Journal of the Visualization Society of Japan
Online ISSN : 1884-037X
Print ISSN : 0916-4731
ISSN-L : 0916-4731
Estimation of Temperature Profiles Using Composite Dynamic/Static Recurrent Neural Networks
Ichiro KIMURAHideki TAKAIKai TAKESHIROMamoru OZAWAYasuaki KUROE
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1995 Volume 15 Issue Supplement1 Pages 169-172

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Abstract
Quantitative thermal flow visualization using image processing is very useful for obtaining velocity vector or temperature profiles in a thermal flow field. The velocity vector and temperature profiles are able to be simultaneously measured from color images visualized by a thermo-sensitive liquid crystal suspension method. The temperature profile, however, partly lacks information on temperatures in the field because of the narrow temperature range in which the liquid crystals present color. Temperature profiles over the entire flow field, therefore, are unable to be obtained.
This paper proposes a new algorithm for estimating unmeasurable temperatures from measurable temperatures. As the first step, an unsteady heat conduction field is modeled by using composite dynamic/static recurrent neural networks from the known information on temperatures. Consequently, the unknown information on temperatures is estimated from the neural network model.
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