Please use this identifier to cite or link to this item: http://nopr.niscpr.res.in/handle/123456789/24954
Title: Prediction of micro-spun yarn lea CSP using artificial neural networks
Authors: Shanmugam, N
Chattopadhyay, S K
Vivekanandan, M Y
Sreenivasamurthy, H V
Keywords: Artificial neural network;Back-propagation neural network;Fibre quality index;Lea CSP;Microspinning
Issue Date: Dec-2001
Publisher: NISCAIR-CSIR, India
Abstract: A back-propagation artificial neural network has been used to develop a model relating to cotton fibre properties and micro-spun yarn lea CSP. Fibre properties such as span length , bundle strength, fineness, breaking elongation, uniformity ratio and percentage of mature fibres have been studied. It is observed that a neural network architecture having five hidden neurons in one hidden layer and an epoch size of 12 gives better prediction. The predictions are more accurate than those obtained from regression models. The mean absolute error of neural network model is found to be 60% lower than those of the regression models.
Page(s): 372-377
ISSN: 0975-1025 (Online); 0971-0426 (Print)
Appears in Collections:IJFTR Vol.26(4) [December 2001]

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