Al-Refaie Abbas, Ming-Hsien Li, and Kuo-Cheng Tai, Optimizing SUS 304 wire drawing process by grey relational analysis utilizing Taguchi method, J. Univ. Sci. Technol. Beijing, 15(2008), No. 6, pp. 714-722. https://doi.org/10.1016/S1005-8850(08)60276-5
Cite this article as:
Al-Refaie Abbas, Ming-Hsien Li, and Kuo-Cheng Tai, Optimizing SUS 304 wire drawing process by grey relational analysis utilizing Taguchi method, J. Univ. Sci. Technol. Beijing, 15(2008), No. 6, pp. 714-722. https://doi.org/10.1016/S1005-8850(08)60276-5
Al-Refaie Abbas, Ming-Hsien Li, and Kuo-Cheng Tai, Optimizing SUS 304 wire drawing process by grey relational analysis utilizing Taguchi method, J. Univ. Sci. Technol. Beijing, 15(2008), No. 6, pp. 714-722. https://doi.org/10.1016/S1005-8850(08)60276-5
Citation:
Al-Refaie Abbas, Ming-Hsien Li, and Kuo-Cheng Tai, Optimizing SUS 304 wire drawing process by grey relational analysis utilizing Taguchi method, J. Univ. Sci. Technol. Beijing, 15(2008), No. 6, pp. 714-722. https://doi.org/10.1016/S1005-8850(08)60276-5
In the stainless steel 304 (SUS 304) wire drawing process, optimizing the die life and wire tensile strength, which are the larger-the-better quality characteristics (QCH) types, is of main interest. Three control factors, involving reduction ratio, lubricant temperature, and drawing speed, were investigated utilizing L9(34) orthogonal array (OA). The grey relational analysis was conducted for the normalized signal-to-noise (S/N) ratios. The ordinal value of the grey grade was then used to decide optimal factor levels. The anticipated improvements in die life and wire tensile strength were estimated 25.31 h and 22.50 kg/mm2, respectively. To decide the significant factor which had effect on each QCH and predict the average value of each QCH, analysis of variance (ANOVA) was performed for S/N ratio and QCH. Confirmation experiments were then conducted, where a good overlap was noticed between the predicted and confirnation intervals for each QCH. The Hotelling T2 and the sample generalized variance control charts were finally utilized in controlling and monitoring future production. In conclusion, the grey relational analysis utilizing Taguchi method is an effective approach for optimizing the die life and wire tensile strength for SUS wire drawing process. 2008 University of Science and Technology Beijing. All rights reserved.
In the stainless steel 304 (SUS 304) wire drawing process, optimizing the die life and wire tensile strength, which are the larger-the-better quality characteristics (QCH) types, is of main interest. Three control factors, involving reduction ratio, lubricant temperature, and drawing speed, were investigated utilizing L9(34) orthogonal array (OA). The grey relational analysis was conducted for the normalized signal-to-noise (S/N) ratios. The ordinal value of the grey grade was then used to decide optimal factor levels. The anticipated improvements in die life and wire tensile strength were estimated 25.31 h and 22.50 kg/mm2, respectively. To decide the significant factor which had effect on each QCH and predict the average value of each QCH, analysis of variance (ANOVA) was performed for S/N ratio and QCH. Confirmation experiments were then conducted, where a good overlap was noticed between the predicted and confirnation intervals for each QCH. The Hotelling T2 and the sample generalized variance control charts were finally utilized in controlling and monitoring future production. In conclusion, the grey relational analysis utilizing Taguchi method is an effective approach for optimizing the die life and wire tensile strength for SUS wire drawing process. 2008 University of Science and Technology Beijing. All rights reserved.