六种基于田口多响应优化技术在纺织品产品开发中的性能比较分析

Naseer Ahmad, Shahid Kamal, Z. A. Raza, Muhammad Zeshan, S. Abid, Zafar Javed, M. Karahan
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引用次数: 2

摘要

学术界和工业界的研究人员正在使用不同的统计技术进行过程优化和产品开发。同样,在纺织工业中,一些统计工具正在用于不同产品制造过程的优化。本研究的目的是分析不同的田口为基础的技术在选定的工业过程的多响应优化,然后归纳结果。本文采用六种不同的基于田口的多响应优化技术,包括灰色关联分析(GRA)、加权信噪比(WSN)、主成分分析、VIKOR (VlseKriterijumska Optimizacija I Kompromisno Resenje)、多响应信噪比和模糊逻辑,在三个工业过程数据集上进行了比较。研究人员在此优化了棉花染色、纺织品的整理以使其疏油,以及鼠李糖脂(生物表面活性剂)的生产。结果表明,基于模糊逻辑的田口方法在所有选择的过程中具有最佳的优化效果,其次是GRA和WSN。上述统计技术应用于特定的纺织和生物技术过程。本研究的结果可以帮助研究人员在工业部门的实际实施。在这项研究中,对六种基于田口多响应优化技术的性能进行了比较分析,以用于潜在的工业过程,特别是纺织品加工。
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Comparative Analysis of the Performances of Six Taguchi-Based Multi-Response Optimisation Techniques for Product Development in Textiles
Researchers are using different statistical techniques for process optimisation and product development both in academia and industries. Similarly, several statistical tools are being employed in the textile industry for process optimisation during the manufacturing of different products. The purpose of this study was to analyse different Taguchi-based techniques in the multi-response optimisation of selected industrial processes and then to generalise the outcomes. Herein, six different Taguchi-based multi-response optimisation techniques, including grey relational analysis (GRA), the weighted signal-to-noise (WSN) ratio, principal component analysis, VIKOR (VlseKriterijumska Optimizacija I Kompromisno Resenje), the multiple response signal-to-noise ratio, and Fuzzy logic were compared against three data sets of industrial processes. The researchers herein optimised cotton dyeing, the finishing of textile to make them oleo-hydrophobic, and the production of rhamnolipids (bio-surfactants). The results demonstrated that the Fuzzy logic-based Taguchi method gave the best optimisation amongst all the other approaches, followed by GRA and WSN for all the selected processes. The said statistical techniques were applied to specific textile and biotechnological processes. The outcomes of this study can help researchers in practical implementation in industrial sectors. In this study, a comparative analysis of the performances of six Taguchi-based multi-response optimisation techniques was conducted for potential industrial processes, particularly textile processing .
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