제어로봇시스템학회:학술대회논문집
- 2001.10a
- /
- Pages.127.1-127
- /
- 2001
Model-based fault diagnosis methodology using neural network and its application
- Lee, In-Soo (Sangju Univ.) ;
- Kim, Kwang-Tae (Sangju Univ.) ;
- Cho, Won-Chul (Kyongdo Univ.) ;
- Kim, Jung-Teak (KAWRI) ;
- Kim, Kyung-Youn (Cheju Univ.) ;
- Lee, Yoon-Joon (Cheju Univ.)
- Published : 2001.10.01
Abstract
In this paper we propose an input/output model based fault diagnosis method to detect and isolate single faults in the robot arm control system. The proposed algorithm is functionally composed 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, and in this zone the estimated parameters are transferred to the fault classifier by ART2(adaptive resonance theory 2) neural network for fault isolation. Since ART2 neural network is an unsupervised neural network fault classifier does not require the knowledge of all possible faults to isolate the faults occurred in the system. Simulations are carried out to evaluate the performance of the proposed ...
Keywords