Title :
Weighted feature selection with growing neural networks for the FDD of rolling element bearings
Author :
Barakat, M. ; El Badaoui, M. ; Guillet, F.
Author_Institution :
Univ. of Jean-Monnet, Roannais, France
Abstract :
This paper suggests an automated approach for fault detection, diagnosis and identification of roller bearings, which is based on optimized form of growing neural networks. In our recent work, we selected features according to their classification accuracy within supervised learning stage. Since each one of selected features has different effect on classification decision, a weighted feature selection is put forward in this paper to improve the network taxonomy. This is followed by a self adaptive growing neural network that optimizes its architecture by adding or updating hidden nodes to fulfill the training requirements. This pattern recognition procedure used to recognize between signals coming from normal bearings and those generated from different industrial bearing faults. The developed approach is compared with two different types of supervised neural networks. Results demonstrate that the developed diagnostic approach can reliably separate different bearing fault conditions at various rotational speeds.
Keywords :
fault diagnosis; feature extraction; learning (artificial intelligence); neural nets; production engineering computing; rolling bearings; FDD; automated approach; bearing fault conditions; classification accuracy; classification decision; fault diagnosis; fault identification; hidden nodes; industrial bearing faults; network taxonomy; pattern recognition procedure; rolling element bearings; rotational speeds; self adaptive growing neural network; signals recognition; supervised learning; supervised neural networks; training requirements; weighted feature selection; Accuracy; Fault diagnosis; Feature extraction; Neural networks; Testing; Training; Velocity control;
Conference_Titel :
Control & Automation (MED), 2012 20th Mediterranean Conference on
Conference_Location :
Barcelona
Print_ISBN :
978-1-4673-2530-1
Electronic_ISBN :
978-1-4673-2529-5
DOI :
10.1109/MED.2012.6265652