Research Article
BibTex RIS Cite
Year 2023, Volume: 33 Issue: 1, 9 - 14, 31.03.2023
https://doi.org/10.32710/tekstilvekonfeksiyon.904406

Abstract

References

  • 1. Ishtiaque, S, Rengasamy, R,Ghosh, A. 2004. Optimization of Ring Frame Process Parameters for Better Yam Quality and Production.
  • 2. Majumdar, P K,Majumdar, A. 2004. Predicting the Breaking Elongation of Ring Spun Cotton Yarns Using Mathematical, Statistical, and Artificial Neural Network Models. Textile Research Journal 74(7), 652-55.
  • 3. Üreyen, M E,Gürkan, P. 2008. Comparison of Artificial Neural Network and Linear Regression Models for Prediction of Ring Spun Yarn Properties. I. Prediction of Yarn Tensile Properties. Fibers and Polymers 9(1), 87-91.
  • 4. ____. 2008. Comparison of Artificial Neural Network and Linear Regression Models for Prediction of Ring Spun Yarn Properties. Ii. Prediction of Yarn Hairiness and Unevenness. Fibers and Polymers 9(1), 92-96.
  • 5. Moghassem, A, Fallahpour, A,Shanbeh, M. 2012. An Intelligent Model to Predict Breaking Strength of Rotor Spun Yarns Using Gene Expression Programming. Journal of Engineered Fibers and Fabrics 7(2), 155892501200700202.
  • 6. Feng, J, Xu, B G,Tao, X M. 2013. Systematic Investigation and Optimization of Fine Cotton Yarns Produced in a Modified Ring Spinning System Using Statistical Methods. Textile Research Journal 83(3), 238-48.
  • 7. Malik, S A, Farooq, A, Gereke, T,Cherif, C. 2016. Prediction of Blended Yarn Evenness and Tensile Properties by Using Artificial Neural Network and Multiple Linear Regression. Autex Research Journal 16(2), 43-50.
  • 8. Khurshid, F, Aslam, S, Ali, U, Abbas, A, Hamdani, T A,Hussain, F. 2018. Optimization of Break Draft, Pin Spacer and Rubber Cots Hardness to Enhance the Quality of Ring Spun Yarn Using Factorial Design. Journal of Engineered Fibers and Fabrics 13(2), 155892501801300209.
  • 9. Demiryürek, O,Koç, E. 2009. Predicting the Unevenness of Polyester/Viscose Blended Open-End Rotor Spun Yarns Using Artificial Neural Network and Statistical Models. Fibers and Polymers 10(2), 237-45.
  • 10. ____. 2009. The Mechanism and/or Prediction of the Breaking Elongation of Polyester/Viscose Blended Open-End Rotor Spun Yarns. Fibers and Polymers 10(5), 694-702.
  • 11. Ishtiaque, S M, Das, A,Niyogi, R. 2006. Optimization of Fiber Friction, Top Arm Pressure and Roller Setting at Various Drafting Stages. Textile Research Journal 76(12), 913-21.
  • 12. Ghane, M, Semnani, D, Saghafi, R,Beigzadeh, H. 2008. Optimization of Top Roller Diameter of Ring Machine to Enhance Yarn Evenness by Using Artificial Intelligence.
  • 13. Malik, S, Mengal, N, Saleemi, S,Abbasi, S. 2013. Blended Yarn Analysis: Part Ii—Influence of Twist Multiplier and Back Roller Cot Hardness on Mass Variation, Hairiness, and Physical Properties of 15 Tex Pes/Co-Blended Ring-Spun Yarn. Journal of Natural Fibers 10(3), 271-81.
  • 14. Veit, D. 2001. Einstellung Von Falschdraht-Texturiermaschinen Mit Hilfe Der Evolutionsstrategie Und Neuronaler Netze, Ph.D. Dissertation, Rheinisch-Westfälische Technische Hochschule Aachen, Germany,
  • 15. Mac, T. 2007. Methodik Zur Bestimmung Von Fasermischungs-Und Garneigenschaften Auf Basis Der Einzelkomponenten, Rheinisch-Westfälische Technische Hochschule Aachen, Germany,
  • 16. Farooq, A,Cherif, C. 2008. Use of Artificial Neural Networks for Determining the Leveling Action Point at the Auto-Leveling Draw Frame. Textile Research Journal 78(6), 502-09.
  • 17. Murrells, C M, Tao, X M, Xu, B G,Cheng, K P S. 2009. An Artificial Neural Network Model for the Prediction of Spirality of Fully Relaxed Single Jersey Fabrics. Textile Research Journal 79(3), 227-34.
  • 18. Dutta, M, Chatterjee, A,Rakshit, A. 2006. Intelligent Phase Correction in Automatic Digital Ac Bridges by Resilient Backpropagation Neural Network. Measurement 39(10), 884-91.
  • 19. Saini, L M. 2008. Peak Load Forecasting Using Bayesian Regularization, Resilient and Adaptive Backpropagation Learning Based Artificial Neural Networks. Electric Power Systems Research 78(7), 1302-10.
  • 20. Chen, C-S,Su, S-L. 2010. Resilient Back-Propagation Neural Network for Approximation 2-D Gdop, Proceedings of the International Technical Multi Conference of Engineers and Computer Scientists, Chengdu, China. Citeseer, 900904.
  • 21. Naoum, R S, Abid, N A,Al-Sultani, Z N. 2012. An Enhanced Resilient Backpropagation Artificial Neural Network for Intrusion Detection System. International Journal of Computer Science and Network Security (IJCSNS) 12(3), 11.
  • 22. Pani, A K,Mohanta, H K. 2015. Online Monitoring and Control of Particle Size in the Grinding Process Using Least Square Support Vector Regression and Resilient Back Propagation Neural Network. ISA transactions 56, 206-21.
  • 23. Gonzalez Viejo, C, Torrico, D D, Dunshea, F R,Fuentes, S. 2019. Development of Artificial Neural Network Models to Assess Beer Acceptability Based on Sensory Properties Using a Robotic Pourer: A Comparative Model Approach to Achieve an Artificial Intelligence System. Beverages 5(2), 33.

Predictive Modeling of Yarn Quality at Ring Spinning Machine using Resilient Back Propagation Neural Networks

Year 2023, Volume: 33 Issue: 1, 9 - 14, 31.03.2023
https://doi.org/10.32710/tekstilvekonfeksiyon.904406

Abstract

The final attenuation and twisting of fiber take place at ring spinning machine and hence its optimized performance is very crucial in terms of yarn quality. Drafting at ring spinning machine has a decisive effect on quality. There exist many influencing parameters in the spinning geometry that have to be optimized for manufacturing of quality yarn. The present research work was carried out to develop the Artificial neural networks (ANN) based prediction model for the polyester/cotton blended ring spun yarns by using these influencing parameters as inputs. ANN prediction model was developed using resilient backpropogation algorithm. Yarn quality parameters like yarn evenness, hairiness and tensile parameters were predicted. The low mean absolute error values for the yarn quality parameters proved that it is possible to predict the yarn quality on the basis of spinning geometry for cotton/polyester blended ring spun yarns using Resilient Back Propogation Neural Networks.

References

  • 1. Ishtiaque, S, Rengasamy, R,Ghosh, A. 2004. Optimization of Ring Frame Process Parameters for Better Yam Quality and Production.
  • 2. Majumdar, P K,Majumdar, A. 2004. Predicting the Breaking Elongation of Ring Spun Cotton Yarns Using Mathematical, Statistical, and Artificial Neural Network Models. Textile Research Journal 74(7), 652-55.
  • 3. Üreyen, M E,Gürkan, P. 2008. Comparison of Artificial Neural Network and Linear Regression Models for Prediction of Ring Spun Yarn Properties. I. Prediction of Yarn Tensile Properties. Fibers and Polymers 9(1), 87-91.
  • 4. ____. 2008. Comparison of Artificial Neural Network and Linear Regression Models for Prediction of Ring Spun Yarn Properties. Ii. Prediction of Yarn Hairiness and Unevenness. Fibers and Polymers 9(1), 92-96.
  • 5. Moghassem, A, Fallahpour, A,Shanbeh, M. 2012. An Intelligent Model to Predict Breaking Strength of Rotor Spun Yarns Using Gene Expression Programming. Journal of Engineered Fibers and Fabrics 7(2), 155892501200700202.
  • 6. Feng, J, Xu, B G,Tao, X M. 2013. Systematic Investigation and Optimization of Fine Cotton Yarns Produced in a Modified Ring Spinning System Using Statistical Methods. Textile Research Journal 83(3), 238-48.
  • 7. Malik, S A, Farooq, A, Gereke, T,Cherif, C. 2016. Prediction of Blended Yarn Evenness and Tensile Properties by Using Artificial Neural Network and Multiple Linear Regression. Autex Research Journal 16(2), 43-50.
  • 8. Khurshid, F, Aslam, S, Ali, U, Abbas, A, Hamdani, T A,Hussain, F. 2018. Optimization of Break Draft, Pin Spacer and Rubber Cots Hardness to Enhance the Quality of Ring Spun Yarn Using Factorial Design. Journal of Engineered Fibers and Fabrics 13(2), 155892501801300209.
  • 9. Demiryürek, O,Koç, E. 2009. Predicting the Unevenness of Polyester/Viscose Blended Open-End Rotor Spun Yarns Using Artificial Neural Network and Statistical Models. Fibers and Polymers 10(2), 237-45.
  • 10. ____. 2009. The Mechanism and/or Prediction of the Breaking Elongation of Polyester/Viscose Blended Open-End Rotor Spun Yarns. Fibers and Polymers 10(5), 694-702.
  • 11. Ishtiaque, S M, Das, A,Niyogi, R. 2006. Optimization of Fiber Friction, Top Arm Pressure and Roller Setting at Various Drafting Stages. Textile Research Journal 76(12), 913-21.
  • 12. Ghane, M, Semnani, D, Saghafi, R,Beigzadeh, H. 2008. Optimization of Top Roller Diameter of Ring Machine to Enhance Yarn Evenness by Using Artificial Intelligence.
  • 13. Malik, S, Mengal, N, Saleemi, S,Abbasi, S. 2013. Blended Yarn Analysis: Part Ii—Influence of Twist Multiplier and Back Roller Cot Hardness on Mass Variation, Hairiness, and Physical Properties of 15 Tex Pes/Co-Blended Ring-Spun Yarn. Journal of Natural Fibers 10(3), 271-81.
  • 14. Veit, D. 2001. Einstellung Von Falschdraht-Texturiermaschinen Mit Hilfe Der Evolutionsstrategie Und Neuronaler Netze, Ph.D. Dissertation, Rheinisch-Westfälische Technische Hochschule Aachen, Germany,
  • 15. Mac, T. 2007. Methodik Zur Bestimmung Von Fasermischungs-Und Garneigenschaften Auf Basis Der Einzelkomponenten, Rheinisch-Westfälische Technische Hochschule Aachen, Germany,
  • 16. Farooq, A,Cherif, C. 2008. Use of Artificial Neural Networks for Determining the Leveling Action Point at the Auto-Leveling Draw Frame. Textile Research Journal 78(6), 502-09.
  • 17. Murrells, C M, Tao, X M, Xu, B G,Cheng, K P S. 2009. An Artificial Neural Network Model for the Prediction of Spirality of Fully Relaxed Single Jersey Fabrics. Textile Research Journal 79(3), 227-34.
  • 18. Dutta, M, Chatterjee, A,Rakshit, A. 2006. Intelligent Phase Correction in Automatic Digital Ac Bridges by Resilient Backpropagation Neural Network. Measurement 39(10), 884-91.
  • 19. Saini, L M. 2008. Peak Load Forecasting Using Bayesian Regularization, Resilient and Adaptive Backpropagation Learning Based Artificial Neural Networks. Electric Power Systems Research 78(7), 1302-10.
  • 20. Chen, C-S,Su, S-L. 2010. Resilient Back-Propagation Neural Network for Approximation 2-D Gdop, Proceedings of the International Technical Multi Conference of Engineers and Computer Scientists, Chengdu, China. Citeseer, 900904.
  • 21. Naoum, R S, Abid, N A,Al-Sultani, Z N. 2012. An Enhanced Resilient Backpropagation Artificial Neural Network for Intrusion Detection System. International Journal of Computer Science and Network Security (IJCSNS) 12(3), 11.
  • 22. Pani, A K,Mohanta, H K. 2015. Online Monitoring and Control of Particle Size in the Grinding Process Using Least Square Support Vector Regression and Resilient Back Propagation Neural Network. ISA transactions 56, 206-21.
  • 23. Gonzalez Viejo, C, Torrico, D D, Dunshea, F R,Fuentes, S. 2019. Development of Artificial Neural Network Models to Assess Beer Acceptability Based on Sensory Properties Using a Robotic Pourer: A Comparative Model Approach to Achieve an Artificial Intelligence System. Beverages 5(2), 33.
There are 23 citations in total.

Details

Primary Language English
Subjects Wearable Materials
Journal Section Articles
Authors

Assad Farooq

Nayab Khan This is me

Farida Irshad This is me

Usama Nasir This is me

Early Pub Date March 28, 2023
Publication Date March 31, 2023
Submission Date April 16, 2021
Acceptance Date July 7, 2022
Published in Issue Year 2023 Volume: 33 Issue: 1

Cite

APA Farooq, A., Khan, N., Irshad, F., Nasir, U. (2023). Predictive Modeling of Yarn Quality at Ring Spinning Machine using Resilient Back Propagation Neural Networks. Textile and Apparel, 33(1), 9-14. https://doi.org/10.32710/tekstilvekonfeksiyon.904406

No part of this journal may be reproduced, stored, transmitted or disseminated in any forms or by any means without prior written permission of the Editorial Board. The views and opinions expressed here in the articles are those of the authors and are not the views of Tekstil ve Konfeksiyon and Textile and Apparel Research-Application Center.