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Predicting the pilling propensity of fabrics through artificial neural network modeling

journal contribution
posted on 2005-01-01, 00:00 authored by Rafael Beltran, Lijing Wang, Xungai Wang
Fabric pilling is affected by many interacting factors. This study uses artificial neural networks to model the multi-linear relationships between fiber, yarn and fabric properties and their effect on the pilling propensity of pure wool knitted fabrics. This tool shall enable the user to gauge the expected pilling performance of a fabric from a number of given inputs. It will also provide a means of improving current products by offering alternative material specification and/or selection. In addition to having the capability to predict pilling performance, the model will allow for clarification of major fiber, yarn and fabric attributes affecting fabric pilling.

History

Journal

Textile research journal

Volume

75

Issue

7

Pagination

557 - 561

Publisher

Sage

Location

Thousand Oaks, Calif.

ISSN

0040-5175

eISSN

1746-7748

Language

eng

Notes

The final, definitive version of this article has been published in the Journal, Textile research journal, Vol 75, Issue Number 7, 2005, © SAGE Publications Ltd, 2005 by SAGE Publications Ltd at the Textile research journal page: http://trj.sagepub.com/ on SAGE Journals Online: http://online.sagepub.com/

Publication classification

C1 Refereed article in a scholarly journal

Copyright notice

2005, SAGE Publications

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