PREDICTION OF DIMENSIONAL CHANGE IN FINISHED FABRIC THROUGH ARTIFICIAL NEURAL NETWORKS

When anti-shrinkage precaution is taken for finishing processes, shrinkage could be observed with cotton and viscose fabrics by 8-15% and 20%, respectively. Therefore, capability of estimation of shrinkage rate for fabrics at the end of finishing would be a significant advantage. This study tried to estimate the shrinkage of single jersey and interlock fabrics at the end of relaxation processes by means of the Artificial Neural Networks (ANN). To that end totally 72 varieties of fabric were manufactured in two groups of the elastane and the non-elastane fabrics. Then, in each of two groups included 36 different varieties on the basis of single jersey and interlock weaving types using six different raw materials in three different densities.The processes were applied to fabrics during finishing process are thermo-fixing, washing, drying and sanforizing process.ANN model was used to predict dimensional change at the end of the sanforizing. For ANN, the two-layer feed-forward perceptron, also called single hidden layer feed-forward neural network was used to estimate dimensional change of width and length. Finally, the ANN exhibited successful performance in prediction of dimensional change in fabrics. The prediction of the dimensional properties produced by the neural network model was proved to be highly reliable (R2> 0.98).

PREDICTION OF DIMENSIONAL CHANGE IN FINISHED FABRIC THROUGH ARTIFICIAL NEURAL NETWORKS

When anti-shrinkage precaution is taken for finishing processes, shrinkage could be observed with cotton and viscose fabrics by 8-15% and 20%, respectively. Therefore, capability of estimation of shrinkage rate for fabrics at the end of finishing would be a significant advantage. This study tried to estimate the shrinkage of single jersey and interlock fabrics at the end of relaxation processes by means of the Artificial Neural Networks (ANN). To that end totally 72 varieties of fabric were manufactured in two groups of the elastane and the non-elastane fabrics. Then, in each of two groups included 36 different varieties on the basis of single jersey and interlock weaving types using six different raw materials in three different densities.The processes were applied to fabrics during finishing process are thermo-fixing, washing, drying and sanforizing process.ANN model was used to predict dimensional change at the end of the sanforizing. For ANN, the two-layer feed-forward perceptron, also called single hidden layer feed-forward neural network was used to estimate dimensional change of width and length. Finally, the ANN exhibited successful performance in prediction of dimensional change in fabrics. The prediction of the dimensional properties produced by the neural network model was proved to be highly reliable (R2> 0.98).

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  • 1. Marmaralı A. AtkıÖrmeciliğineGiriş, İzmir, EgeÜniversitesiYayınları, 2004.
  • 2. Çoban, S., (1999),“Genel Tekstil Terbiyesi ve Bitim İşlemleri, İzmir”, Ege Üniversitesi Yayınları, pp:248-265
  • 3. Matusiak M. (2015),“Application of ArtificialNeural Networks to Predict the Air Permeability of Woven Fabrics”, FIBRES & TEXTILES in Eastern Europe, Vol: 23, 1(109), pp: 41-48.
  • 4. Bhattacharjee D, Kothari VK. (2007),“A Neural Network System for Prediction of Thermal Resistance of Textile Fabrics”, Textile Research Journal, Vol: 77, pp: 4-12,
  • 5. Hui CL, Lau TW, Ng SF, Chan KCC. (2004),“Neural Network Prediction of Human Psychological Perceptions of Fabric Hand”, Textile Research Journal, Vol: 74 pp:375-383.
  • 6. Park SW, Hwang YG, Kang BC, Yeo SW. (2000),“Applying Fuzzy Logic andNeural Networks to Total Hand Evaluation of Knitted Fabrics”, Textile Research Journal, Vol:70, pp: 675-681,
  • 7. Majumdar A., (2011), “Modeling of Thermal Conductivity of Knitted Fabrics Made of Cotton-Bamboo Yarns Using Artificial Neural Network”. The Journal of The Textile Institute, Vol: 102(9), pp: 752-762.
  • 8. Wong ASW, Li Y, Yeung PKW, Lee PWH.,(2003),“Neural Network Predictions of Human Psychological Perceptions of Clothing Sensory Comfort”, Textile Research Journal, Vol:73, pp:31-37.
  • 9. Kumar V, Sampath VR.,(2013),“Investigation on the Physical and Dimensional Properties of Single Jersey Fabrics made from Cotton Sheath–Elastomeric Core Spun”, FIBRES & TEXTILES in Eastern Europe; Vol: 21, 3(99) pp: 73-75.
  • 10. Farooq A.,(2014),“Predicting the Dynamic Cohesion in Drafted Slivers at Draw Frame Using Artificial Neural Networks”, Textile and Apparel, Vol: 24(3).
  • 11. Murrels, C.M., Tao, X.M., Xu, B.G., and Cheng, K.P.S., (2009),“An Artificial Neural Network Model for the Prediction of Spirality Fully Relaxed Single Jersey Fabrics”, Textile Research Journal, Vol:79(3), pp: 227-234.
  • 12. Jıanda, C., Xıaojun, G., Lıanfu, Y., (2004), “Research on BP Neural Network Applied to Predict Cotton Fabric Handle”, Proceedings of The Textile Institute 83rd World Conference, pp:1265-1268.
  • 13. Huı, C-L, NG, S-F,(2005),“A New Approach for Prediction of Sewing Performance of Fabrics in Apparel Manufacturing using Artificial Neural Networks”,TheJournal of Textile Institute, Vol: 96,.6, pp: 401-405.
  • 14. Huı, C-L, NG, S-F,( 2005),“A new Approach for Prediction of Sewing Performance of Fabrics in Apparel Manufacturing Using Artificial Neural Networks”,The Journal of Textile Institute, Vol: 96,6, pp: 401-405.
  • 15. Warren, J. Jasper, Kovacs, E. and Berkstresser, G. A., ( 1993 ). “Using Neural Networks to Predict Dye Concentrations in Multiple-Dye Mixtures”, Textile Research Journal, Vol. 63, pp:545 - 551.
  • 16. ArıkanKargı, V. Sinem, (2014)., “A Comparison of Artifıcial Neural Networks and Multiple Linear Regression Models as in Predictors of Fabric Weft Defects”, Textile and Apparel, Vol: 24(3), pp: 309-316.
  • 17. Saravana, K.T.,Sampath, V., (2011 ),“An Artificial Neural Network System for Prediction of Dimensional Properties of Weft Knitted Rib Fabric”, Journal of the Textile Association, Vol: 71(5) pp: 247–250.
  • 18. Saravana K.T, Sampath, VR.,(2012),“Prediction of Dimensional Properties of Weft Knitted Cardigan Fabric by Artificial Neural Network System”, Journal of Industrial Textiles, Vol: 42(4), pp: 446–458.
  • 19. Öztemel E., (2006),Yapay Sinir Ağları. Papatya Yayıncılık Eğitim, İstanbul, Türkiye.
  • 20. Özdemir H.,(2013), “Yapay Sinir Ağları ve Dokuma Teknolojisinde Kullanımı”, Tekstil Teknolojileri Elektronik Dergisi, Vol:7(1), pp: 51-68.
Tekstil ve Konfeksiyon-Cover
  • ISSN: 1300-3356
  • Yayın Aralığı: Yılda 4 Sayı
  • Yayıncı: Ege Üniversitesi Tekstil ve Konfeksiyon Araştırma & Uygulama Merkezi
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