Developing a data-driven operational guide for the texturized yarn production process: data mining and intelligence approach

IF 1 4区 工程技术 Q3 MATERIALS SCIENCE, TEXTILES International Journal of Clothing Science and Technology Pub Date : 2024-02-20 DOI:10.1108/ijcst-03-2023-0032
Saba Sareminia, Zahra Ghayoumian, Fatemeh Haghighat
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Abstract

Purpose

The textile industry holds immense significance in the economy of any nation, particularly in the production of synthetic yarn and fabrics. Consequently, the pursuit of acquiring high-quality products at a reduced cost has become a significant concern for countries. The primary objective of this research is to leverage data mining and data intelligence techniques to enhance and refine the production process of texturized yarn by developing an intelligent operating guide that enables the adjustment of production process parameters in the texturized yarn manufacturing process, based on the specifications of raw materials.

Design/methodology/approach

This research undertook a systematic literature review to explore the various factors that influence yarn quality. Data mining techniques, including deep learning, K-nearest neighbor (KNN), decision tree, Naïve Bayes, support vector machine and VOTE, were employed to identify the most crucial factors. Subsequently, an executive and dynamic guide was developed utilizing data intelligence tools such as Power BI (Business Intelligence). The proposed model was then applied to the production process of a textile company in Iran 2020 to 2021.

Findings

The results of this research highlight that the production process parameters exert a more significant influence on texturized yarn quality than the characteristics of raw materials. The executive production guide was designed by selecting the optimal combination of production process parameters, namely draw ratio, D/Y and primary temperature, with the incorporation of limiting indexes derived from the raw material characteristics to predict tenacity and elongation.

Originality/value

This paper contributes by introducing a novel method for creating a dynamic guide. An intelligent and dynamic guide for tenacity and elongation in texturized yarn production was proposed, boasting an approximate accuracy rate of 80%. This developed guide is dynamic and seamlessly integrated with the production database. It undergoes regular updates every three months, incorporating the selected features of the process and raw materials, their respective thresholds, and the predicted levels of elongation and tenacity.

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为膨体纱生产流程制定数据驱动的操作指南:数据挖掘和智能方法
目的 纺织业在任何国家的经济中都具有举足轻重的地位,尤其是在合成纱线和织物的生产方面。因此,如何以更低的成本获得高质量的产品已成为各国关注的焦点。本研究的主要目的是利用数据挖掘和数据智能技术,通过开发智能操作指南,在膨体纱生产过程中根据原材料规格调整生产工艺参数,从而提高和完善膨体纱的生产工艺。采用了数据挖掘技术,包括深度学习、K-近邻(KNN)、决策树、奈夫贝叶斯、支持向量机和 VOTE,以确定最关键的因素。随后,利用 Power BI(商业智能)等数据智能工具开发了执行和动态指南。研究结果本研究结果表明,生产工艺参数对膨体纱质量的影响比原材料特性的影响更大。通过选择生产工艺参数(即牵伸比、D/Y 和一次温度)的最佳组合,并结合从原料特性中得出的限制指标来预测韧性和伸长率,设计出了执行生产指南。本文提出了一种智能动态纱线生产韧性和伸长率指南,准确率约为 80%。该指南是动态的,并与生产数据库无缝集成。它每三个月进行一次定期更新,将选定的工艺和原材料特征、各自的阈值以及预测的伸长率和韧性水平纳入其中。
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来源期刊
CiteScore
2.40
自引率
8.30%
发文量
51
审稿时长
10 months
期刊介绍: Addresses all aspects of the science and technology of clothing-objective measurement techniques, control of fibre and fabric, CAD systems, product testing, sewing, weaving and knitting, inspection systems, drape and finishing, etc. Academic and industrial research findings are published after a stringent review has taken place.
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