Genetic Algorithm and Particle Swarm Optimization Techniques for Solving Multi-Objectives on Single Machine Scheduling Problem

Alaa Sabah Hameed, H. Chachan
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Abstract

In this paper, two of the local search algorithms are used (genetic algorithm and particle swarm optimization), in scheduling number of products (n jobs) on a single machine to minimize a multi-objective function which is denoted as  (total completion time, total tardiness, total earliness and the total late work). A branch and bound (BAB) method is used for comparing the results for (n) jobs starting from (5-18). The results show that the two algorithms have found the optimal and near optimal solutions in an appropriate times.
求解单机多目标调度问题的遗传算法和粒子群优化技术
本文采用遗传算法和粒子群算法两种局部搜索算法,对单个机器上的产品(n个作业)进行调度,以最小化一个多目标函数,该函数表示为(总完工时间、总迟到时间、总提前时间和总迟到时间)。分支定界(BAB)方法用于比较从(5-18)开始的(n)个作业的结果。结果表明,两种算法都能在适当的时间内找到最优解和近最优解。
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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