A platform for research: civil engineering, architecture and urbanism
Pattern classification by a neurofuzzy network: application to vibration monitoring
An innovative neurofuzzy network is proposed for pattern classification applications, specifically for vibration monitoring. A fuzzy set interpretation is incorporated into the network design to handle imprecise information. A neural network architecture is used to automatically deduce fuzzy if-then rules based on a hybrid supervised learning scheme. The neurofuzzy classifier proposed is equipped with a one-pass, on-line, and incremental learning algorithm. This network can be considered a self-organized classifier with the ability to adaptively learn new information without forgetting old knowledge. The classification performance of the proposed neurofuzzy network is validated on the Fisher's Iris data, which is a well-known benchmark data set. For the generalization capability, the neurofuzzy network can achieve 97.33% correct classification. In addition, to demonstrate the efficiency and effectiveness of the proposed neurofuzzy paradigm, numerical simulations have been performed using the Westland data set. The Westland data set consists of vibration data collected from a US Navy CH-46E helicopter test stand. Using a simple fast Fourier transform technique for feature extraction, the proposed neurofuzzy network has shown promising results. Using various torque levels for training and testing, the network achieved 100% correct classification.
Pattern classification by a neurofuzzy network: application to vibration monitoring
An innovative neurofuzzy network is proposed for pattern classification applications, specifically for vibration monitoring. A fuzzy set interpretation is incorporated into the network design to handle imprecise information. A neural network architecture is used to automatically deduce fuzzy if-then rules based on a hybrid supervised learning scheme. The neurofuzzy classifier proposed is equipped with a one-pass, on-line, and incremental learning algorithm. This network can be considered a self-organized classifier with the ability to adaptively learn new information without forgetting old knowledge. The classification performance of the proposed neurofuzzy network is validated on the Fisher's Iris data, which is a well-known benchmark data set. For the generalization capability, the neurofuzzy network can achieve 97.33% correct classification. In addition, to demonstrate the efficiency and effectiveness of the proposed neurofuzzy paradigm, numerical simulations have been performed using the Westland data set. The Westland data set consists of vibration data collected from a US Navy CH-46E helicopter test stand. Using a simple fast Fourier transform technique for feature extraction, the proposed neurofuzzy network has shown promising results. Using various torque levels for training and testing, the network achieved 100% correct classification.
Pattern classification by a neurofuzzy network: application to vibration monitoring
Meesad, P. (author) / Yen, G.G. (author)
ISA Transactions ; 39 ; 293-308
2000
16 Seiten, 20 Quellen
Article (Journal)
English
Application of neurofuzzy pattern recognition method in borehole geophysics
Online Contents | 2010
|Neurofuzzy modelling of construction projects' duration II: application
Online Contents | 2001
|Neurofuzzy modelling of construction projects' duration II: application
Emerald Group Publishing | 2001
|Tool Condition Monitoring Based on an Adaptive Neurofuzzy Architecture
British Library Online Contents | 2004
|A New Method of Neurofuzzy Network Based on Variable Precision Rough
British Library Conference Proceedings | 2011
|