Establishing the Model of Cashmere Knitted Fabric Style Evaluation Based on BP Neural Network

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Abstract:

This paper took KES fabric style instrument to test and evaluate basic physical properties and comprehensive style of 22 kinds of cashmere knitted fabrics or cashmere and yak cashmere blended knitted fabrics which have different structure, found basic structure parameters and mechanical property index were significantly correlated with cashmere knitted fabric style by correlation analysis, took BP neural network to analyze and train experimental data, established the model of cashmere knitted fabric style evaluation which is better to provide basis for practical production.

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Advanced Materials Research (Volumes 332-334)

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2001-2005

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September 2011

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© 2011 Trans Tech Publications Ltd. All Rights Reserved

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