Prediction of single yarn tenacity of ring-and rotor-spun yarns from HVI results using artificial neural networks
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Artificial neural network (ANN) models for predicting the single yarn tenacity of ring- and rotor- spun yarns form the cotton fibre properties, measured by high volume instrument, have been presented. Seven cotton fibre properties and yarn fineness have been used as the inputs to the neural network. Different network structures have been used to optimize the prediction performance. The relative irnportance of all the cotton fibre properties has also been quantified. The ANN rnodels could predict the single yarn tenacity with less than 57o and 2Vo n)ean error in case of ring- and rotor- spun yarns respectively. Yarn fineness, fibre bundle tenacity, elongation and length uniformity are the dominant input parameters which influence the single yarn tenacity of spun yarns.
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