A Review Study on Mathematical Methods for Fault Detection Problems in Induction Motors

A Review Study on Mathematical Methods for Fault Detection Problems in Induction Motors

—Induction motors are frequently used in industrial processes. Failure of these machines may cause economic, quality and safety losses. In this paper, the mathematical methods used in detection of mechanical and electrical faults of these motors are reviewed together with theory and application examples on the current and vibration data which is acquired during performance tests of the motors followed by accelerated aging
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