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Original scientific paper

Fuzzy Linguistic Optimization on Multi-Attribute Machining

Tian-Syung Lan ; Department of Information Management, Yu Da University; Taiwan, Province of China
Chen-Feng Wu ; Department of Information Management, Yu Da University; Taiwan, Province of China
Ming-Yung Wang ; Graduate Institute of Engineering Management, Tatung University; Taiwan, Province of China
Chih-Yao Lo ; Department of Information Management, Yu Da University; Taiwan, Province of China

Fulltext: english, pdf (1 MB) pages 101-116 downloads: 517* cite
APA 6th Edition
Lan, T., Wu, C., Wang, M. & Lo, C. (2010). Fuzzy Linguistic Optimization on Multi-Attribute Machining. Journal of Information and Organizational Sciences, 34 (1), 101-116. Retrieved from https://hrcak.srce.hr/55161
MLA 8th Edition
Lan, Tian-Syung, et al. "Fuzzy Linguistic Optimization on Multi-Attribute Machining." Journal of Information and Organizational Sciences, vol. 34, no. 1, 2010, pp. 101-116. https://hrcak.srce.hr/55161. Accessed 22 Sep. 2019.
Chicago 17th Edition
Lan, Tian-Syung, Chen-Feng Wu, Ming-Yung Wang and Chih-Yao Lo. "Fuzzy Linguistic Optimization on Multi-Attribute Machining." Journal of Information and Organizational Sciences 34, no. 1 (2010): 101-116. https://hrcak.srce.hr/55161
Harvard
Lan, T., et al. (2010). 'Fuzzy Linguistic Optimization on Multi-Attribute Machining', Journal of Information and Organizational Sciences, 34(1), pp. 101-116. Available at: https://hrcak.srce.hr/55161 (Accessed 22 September 2019)
Vancouver
Lan T, Wu C, Wang M, Lo C. Fuzzy Linguistic Optimization on Multi-Attribute Machining. Journal of Information and Organizational Sciences [Internet]. 2010 [cited 2019 September 22];34(1):101-116. Available from: https://hrcak.srce.hr/55161
IEEE
T. Lan, C. Wu, M. Wang and C. Lo, "Fuzzy Linguistic Optimization on Multi-Attribute Machining", Journal of Information and Organizational Sciences, vol.34, no. 1, pp. 101-116, 2010. [Online]. Available: https://hrcak.srce.hr/55161. [Accessed: 22 September 2019]

Abstracts
Most existing multi-attribute optimization researches for the modern CNC (computer numerical control) turning industry were either accomplished within certain manufacturing circumstances, or achieved through numerous equipment operations. Therefore, a general deduction optimization scheme proposed is deemed to be necessary for the industry. In this paper, four parameters (cutting depth, feed rate, speed, tool nose runoff) with three levels (low, medium, high) are considered to optimize the multi-attribute (surface roughness, tool wear, and material removal rate) finish turning. Through FAHP (Fuzzy Analytic Hierarchy Process) with eighty intervals for each attribute, the weight of each attribute is evaluated from the paired comparison matrix constructed by the expert judgment. Additionally, twenty-seven fuzzy control rules using trapezoid membership function with respective to seventeen linguistic grades for each attribute are constructed. Considering thirty input and eighty output intervals, the defuzzifierion using center of gravity is thus completed. The TOPSIS (Technique for Order Preference by Similarity to Ideal Solution) is moreover utilized to integrate and evaluate the multiple machining attributes for the Taguchi experiment, and thus the optimum general deduction parameters can then be received. The confirmation experiment for optimum general deduction parameters is furthermore performed on an ECOCA-3807 CNC lathe. It is shown that the attributes from the fuzzy linguistic optimization parameters are all significantly advanced comparing to those from benchmark. This paper not only proposes a general deduction optimization scheme using orthogonal array, but also contributes the satisfactory fuzzy linguistic approach for multiple CNC turning attributes with profound insight.

Keywords
computer numerical control; orthogonal array; fuzzy deduction; Technique for Order Preference by Similarity to Ideal Solution

Hrčak ID: 55161

URI
https://hrcak.srce.hr/55161

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