Volume 91, Issue 3 pp. 1746-1751

Performance of neural networks for predicting yarn properties using principal component analysis

R. Chattopadhyay

Corresponding Author

R. Chattopadhyay

Department of Textile Technology, IIT Delhi, New Delhi 110016, India

Department of Textile Technology, IIT Delhi, New Delhi 110016, India===Search for more papers by this author
Anirban Guha

Anirban Guha

Department of Textile Technology, IIT Delhi, New Delhi 110016, India

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Jayadeva

Jayadeva

Department of Electrical Engineering, IIT Delhi, New Delhi 110016, India

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First published: 05 December 2003
Citations: 18

Abstract

In recent years, neural networks have been used as a tool for modeling an industrial process. An improvement in their performance may be expected either by divining more efficient training algorithms or by intelligently manipulating the data set. The second method is examined. The problem chosen is one of predicting the properties of cotton yarn from the fiber properties. When the input data are known to correlate with each other, principal component analysis can be used to improve the performance of neural networks. © 2003 Wiley Periodicals, Inc. J Appl Polym Sci 91: 1746–1751, 2004

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