TY - CHAP
T1 - Genetic algorithms for artificial neural net-based condition monitoring system design for rotating mechanical systems
AU - Saxena, Abhinav
AU - Saad, Ashraf
PY - 2006
Y1 - 2006
N2 - We present the results of our investigation into the use of Genetic Algorithms (GA) for identifying near optimal design parameters of Diagnostic Systems that are based on Artificial Neural Networks (ANNs) for condition monitoring of mechanical systems. ANNs have been widely used for health diagnosis of mechanical bearing using features extracted from vibration and acoustic emission signals. However, different sensors and the corresponding features exhibit varied response to different faults. Moreover, a number of different features can be used as inputs to a classifier ANN. Identification of the most useful features is important for an efficient classification as opposed to using all features from all channels, leading to very high computational cost and is, consequently, not desirable. Furthermore, determining the ANN structure is a fundamental design issue and can be critical for the classification performance. We show that GA can be used to select a smaller subset of features that together form a genetically fit family for successful fault identification and classification tasks. At the same time, an appropriate structure of the ANN, in terms of the number of nodes in the hidden layer, can be determined, resulting in improved performance.
AB - We present the results of our investigation into the use of Genetic Algorithms (GA) for identifying near optimal design parameters of Diagnostic Systems that are based on Artificial Neural Networks (ANNs) for condition monitoring of mechanical systems. ANNs have been widely used for health diagnosis of mechanical bearing using features extracted from vibration and acoustic emission signals. However, different sensors and the corresponding features exhibit varied response to different faults. Moreover, a number of different features can be used as inputs to a classifier ANN. Identification of the most useful features is important for an efficient classification as opposed to using all features from all channels, leading to very high computational cost and is, consequently, not desirable. Furthermore, determining the ANN structure is a fundamental design issue and can be critical for the classification performance. We show that GA can be used to select a smaller subset of features that together form a genetically fit family for successful fault identification and classification tasks. At the same time, an appropriate structure of the ANN, in terms of the number of nodes in the hidden layer, can be determined, resulting in improved performance.
UR - http://www.scopus.com/inward/record.url?scp=33845415238&partnerID=8YFLogxK
U2 - 10.1007/3-540-31662-0_11
DO - 10.1007/3-540-31662-0_11
M3 - Chapter
AN - SCOPUS:33845415238
SN - 3540316493
SN - 9783540316497
T3 - Advances in Soft Computing
SP - 135
EP - 149
BT - Applied Soft Computing Technologies
A2 - Abraham, Ajith
A2 - Baets, Bernard
A2 - Koeppen, Mario
A2 - Nickolay, Bertram
ER -