DocumentCode
356797
Title
Myoelectric signal classification using evolutionary hybrid RBF-MLP networks
Author
Zalzala, A.M.S. ; Chaiyaratana, N.
Author_Institution
Dept. of Comput. & Electr. Eng., Heriot-Watt Univ., Edinburgh, UK
Volume
1
fYear
2000
fDate
2000
Firstpage
691
Abstract
This paper introduces a hybrid neural structure using radial-basis functions (RBF) and multilayer perceptron (MLP) networks. The hybrid network is composed of one RBF network and a number of MLPs, and is trained using a combined genetic/unsupervised/supervised learning algorithm. The genetic and unsupervised learning algorithms are used to locate the centres of the RBF part in the hybrid network. In addition, the supervised learning algorithm, based on a back-propagation algorithm, is used to train the connection weights of the MLP part in the hybrid network. Performances of the hybrid network are initially tested using a two-spiral benchmark problem. Several simulation results are reported for applying the algorithm in the classification of myoelectric or electromyographic (EMG) signals where the GA-based network proved most efficient
Keywords
backpropagation; electromyography; genetic algorithms; multilayer perceptrons; radial basis function networks; unsupervised learning; backpropagation algorithm; electromyographic signals; evolutionary hybrid RBF-MLP networks; genetic algorithm; hybrid neural structure; multilayer perceptron networks; myoelectric signal classification; radial-basis functions; simulation results; supervised learning algorithm; two-spiral benchmark problem; unsupervised learning algorithm; Benchmark testing; Classification algorithms; Electromyography; Genetics; Multilayer perceptrons; Pattern classification; Performance evaluation; Radial basis function networks; Supervised learning; Unsupervised learning;
fLanguage
English
Publisher
ieee
Conference_Titel
Evolutionary Computation, 2000. Proceedings of the 2000 Congress on
Conference_Location
La Jolla, CA
Print_ISBN
0-7803-6375-2
Type
conf
DOI
10.1109/CEC.2000.870365
Filename
870365
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