Title :
Clustering variables selection in Mass Customized scenarios affected by workers´ learning
Author :
Anzanello, M.J. ; Fogliatto, F.S.
Author_Institution :
Fed. Univ. of Rio Grande do Sul, Porto Alegre, Brazil
Abstract :
In Mass Customized applications, clustering procedures enable grouping product models with similar processing needs into families, increasing the efficiency of production programming and resources allocation. The performance of such procedures is highly dependent on the proper choice of clustering variables. This paper proposes a method to select clustering variables aimed at grouping customized product models into families. Two groups of clustering variables are considered: those generated by expert assessment on product features, and those representing workers´ learning rate, obtained through learning curve modeling. The method integrates the “leave one variable out at a time” elimination procedure with a k-means clustering technique. When applied to a shoe manufacturing process, the proposed method significantly reduced the number of variables required for clustering, while increasing the grouping quality measured through the Silhouette Index.
Keywords :
footwear industry; manufacturing industries; mass production; pattern clustering; product customisation; resource allocation; Silhouette index; elimination procedure; grouping product models; k-means clustering technique; learning curve modeling; mass customized applications; product customization; production programming; resource allocation; shoe manufacturing process; variable selection clustering; worker learning; Adaptation models; Complexity theory; Data models; Footwear; Mathematical model; Production; Silicon; Learning curves; clustering; mass customization;
Conference_Titel :
Industrial Engineering and Engineering Management (IEEM), 2011 IEEE International Conference on
Conference_Location :
Singapore
Print_ISBN :
978-1-4577-0740-7
Electronic_ISBN :
2157-3611
DOI :
10.1109/IEEM.2011.6117932