Applying the superior identification group linguistic variable to construct kano model oriented quality function deployment

    Shih-Yuan Wang Info

Abstract

This study attempts to manipulate 2-tuple linguistic variables rather than pure linguistic variables in quality function deployment (QFD) in order to significantly improve the identification of the QFD model. The Kano model, a two-dimensional quality technique, is also integrated to recognize the degree of urgency in terms of enhancing and prioritizing quality-related requirements of customers via a fuzzy linguistic quantifier with a soft majority concept to fit the optimal aggregation weights. This study also retains the goodness on the usage of multi-granularity linguistic approach to facilitate the implementation of a group decision. Simultaneously, two-dimensional analysis is performed to explain the results synthetically between relationship matrix and correlation matrix from a management perspective, capable of providing comprehensive information for the decision process. Owing to the integration of several quality and management methods, results of this study demonstrate the capability of TRIZ.

Keywords:

quality function deployment, linguistic variable, Kano model, group decision, fuzzy linguistic quantifier, linguistic aggregation operator

How to Cite

Wang, S.-Y. (2014). Applying the superior identification group linguistic variable to construct kano model oriented quality function deployment. Technological and Economic Development of Economy, 19(1), S304-S325. https://doi.org/10.3846/20294913.2013.880082

Share

Published in Issue
January 28, 2014
Abstract Views
819

View article in other formats

CrossMark check

CrossMark logo

Published

2014-01-28

Issue

Section

Articles

How to Cite

Wang, S.-Y. (2014). Applying the superior identification group linguistic variable to construct kano model oriented quality function deployment. Technological and Economic Development of Economy, 19(1), S304-S325. https://doi.org/10.3846/20294913.2013.880082

Share