Title of article :
Mining Pareto-optimal modules for delayed product differentiation
Author/Authors :
Yi-Zhe Song، نويسنده , , Andrew Kusiak، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2010
Abstract :
This paper presents a framework for finding optimal modules in a delayed product differentiation scenario. Historical product sales data is utilized to estimate demand probability and customer preferences. Then this information is used by a multiple-objective optimization model to form modules. An evolutionary computation approach is applied to solve the optimization model and find the Pareto-optimal solutions. An industrial case study illustrates the ideas presented in the paper. The mean number of assembly operations and expected pre-assembly costs are the two competing objectives that are optimized in the case study. The mean number of assembly operations can be significantly reduced while incurring relatively small increases in the expected pre-assembly cost.
Keywords :
mass customization , Evolutionary computations , Data mining , Modularity , Delayed product differentiation , Multi-objective optimization
Journal title :
European Journal of Operational Research
Journal title :
European Journal of Operational Research