Design and implementation of a fuzzy inference system for supporting customer requirements

Efficient and effective response to the requirements of customers is a major performance indicator. Failure to satisfy customer requirements implies operational weaknesses in a company. These weaknesses will damage both the rights of customers and the reputation of the company. The traditional method of handling customer requirement for a machine tool manufacturer was dominated by manual process and subjective decision. In this study, we improved the operation process of handling customer requirement. The framework of a customer requirement information system (CRIS) for machine tool manufacturers was then analyzed, integrating rule-based fuzzy inference and expert systems, and a prototype system developed. The CRIS supports both customers and service personnel in providing a systematic way of fulfilling and analyzing customer requirements. The system was installed and operated in a machine tool manufacturer and the performance was found promising.

[1]  Gary W. Loveman,et al.  Putting the Service-Profit Chain to Work , 1994 .

[2]  C. Boshoff An experimental study of service recovery options , 1997 .

[3]  R. C. Berkan,et al.  Fuzzy systems design principles - building fuzzy IF-THEN rule bases , 1997 .

[4]  X. D. Fang Expert system-supported fuzzy diagnosis of finish-turning process states , 1995 .

[5]  Takashi Kobayashi,et al.  Machine's Fault Diagnosis System Using Neural Networks , 1997 .

[6]  Hans-Jürgen Zimmermann,et al.  Fuzzy Set Theory - and Its Applications , 1985 .

[7]  Hans-Jürgen Zimmermann,et al.  Automatic fault detection in gearboxes by dynamic fuzzy data analysis , 1999, Fuzzy Sets Syst..

[8]  Ravi Kalakota,et al.  e-Business: Roadmap for Success , 1999 .

[9]  Guanrong Chen,et al.  Introduction to Fuzzy Sets, Fuzzy Logic, and Fuzzy Control Systems , 2000 .

[10]  Etienne E. Kerre,et al.  Fuzzy If-Then Rules in Computational Intelligence , 2000 .

[11]  Lotfi A. Zadeh,et al.  The Concepts of a Linguistic Variable and its Application to Approximate Reasoning , 1975 .

[12]  Gerald M. Knapp,et al.  A fuzzy neural network approach to machine condition monitoring , 2003, Comput. Ind. Eng..

[13]  Surya B. Yadav,et al.  A methodology to model the dynamic structure of an organization , 1985, Inf. Syst..

[14]  Douglas T. Ross,et al.  Applications and Extensions of SADT , 1985, Computer.

[15]  W. Sasser,et al.  The profitable art of service recovery. , 1990, Harvard business review.

[16]  Shih-Yaug Liu,et al.  Development of a machine troubleshooting expert system via fuzzy multiattribute decision-making approach , 1995 .