DocumentCode
489108
Title
How Neural Networks Work : The Mathematics of Networks Used to Solve Standard Engineering Problems
Author
Wray, J. ; Green, G.G.R.
Author_Institution
Department Physiological Sciences, The Medical School, University of Newcastle upon Tyne, NE2 4HH, UK.
fYear
1991
fDate
26-28 June 1991
Firstpage
2311
Lastpage
2313
Abstract
Artificial neural networks can be used to learn transfer functions for engineering processes where the production of an analytic mathematical description has proved difficult. Artificial neural networks can provide accurate descriptive models of the system characteristics enabling improved control and optimisation. A major criticism of this technique has been that the only way to establish an appropriate architecture of the network is by trial and error. The application of approximation theory to networks has provided some general theoretical views of network architecture, but these also do not provide any insight into how to practically implement specific networks. In this paper we consider the nodal equations of the networks in terms of their Taylor series expansion, and in doing so produce some results concerning the pragmatics of network architecture. We also introduce an alternative nodal output function, which leads to a method of producing an equivalent transfer function from a trained network.
Keywords
Artificial neural networks; Biomedical engineering; Equations; Mathematics; Medical control systems; Neural networks; Polynomials; Production; Standards; Taylor series;
fLanguage
English
Publisher
ieee
Conference_Titel
American Control Conference, 1991
Conference_Location
Boston, MA, USA
Print_ISBN
0-87942-565-2
Type
conf
Filename
4791817
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