domain signal processing first step being the Gaussian filtering.
The reason of this filtering is the detection of the shock pulses generated by bearing defects. The diagnosis is done based one the detected defects periods which are used as inputs for a fuzzy classifier that provide defect alerts for each kind of bearing localize defect.
Key words: bearing defects, Gaussian filtering, fuzzy classification.Full Text:
PDFReferences
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