Title :
Fault diagnosis in electric drives using machine learning approaches
Author :
Silva, Andre A. ; Bazzi, Ali M. ; Gupta, Swastik
Author_Institution :
Lab. of Intell. Networks & Knowledge-Perception Syst. (LINKS), Univ. of Connecticut, Storrs, CT, USA
Abstract :
This paper applies machine learning techniques to fault diagnosis in electric motor drives. As faults in motor drives can cause safety hazards in applications such as electric traction, propulsion, aircraft, and others, it is desired to diagnose the fault, i.e., detect it and isolate it, in order to recover or engage safe-mode operation. Machine learning methods are divided into three main steps: 1) Feature extraction using Principal Component Analysis (PCA); 2) Classification using the k-Nearest Neighbor (k-NN) or Probabilistic Neural Network (PNN) methods; and 3) Classifier performance evaluation using the Cross-Validation (CV) method. While electric machine, inverter, and sensor faults are introduced, the supervised learning algorithms are applied to four case studies where two fault modes occur in a current sensor, and two occur in the speed encoder. Classification accuracy, i.e., the ability to diagnose a fault, for all four cases is shown to exceed 98%. The paper also investigates a load profile used in automotive driving cycles which produces richer dynamic responses that are more interesting from an application perspective. The final goal is to implement these algorithms in real-time such that fault diagnosis can be used to isolate drive faults, especially sensor faults, and operate in a safe mode.
Keywords :
dynamic response; electrical safety; fault diagnosis; hazards; invertors; learning (artificial intelligence); motor drives; neural nets; power engineering computing; principal component analysis; CV method; PCA; PNN method; aircraft; automotive driving cycle; classifier performance evaluation; cross-validation method; current sensor fault; dynamic response; electric machine; electric motor drive; electric propulsion; electric traction; fault diagnosis; feature extraction; inverter; k-NN method; k-Nearest Neighbor method; machine learning approach; principal component analysis; probabilistic neural network method; safe-mode operation; safety hazards; supervised learning algorithm; Circuit faults; Fault diagnosis; Induction motor drives; Power electronics; Principal component analysis; Rotors;
Conference_Titel :
Electric Machines & Drives Conference (IEMDC), 2013 IEEE International
Conference_Location :
Chicago, IL
Print_ISBN :
978-1-4673-4975-8
Electronic_ISBN :
978-1-4673-4973-4
DOI :
10.1109/IEMDC.2013.6556173