Efficient nondominated sorting with genetic algorithm for solving multi-objective job shop scheduling problems

Abdalla Ali, P. Hackney, M. Birkett, David Bell
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引用次数: 3

Abstract

In this paper a combination of Genetic Algorithm (GA) and a modified version of a very recent and computationally efficient approach to non-dominated sort called Efficient Non-dominated Sorting (ENS) has been introduced to solve the Multi-Objective Job Shop Scheduling Problem (MO-JSSP). Genetic algorithm was used to lead the search towards the Pareto optimality whilst an Efficient Non-dominated Sorting using a Sequential Strategy (ENS-SS) has been employed to determine the front to which each solution belongs, but instead of starting with the first front, the proposed algorithm starts the comparison with the last created front so far, and this is termed as a Backward Pass Sequential Strategy (BPSS). Efficient Non-dominated Sorting using the Backward Pass Sequential Strategy (ENS-BPSS) can reduce the number of comparisons needed for N solutions with M objectives when there are fronts and there exists only one solution in each front to O(M(N -1)). Computational results validate the effectiveness of the proposed algorithm.
基于遗传算法的高效非支配排序求解多目标作业车间调度问题
本文将遗传算法(GA)和一种改进的、计算效率高的非支配排序方法——高效非支配排序(ENS)相结合,用于解决多目标作业车间调度问题(MO-JSSP)。遗传算法用于将搜索引向帕累托最优,而使用顺序策略(ENS-SS)的高效非主导排序已被用于确定每个解决方案所属的前沿,但不是从第一个前沿开始,所提出的算法开始与迄今为止创建的最后一个前沿进行比较,这被称为向后传递顺序策略(BPSS)。使用反向传递顺序策略(ENS-BPSS)的高效非支配排序可以将N个解决方案与M个目标的比较次数减少到0 (M(N -1))。计算结果验证了该算法的有效性。
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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