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Prediction of rotor spun yarn strength using support vector machines method
Authors:Deogratias Nurwaha  Xinhou Wang
Institution:(1) Shanghai Research Centre of Biotechnology, Chinese Academy of Sciences, Shanghai, 200233, China;(2) Institute of Cell, Animal and Population Biology University of Edinburgh, West Mains Road, Edinburgh, EH9 3JT, U.K;(3) Department of Computing Science, University of Wales, College of Cardiff, Queens Buildings, Newport Road, PO Box 916, Cardiff, CF2 3XF, U.K;(4) Department of Structural Biology, Burnham Institute, La Jolla, California, 92037, USA
Abstract:A new method for rotor spun yarn prediction from fiber properties based on the theory of support vector machines (SVM) was introduced. The SVM represents a new approach to supervised pattern classification and has been successfully applied to a wide range of pattern recognition problems. In this study, high volume instrument (HVI) and advanced fiber information system (Uster AFIS) fiber test results consisting of different fiber properties are used to predict the rotor spun yarn strength. The results obtained through this study indicated that the SVM method would become a powerful tool for predicting rotor spun yarn strength. The relative importance of each fiber property on the rotor spun yarn strength is also expected. The study shows also that the combination of SVM parameters and optimal search method chosen in the model development played an important role in better performance of the model. The predictive performances are estimated and compared to those provided by ANFIS model.
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