Textile production is a very complex industrial process, whose planning still depends on experts' knowledge and experience. With traditional techniques, a great many process parameters have to be repeatedly computed and the optimization of process parameters is also getting more and more difficult. However the proliferation of a huge mass of data from real production has been creating many new opportunities for those working in textile science, engineering and business. The field of data mining (DM) and knowledge discovery from database (KDD) has emerged as a new discipline in engineering and computer science. This paper investigates data mining methods from the industrial database, and presents a novel DM-based intelligent model (DMIM) for worsted process decisions through an integral application of case-based reasoning (CBR) and artificial neural network (ANN) techniques. First, from the rich existing process database, CBR is able to retrieve and recommend a similar process case as a process template; then, by means of modification on these parameters in the existing cases, ANN model is used to predict the yarn quality and make the best process decision. The basic concept and system modeling are presented in this paper. An applied case with DMIM is also given to demonstrate that the best process decision can be made and important process parameters such as those for raw materials can be optimized.
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1 August 2006
Research Article|
August 01 2006
A Data Mining based Intelligent System for Worsted Process Decision Available to Purchase
Zhi-Jun Lv;
Zhi-Jun Lv
College Of Mechanical Engineering, Donghua University, Shanghai 200051, P.R. China and Key Lab of Textile Science & Technology, Ministry of Education, Shanghai 200051, P.R. China Lvzj@mail.dhu.edu.cn
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Qian Xiang;
Qian Xiang
College Of Mechanical Engineering, Donghua University, Shanghai 200051, P.R. China and Key Lab of Textile Science & Technology, Ministry of Education, Shanghai 200051, P.R. China
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Jian-guo Yang;
Jian-guo Yang
College Of Mechanical Engineering, Donghua University, Shanghai 200051, P.R. China
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Long-di Cheng
Long-di Cheng
Key Lab of Textile Science & Technology, Ministry of Education, Shanghai 200051, P.R. China
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Publisher: Emerald Publishing
Online ISSN: 2515-8090
Print ISSN: 1560-6074
© 2006 Emerald Group Publishing Limited
2006
licensed reuse rights only
Research Journal of Textile and Apparel (2006) 10 (3): 76–84.
Citation
Lv Z, Xiang Q, Yang J, Cheng L (2006), "A Data Mining based Intelligent System for Worsted Process Decision". Research Journal of Textile and Apparel, Vol. 10 No. 3 pp. 76–84, doi: https://doi.org/10.1108/RJTA-10-03-2006-B010
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