Development of Intelligent System for Induction Motor Fault Diagnosis in Ceiling Fan

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Chaturvedi D. K.
Devendra Singh
Vikas Pratap Singh

Abstract

A variety of fan faults occur in our day to day life such as electrical faults(winding faults), mechanical faults (broken rotor bars, eccentricity, bearing faults) etc. To detect the fault, many motor variables may be taken such as current, voltage, speed, sound, temperature and vibrations, so that the preventive action may be taken before the occurrence of faults in the fan. Current signature is useful for finding electrical faults such as stator faults etc. and acoustic signature is useful for finding mechanical faults such as rotor faults etc. In this paper, the on line current, voltage, rpm and temperature reading of faulty fan and healthy fan are recorded. These recorded signals are used to train a neural network so that it is able to detect the fault.

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How to Cite
D. K., C., Singh, D., & Singh, V. P. (2014). Development of Intelligent System for Induction Motor Fault Diagnosis in Ceiling Fan. Power Research - A Journal of CPRI, 279–286. Retrieved from https://cprijournal.in/index.php/pr/article/view/814

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