Title :
Hierarchical motor diagnosis utilizing structural knowledge and a self-learning neuro-fuzzy scheme
Author :
Füssel, Dominik ; Isermann, Rolf
Author_Institution :
Inst. of Autom. Control, Darmstadt Univ. of Technol., Germany
fDate :
31 Aug-4 Sep 1998
Abstract :
Fault diagnosis requires a classification system that can distinguish between different faults based on observed symptoms of the process under investigation. Since the fault symptom relationships are not always known beforehand, a system is needed which can be learned from experimental or simulated data. A fuzzy logic based diagnosis is advantageous. It allows an easy incorporation of a-priori known rules and also enables the user to understand the inference of the system. In this contribution, a new diagnosis scheme is presented and applied to a DC motor. The approach is based on a combination of structural a-priori knowledge and measured data in order to create a hierarchical diagnosis system that can be adapted to different motors. Advantages of the system are its high degree of transparency and an increased robustness
Keywords :
DC motors; electric machine analysis computing; fault diagnosis; fuzzy neural nets; unsupervised learning; DC motor; a-priori known rules; classification system; fault diagnosis; fault symptom relationships; hierarchical motor diagnosis; measured data; observed symptoms; robustness; self-learning neuro-fuzzy scheme; structural a-priori knowledge; structural knowledge; Automatic control; Fault detection; Fault diagnosis; Fuzzy logic; Marine vehicles; Monitoring; Neural networks; Power system reliability; Robustness; Signal analysis;
Conference_Titel :
Industrial Electronics Society, 1998. IECON '98. Proceedings of the 24th Annual Conference of the IEEE
Conference_Location :
Aachen
Print_ISBN :
0-7803-4503-7
DOI :
10.1109/IECON.1998.723027