Title of article :
Neural-network-based motor rolling bearing fault diagnosis
Author/Authors :
B.، Li, نويسنده , , M.-Y.، Chow, نويسنده , , Y.، Tipsuwan, نويسنده , , J.C.، Hung, نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2000
Pages :
-105
From page :
106
To page :
0
Abstract :
Motor systems are very important in modern society. They convert almost 60% of the electricity produced in the US into other forms of energy to provide power to other equipment. In the performance of all motor systems, bearings play an important role. Many problems arising in motor operations are linked to bearing faults. In many cases, the accuracy of the instruments and devices used to monitor and control the motor system is highly dependent on the dynamic performance of the motor bearings. Thus, fault diagnosis of a motor system is inseparably related to the diagnosis of the bearing assembly. In this paper, bearing vibration frequency features are discussed for motor bearing fault diagnosis. This paper then presents an approach for motor rolling bearing fault diagnosis using neural networks and time/frequency-domain bearing vibration analysis. Vibration simulation is used to assist in the design of various motor rolling bearing fault diagnosis strategies. Both simulation and real-world testing results obtained indicate that neural networks can be effective agents in the diagnosis of various motor bearing faults through the measurement and interpretation of motor bearing vibration signatures
Journal title :
IEEE Transactions on Industrial Electronics
Serial Year :
2000
Journal title :
IEEE Transactions on Industrial Electronics
Record number :
62243
Link To Document :
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