Litcius/Paper detail

ANN based On-board Fault Diagnostic for Induction Motor Drive in Low-Cost Electric Vehicles

Utkal Ranjan Muduli, Khalifa Al Hosani, Khaled Al Jaafari, Jamal Y. Alsawalhi, Ameena Saad Al‐Sumaiti, Ranjan Kumar Behera

20222022 IEEE Applied Power Electronics Conference and Exposition (APEC)37 citationsDOI

Abstract

The defect in the stator winding turns causes a fluctuation in stator resistance, which leads to an incorrect assessment of the stator flux location, which can lead to the failure of the entire drive system. This study describes a novel artificial neural network (ANN) approach for identifying stator short-circuit failures in three-phase induction motors utilizing feature extraction and categorization. Delayed stator current signals are used in the first stage to estimate the mutual information, which is then used as input to decision trees and multilayer perceptron neural networks in the second step. This paper also employs a direct Torque Control (DTC) based fault-tolerant operation (FTO) for the induction motor drive. Voltage imbalance, load torque variations, and short-circuit levels ranging from 1% to 10% are reported in the offline and online experimental tests.

Topics & Concepts

StatorInduction motorMultilayer perceptronFault (geology)Artificial neural networkDirect torque controlControl theory (sociology)TorqueComputer scienceEngineeringVoltageControl engineeringArtificial intelligenceControl (management)Electrical engineeringPhysicsThermodynamicsSeismologyGeologyMachine Fault Diagnosis TechniquesSensorless Control of Electric MotorsMultilevel Inverters and Converters