Abstract- Neural networks are used to predict the drape coemcient (DC) and circularity (CIR) of many different kinds of fabrics. The neural network models used were the Multilayer Perceptron using Backpropagation (BP) and the Radial Basis Function (RBF) neural network. The BP method was found to be more effective than the RBF method but the RBF method was the fastest when it came to training. Comparisons of the two models as well ss comparisons of the same models using different parameters are presented. It was also found that prediction for CIR was less accurate than for DC for both neural network architectures
Neural network technique has been recently preferred in textile sector for the prediction task becau...
WOS: 000368643200007Artificial neural network (ANN) is a mathematical model inspired by biological n...
In our previous works, we had predicted cotton ring yarn properties from the fiber properties succes...
This paper investigates the use of extended normalized radial basis function (ENRBF) neural networks...
Changes on the CIELab values of the dyed materials after the different chemical finishing treatments...
In this study, an artificial neural network (ANN) model is presented in order to predict the tenacit...
The abrasion resistance of chenille yarn is crucially important in particular because the effect sou...
Fabric pilling is affected by many interacting factors. This study uses artificial neural networks t...
The purpose of the present study was to estimate dimensional measure properties of T-shirts made up ...
ABSTRACT: Engineered fabric manufacturing needs a thorough understanding of the functional propertie...
77-84A transformation model of the fabric mechanical properties and the draped pleat vision and be...
When anti-shrinkage precaution is taken for finishing processes, shrinkage could be observed with co...
This work is concerned with the colour prediction of viscose fibre blends, comparing two conventiona...
250-256Prediction of functional and performance properties of textiles before the actual commencemen...
This study aims at predicting the effects of selected process parameters on nips stability and numbe...
Neural network technique has been recently preferred in textile sector for the prediction task becau...
WOS: 000368643200007Artificial neural network (ANN) is a mathematical model inspired by biological n...
In our previous works, we had predicted cotton ring yarn properties from the fiber properties succes...
This paper investigates the use of extended normalized radial basis function (ENRBF) neural networks...
Changes on the CIELab values of the dyed materials after the different chemical finishing treatments...
In this study, an artificial neural network (ANN) model is presented in order to predict the tenacit...
The abrasion resistance of chenille yarn is crucially important in particular because the effect sou...
Fabric pilling is affected by many interacting factors. This study uses artificial neural networks t...
The purpose of the present study was to estimate dimensional measure properties of T-shirts made up ...
ABSTRACT: Engineered fabric manufacturing needs a thorough understanding of the functional propertie...
77-84A transformation model of the fabric mechanical properties and the draped pleat vision and be...
When anti-shrinkage precaution is taken for finishing processes, shrinkage could be observed with co...
This work is concerned with the colour prediction of viscose fibre blends, comparing two conventiona...
250-256Prediction of functional and performance properties of textiles before the actual commencemen...
This study aims at predicting the effects of selected process parameters on nips stability and numbe...
Neural network technique has been recently preferred in textile sector for the prediction task becau...
WOS: 000368643200007Artificial neural network (ANN) is a mathematical model inspired by biological n...
In our previous works, we had predicted cotton ring yarn properties from the fiber properties succes...