Process capability analyses with fuzzy parameters

Process capability indices (PCIs) can be viewed as the effective and excellent means of measuring product quality and process performance. They are very useful statistical analysis tools to summarize process dispersion and location by using process capability analysis (PCA). However, there are some limitations which prevent a deep and flexible analysis because of the crisp definition of PCA's parameters. In this paper, the fuzzy set theory is used to add more information and flexibility to PCA. For this aim, fuzzy process mean, @m@? and fuzzy variance, @s@?^2, which are obtained by using the fuzzy extension principle, are used. Then fuzzy specification limits (SLs) are used together with @m@? and @s@?^2 to produce fuzzy PCIs (FPCIs). The fuzzy formulations of the indices C"p, C"p"k, C"a, C"p"m, and C"p"m"k which are the most used traditional PCIs, are developed and a numerical example for each from an automotive company is given. The results show that fuzzy estimations of PCIs have much more treasure to evaluate the process performance when it is compared with the crisp case.

[1]  Cengiz Kahraman,et al.  Fuzzy robust process capability indices for risk assessment of air pollution , 2009 .

[2]  Chien-Wei Wu,et al.  Decision-making in testing process performance with fuzzy data , 2009, Eur. J. Oper. Res..

[3]  Jong-Yih Lin,et al.  Selecting a supplier by fuzzy evaluation of capability indices Cpm , 2003 .

[4]  Cengiz Kahraman,et al.  Fuzzy process capability analyses: An application to teaching processes , 2008, J. Intell. Fuzzy Syst..

[5]  Cengiz Kahraman,et al.  Development of fuzzy process accuracy index for decision making problems , 2010, Inf. Sci..

[6]  Hong Tau Lee,et al.  Cpk index estimation using fuzzy numbers , 2001, Eur. J. Oper. Res..

[7]  İhsan Kaya,et al.  A genetic algorithm approach to determine the sample size for control charts with variables and attributes , 2009, Expert Syst. Appl..

[8]  N. L. Johnson,et al.  Distributional and Inferential Properties of Process Capability Indices , 1992 .

[9]  James J. Buckley,et al.  Simulating Fuzzy Systems , 2005, Studies in Fuzziness and Soft Computing.

[10]  Chang-Chun Tsai,et al.  Making decision to evaluate process capability index Cp with fuzzy numbers , 2006 .

[11]  C. Kahraman,et al.  Fuzzy process capability indices for quality control of irrigation water , 2009 .

[12]  Chiu-Chi Wei,et al.  Fuzzy Design of Process Tolerances to Maximise Process Capability , 1999 .

[13]  Samuel Kotz,et al.  An overview of theory and practice on process capability indices for quality assurance , 2009 .

[14]  Wen Lea Pearn,et al.  Distributional and inferential properties of the process accuracy and process precision indices , 1998 .

[15]  Cengiz Kahraman,et al.  Fuzzy Multi-Criteria Decision Making , 2008 .

[16]  Douglas C. Montgomery,et al.  Introduction to Statistical Quality Control , 1986 .

[17]  Jong-Yih Lin,et al.  Fuzzy Evaluation of Process Capability for Bigger-the-Best Type Products , 2003 .

[18]  Kuen-Suan Chen,et al.  Multi-process capability plot and fuzzy inference evaluation , 2008 .

[19]  C. Kahraman Multi-Criteria Decision Making Methods and Fuzzy Sets , 2008 .

[20]  Esfandiar Eslami,et al.  Uncertain probabilities II: the continuous case , 2004, Soft Comput..

[21]  Lucien Duckstein,et al.  Comparison of fuzzy numbers using a fuzzy distance measure , 2002, Fuzzy Sets Syst..

[22]  J. Buckley Fuzzy Probability and Statistics , 2006 .

[23]  Y. Cen,et al.  Fuzzy quality and analysis on fuzzy probability , 1996 .

[24]  Ihsan Kaya,et al.  A genetic algorithm approach to determine the sample size for attribute control charts , 2009, Inf. Sci..

[25]  Samuel Kotz,et al.  Process Capability Indices—A Review, 1992–2000 , 2002 .

[26]  İhsan Kaya,et al.  A new approach to define sample size at attributes control chart in multistage processes: An application in engine piston manufacturing process , 2007 .

[27]  Cengiz Kahraman,et al.  Fuzzy process capability analyses with fuzzy normal distribution , 2010, Expert Syst. Appl..

[28]  Lotfi A. Zadeh,et al.  Fuzzy Sets , 1996, Inf. Control..

[29]  Cengiz Kahraman,et al.  A new perspective on fuzzy process capability indices: Robustness , 2010, Expert Syst. Appl..

[30]  Cengiz Kahraman,et al.  Fuzzy Process Accuracy Index to Evaluate Risk Assessment of Drought Effects in Turkey , 2009 .

[31]  Abbas Parchami,et al.  Fuzzy confidence interval for fuzzy process capability index , 2006, J. Intell. Fuzzy Syst..

[32]  Cengiz Kahraman,et al.  Air Pollution Control Using Fuzzy Process Capability Indices in the Six-Sigma Approach , 2009 .

[33]  Victor E. Kane,et al.  Process Capability Indices , 1986 .

[34]  Fred A. Spiring,et al.  Adjusted action limits for Cpm based on departures from normality , 2007 .

[35]  Ming-Hung Shu,et al.  Fuzzy inference to assess manufacturing process capability with imprecise data , 2008, Eur. J. Oper. Res..

[36]  Ahmet Çelik,et al.  A fuzzy approach to define sample size for attributes control chart in multistage processes: An application in engine valve manufacturing process , 2008, Appl. Soft Comput..

[37]  Abbas Parchami,et al.  Fuzzy estimation for process capability indices , 2007, Inf. Sci..