posted on 2011-01-13, 17:26authored byYimin Zhou, Argyrios C. Zolotas
In this paper, sensor selection relating to neurofuzzy
modeling for the purpose of fault diagnosis is
discussed. The input/output selection in fuzzy modelling
plays an important role in the performance of the derived
model. In addition, with respect to fault tolerant issues,
the impact of the faults on the system, i.e. possible
incipient and abrupt faults, should be detected in the
earliest possible instance. The paper first presents a brief
introduction to neuro-fuzzy modelling, and proceeds to
sensor selection with the aim of considerably improving
the quality and reliability of the system. We study faults,
both of abrupt and incipient nature, that can be
diagnosed in an immediate sense. A two-tank system
History
School
Mechanical, Electrical and Manufacturing Engineering
Citation
ZHOU, Y. and ZOLOTAS, A.C., 2010. Sensor selection in neuro-fuzzy modelling for fault diagnosis. IN:IEEE International Symposium on Industrial Electronics (ISIE), Bari, 4-7 July, 7pp.