Title :
Modular Neural Network Architecture for Precise Condition Monitoring
Author_Institution :
St. Francis Xavier Univ., Antigonish
fDate :
4/1/2008 12:00:00 AM
Abstract :
Unplanned production shutdown due to equipment failure is the source of the highest cost in the manufacturing and process industries. Traditional fault detection methods are able to monitor the process and detect deterioration of the equipment after their degradation and malfunction occurs. This paper presents an intelligent technique based on a neural network (NN) that monitors the health of the equipment and forecasts faults by detecting any onset of failures. In this approach, an adaptive modular NN architecture that is capable of monitoring the health of industrial machines is introduced. This technique is applied to a subsystem of a machining center. The high accuracy of the technique is verified by extensive tests, resulting in over 99% precision.
Keywords :
condition monitoring; failure analysis; machine tools; manufacturing industries; neural net architecture; condition monitoring; equipment health monitoring; industrial machines; manufacturing industries; modular neural network architecture; process industries; Failure forecasting; fault diagnosis; modular neural networks (MNNs); pattern recognition; real-time condition monitoring;
Journal_Title :
Instrumentation and Measurement, IEEE Transactions on
DOI :
10.1109/TIM.2007.909411