Title of article
Genetic algorithms to solve the cover printing problem
Author/Authors
Samya Elaoud، نويسنده , , Jacques Teghem، نويسنده , , Bassem Bouaziz، نويسنده ,
Issue Information
ماهنامه با شماره پیاپی سال 2007
Pages
16
From page
3346
To page
3361
Abstract
Inspired by successful application of evolutionary algorithms to solving difficult optimization problems, we explore in this paper, the applicability of genetic algorithms (GAs) to the cover printing problem, which consists in the grouping of book covers on offset plates in order to minimize the total production cost. We combine GAs with a linear programming solver and we propose some innovative features such as the “unfixed two-point crossover operator” and the “binary stochastic sampling with replacement” for selection. Two approaches are proposed: an adapted genetic algorithm and a multiobjective genetic algorithm using the Pareto fitness genetic algorithm. The resulting solutions are compared. Some computational experiments have also been done to analyze the effects of different genetic operators on both algorithms.
Keywords
Mixed integer programming , Multiobjective optimization , Genetic algorithms
Journal title
Computers and Operations Research
Serial Year
2007
Journal title
Computers and Operations Research
Record number
928534
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