Calculation of Compressor Characteristics Based on Elman Neural Network

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Abstract:

A calculation of an axial compressor characteristics is made based on Elman neural network. The experimental data provided by manufacturers are used for the neural network training.To establish the function model to obtain the pressure ratio and efficiency respectively. The result show that Elman neural network both have a good precision for prediction of interpolation and extrapolation.

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727-732

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April 2012

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© 2012 Trans Tech Publications Ltd. All Rights Reserved

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