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Modelling of ring yarn unevenness by soft computing approach
Authors:Abhijit Majumdar  Mihai Ciocoiu  Mirela Blaga
Affiliation:(1) Government College of Engineering and Textile Technology, Berhampore, 742101, India;(2) Faculty of Textile and Leather Engineering, Technical University of Iasi, Iasi, 70050, Romania;(3) Present address: Department of Textile Technology, Indian Institute of Technology, New Delhi, 110016, India
Abstract:
This paper demonstrates the application of two soft computing approaches namely artificial neural network (ANN) and neural-fuzzy system to forecast the unevenness of ring spun yarns. The cotton fiber properties measured by advanced fiber information system (AFIS) and yarn count have been used as inputs. The prediction accuracy of the ANN and neural-fuzzy models was compared with that of linear regression model. It was found that the prediction performance was very good for all the three models although ANN and neural-fuzzy models seem to have some edge over the linear regression model. The linguistic rules developed by the neural-fuzzy system unearth the role of input variables on the yarn unevenness.
Keywords:Artificial neural network  Fiber length  Fuzzy logic  Membership function  Regression  Short fiber content  Yarn unevenness
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