Litcius/Paper detail

Mixed Eccentricity Fault Detection for Induction Motors Based on Time Synchronous Averaging of Vibration Signals

Ramin Alimardani, Akbar Rahideh, Shahin Hedayati Kia

2023IEEE Transactions on Industrial Electronics41 citationsDOI

Abstract

This article presents a method based on vibration signals to diagnose rotor mixed eccentricity faults in three-phase squirrel cage induction motors (SCIMs). Rotor eccentricity is a typical fault in SCIMs that significantly affects the performance of electrical machines and results in unwanted vibrations. The time synchronous averaging (TSA) signal, which consists of the harmonics components generated by the fault, is obtained via the characteristic frequency of the eccentricity fault. TSA is decomposed into two signals: TSA-regular and TSA-difference, which are respectively similar to approximate and details of the wavelet transform. Based on the fault index, which is the maximum FFT value of the TSA-difference signal, the healthy and faulty motors can be distinguished. The proposed approach is evaluated on an experimental test rig equipped with a 1.5 kW SCIM supplied directly from the power grid under various load conditions. The results illustrate the effectiveness of the proposed approach in detecting the rotor mixed eccentricity faults.

Topics & Concepts

Eccentricity (behavior)HarmonicsControl theory (sociology)Fault (geology)VibrationInduction motorSquirrel-cage rotorRotor (electric)SIGNAL (programming language)EngineeringHarmonic analysisHarmonicFast Fourier transformComputer scienceElectronic engineeringAcousticsPhysicsAlgorithmElectrical engineeringVoltageArtificial intelligenceGeologySeismologyControl (management)Programming languagePolitical scienceLawMachine Fault Diagnosis TechniquesOil and Gas Production TechniquesControl Systems in Engineering