THREE ULTIMATE RANKING VALUES AREN’T OUTGOING INTO ONE APIECE INTEGER FOR ULTIMATE RANKING METHOD WHICH IS USED QUALITY FUNCTION DEPLOYMENT IS ANALYSED WITH TOPSIS METHOD
Abstract
The aim of this study is provided to make ranking values which aren’t outgoing into one apiece integer by using Ultimate Ranking Method that find meaning in Quality Function Deployment (QFD), analyse by TOPSIS method. For this; is examined the obtained datum which at the result of Quality Function Deployment study that is applied in a company at first and thereafter is provided evaluating the applied results of Ultimate Ranking Method in regard to TOPSIS method. When this evaluate is performed, Microsoft Excel is used a tool and totally three relative closeness values are separately calculated for three ranking types (Pre-AHP Ranking, Post-AHP Ranking, The Ranking According to the Average of Percentage Importances at Pre-AHP and Post-AHP) subject to Ultimate Ranking Method. Persuant to this relative closeness values; is determined which ranking type is with which priority taken into consideration and related analyse is revealed in this manner.
Keywords
Central Cabin Door,Quality Function Deployment,Ultimate Ranking Method,TOPSIS Method
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