Title :
Intelligent diagnosis of open and short circuit faults in electric drive inverters for real-time applications
Author :
Abul Masrur, M. ; Chen, Zhe ; Murphey, Y.
Author_Institution :
US Army RDECOM-TARDEC, Warren, MI, USA
fDate :
3/1/2010 12:00:00 AM
Abstract :
This study presents a machine learning technique for fault diagnostics in induction motor drives. A normal model and an extensive range of faulted models for the inverter-motor combination were developed and implemented using a generic commercial simulation tool to generate voltages and current signals at a broad range of operating points selected by a machine learning algorithm. A structured neural network system has been designed, developed and trained to detect and isolate the most common types of faults: single switch open circuit faults, post short-circuits, short circuits and the unknown faults. Extensive simulation experiments were conducted to test the system with added noise, and the results show that the structured neural network system which was trained by using the proposed machine learning approach gives high accuracy in detecting whether a faulty condition has occurred, thus isolating and pin-pointing to the type of faulty conditions occurring in power electronics inverter-based electrical drives. Finally, the authors show that the proposed structured neural network system has the capability of real-time detection of any of the faulty conditions mentioned above within 20-ms or less.
Keywords :
fault diagnosis; induction motor drives; invertors; learning (artificial intelligence); neural nets; power engineering computing; fault diagnostics; generic commercial simulation tool; induction motor drives; intelligent diagnosis; inverter-motor combination; machine learning technique; post short-circuits; power electronics inverter-based electrical drives; real-time applications; simulation experiments; single switch open circuit faults; structured neural network system;
Journal_Title :
Power Electronics, IET
DOI :
10.1049/iet-pel.2008.0362