Title of article :
A hybrid approach for supplier cluster analysis
Author/Authors :
Z.H. Che، نويسنده , , H.S. Wang، نويسنده ,
Issue Information :
دوهفته نامه با شماره پیاپی سال 2010
Abstract :
To differentiate part suppliers effectively, this study proposed a hybrid approach based
on K-means, simulated annealing algorithm (SA), convergence factor particle swarm
optimization (CPSO), and the Taguchi method abbreviated as KSACPSO. After all parts
suppliers are confirmed by the bill of material (BOM), supplier cluster analysis was
conducted on characteristics of customersʹ demands, including product cost, product
quality, and procurement time using the proposed approach. To prove the KSACPSO
approach has good clustering performance, the case study of a notebook computer was
adopted to carry out the clustering procedures on parts suppliers, and compare the
differences between the proposed approach and other hybrid methods. The execution
results were analyzed to prove that the efficiency of the suggested KSACPSO approach
is superior to K-means, K-means simulated annealing (KSA), K-means genetic algorithm
(KGA), K-means genetic simulated annealing (KGSA), and K-means convergence factor
particle swarm optimization (KCPSO).
Keywords :
kk-means , cluster analysis , Taguchi method , Simulated anneal algorithm , Particle swarm optimization
Journal title :
Computers and Mathematics with Applications
Journal title :
Computers and Mathematics with Applications