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Structural evaluation of materials by artificial neural networks
Authors:V Shtrauss  U Lomanovskis
Institution:(1) Howard Hughes Medical Institute, University of Washington, Box 357350, Seattle, Washington 98195-7350, USA E-mail: jens@jens-meiler.de Phone: +1-206-5431295 Fax: +1-206-6851792, US
Abstract:It is shown that due to the complexity of interaction of the excitation field with a material in determining its physical characteristics, as well as sophisticated correlation relationships between the physical characteristics and structure of a real material, in many cases, relization of the structural evaluation of materials on the basis of idealized mathematical models of the underlying physical processes is of limited use. As an alternative, it is proposed to use an artificial neural network for the extraction of quantitative information of interest from measurements of the physical characteristics. A general overview of artificial neural networks is given. A methodology of the use of a multilayer perceptron for determining various structural parameters from the dielectric spectra is described. As an example, determination of the moisture content and density of sawdust from the dielectric modulusis considered by the neural-network technique. The noise performance of the neural network is analyzed by applying an additive and multiplicative noise to the input data.Institute of Polymer Mechanics, University of Latvia, Riga, LV-1006 Latvia. Published in Mekhanika Kompozitnykh Materialov, Vol. 35, No. 1, pp. 109–124, January–February, 1999.
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