Structure evolution for time-delay neural networks

The paper presents a structure finding algorithm for time-delay neural networks based on the working principle of evolutionary algorithms. Multilayer perceptrons, which are a subclass of time-delay neural networks, can also be constructed. The algorithm selects appropriate input features for the neu...

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Bibliographic Details
Published in9th International Conference on Artificial Neural Networks: ICANN '99 pp. 667 - 672
Main Author Sick, B
Format Conference Proceeding Journal Article
LanguageEnglish
Published London IEE 1999
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ISBN0852967217
9780852967218
ISSN0537-9989
DOI10.1049/cp:19991187

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Summary:The paper presents a structure finding algorithm for time-delay neural networks based on the working principle of evolutionary algorithms. Multilayer perceptrons, which are a subclass of time-delay neural networks, can also be constructed. The algorithm selects appropriate input features for the neural networks from a set of possible inputs, finds optimal values for the number of layers and hidden neurons, constructs connections between neurons, and determines the ideal values of time-delays. The approach uses a new, graphical coding scheme, a rank-based selection mechanism, and seventeen reproduction operators for mutation and crossover. The advantages of this approach are shown by means of an application example (tool wear estimation in turning).
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ISBN:0852967217
9780852967218
ISSN:0537-9989
DOI:10.1049/cp:19991187