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Model-based fault detection and isolation method using ART2 neural network

Irvin Lee, J. T. Kim, J. W. Lee, D. Y. Lee, Kyung Youn Kim

Year
2003
Citations
19

Abstract

This article presents a model-based fault diagnosis method to detect and isolate faults in the robot arm control system. The proposed algorithm is composed functionally of three main parts: parameter estimation, fault detection, and isolation. When a change in the system occurs, the errors between the system output and the estimated output cross a predetermined threshold, and once a fault in the system is detected, the estimated parameters are transferred to the fault classifier by the adaptive resonance theory 2 neural network (ART2 NN) with uneven vigilance parameters for fault isolation. The simulation results show the effectiveness of the proposed ART2 NN–based fault diagnosis method. © 2003 Wiley Periodicals, Inc.

Keywords

Fault detection and isolationAdaptive resonance theoryArtificial neural networkComputer scienceFault (geology)Control theory (sociology)Artificial intelligenceClassifier (UML)Pattern recognition (psychology)Control (management)

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