多准则单机调度问题的局部搜索算法

T. Abdul-Razaq, Abeer O. Akram
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引用次数: 4

摘要

现实生活中的调度问题要求决策者在做出任何决定之前考虑许多标准。本文考虑单机上n个作业的多准则调度问题,以最小化由总完成时间(∑)、总延迟(∑)、总提前(∑)、最大延迟()和最大提前()五个准则组成的函数。单机总迟到问题和总提前问题已经是np困难问题,因此所考虑的问题是强np困难问题。针对1//(∑∑∑)问题(SP),我们应用了两种局部搜索算法(LSAs)下降法(DM)和模拟退火法(SM)来寻找近最优解。局部搜索方法用于加速找到足够好的解的过程,而穷举搜索对于精确解是不切实际的。将两种启发式算法(DM和SM)与分支定界(BAB)算法进行比较,以评价两种方法的有效性。一些实验结果表明了(BAB)算法和(lsa)的适用性。在合理的时间内,lsa可以解决多达5000个作业的问题。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Local Search Algorithms for Multi-criteria Single Machine Scheduling Problem
Real life scheduling problems require the decision maker to consider a number of criteria before arriving at any decision. In this paper, we consider the multi-criteria scheduling problem of n jobs on single machine to minimize a function of five criteria denoted by total completion times (∑), total tardiness (∑), total earliness (∑), maximum tardiness () and maximum earliness (). The single machine total tardiness problem and total earliness problem are already NP-hard, so the considered problem is strongly NP-hard. We apply two local search algorithms (LSAs) descent method (DM) and simulated annealing method (SM) for the 1// (∑∑∑) problem (SP) to find near optimal solutions. The local search methods are used to speed up the process of finding a good enough solution, where an exhaustive search is impractical for the exact solution. The two heuristic (DM and SM) were compared with the branch and bound (BAB) algorithm in order to evaluate effectiveness of the solution methods.             Some experimental results are presented to show the applicability of the (BAB) algorithm and (LSAs). With a reasonable time, (LSAs) may solve the problem (SP) up to 5000 jobs.
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