Development of efficient genetic algorithm for open shop scheduling problem to minimise makespan

Ellur Anand, R. Panneerselvam
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引用次数: 2

Abstract

Scheduling problem deals with the management of the resources in most optimal manner. In this research, open shop scheduling problem with an objective of minimising the makespan is considered. This problem comes under combinatorial category. Hence, development of an efficient heuristic is inevitable to minimise the makespan of the open shop scheduling problem. Meta-heuristic genetic algorithm (GA) is considered as it has the scope of improving performance measure of the problem. The performance of the genetic algorithm is influenced by selection method, crossover operator and mutation probability. Four different genetic algorithms are developed by varying selection method and crossover operator where three of this algorithm use newly proposed crossover operator while the fourth uses existing one-point crossover operator. A complete factorial experiment with three factors and three replications for each experimental combination is carried out on a set of problem instances with all the four genetic algorithm methods.
基于最小完工时间的开放式车间调度问题遗传算法研究
调度问题是指以最优的方式对资源进行管理。本文研究了以最大完工时间最小化为目标的开放式车间调度问题。这个问题属于组合范畴。因此,开发一种有效的启发式算法来最小化开放式车间调度问题的最大完工时间是必然的。元启发式遗传算法(GA)具有改进问题性能度量的范围,因此被认为是一种有效的方法。遗传算法的性能受选择方法、交叉算子和变异概率的影响。采用不同的选择方法和交叉算子,提出了四种不同的遗传算法,其中三种算法使用新提出的交叉算子,第四种算法使用现有的一点交叉算子。采用这四种遗传算法方法对一组问题实例进行了三因素三重复的全因子实验。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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