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Six sigma-based approach to optimize deep drawing operation variables
Authors:Raj Bardhan Anand  Sanjay Kumar Shukla  Amol Ghorpade  Ravi Shankar
Affiliation:1. Department of Mechanical, Industrial and Nuclear Engineering , Computer Aided Manufacturing Laboratory , University of Cincinnati, OH 45221-0072, USA;2. Department of Manufacturing Engineering , National Institute of Foundry and Forge Technology , Ranchi, 834003, India;3. Department of Management Studies , Indian Institute of Technology , Hauz Khas, New Delhi, 110016, India
Abstract:The six sigma approach has been increasingly adopted worldwide in the manufacturing sector in order to enhance the productivity and quality performance and to make the process robust to quality variations. This paper deals with one such application of six sigma methodology to improve the yield of deep drawing operations. The deep drawing operation has found extensive application in producing automotive components and many household items. The main issue of concern of the deep drawn products involves different critical process parameters and governing responses, which influences the yield of the operation. The effects of these parameters are analysed by the DMAIC (Define, Measurement, Analyse, Improve, Control)-based six sigma approach. A multiple response optimization model is formulated using the fuzzy-rule-based system. The functional relationship between the process variables and the responses is established, and thereafter their optimum setting is explored with the aid of response surface methodology (RSM). Rigorous experimentations have been carried out, and it is observed that the process capability of processes is enhanced significantly, after the successful deployment of the six sigma methodology.
Keywords:Deep drawing  Six sigma  DMAIC  ANOVA  RSM
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