A Job Shop Scheduling Method Based on Ant Colony Algorithm

Junqing Li, Huawei Deng, Dawei Liu, Changqing Song, Ruiyi Han, Taiyuan Hu
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Abstract

The problem of job shop scheduling is a hot research topic nowadays. How to improve the production efficiency of the equipment and shorten the processing time of the workpieces has become an important research work. The parallelism and mechanism of distributed computing of Ant colony optimization (ACO) provide a good solution in solving job shop scheduling problems. In this paper, the ACO is applied to the job shop scheduling of industrial production. And the ACO is used to solve the scheduling problem, the pheromone update strategy in the ant colony algorithm has been modified, and roulettes wheel was introduced. On the basis of above modifications, a job shop scheduling method based on ant colony algorithm has been used in this paper. In addition, the disjunction graph model of the job shop problem has been also established in this paper, which turned the job shop scheduling problem into a solution to the traveling salesman problem and then redefined as a natural expression model suitable for ant colony algorithm. When solving the traveling salesman problem, virtual nodes were added as the super source and destination in the search process, the distance between cities and the shortest path in the traveling salesman were corresponded with the processing time and the shortest processing time in the job shop scheduling problem one by one. In this paper, C++ has been used for programming, and the FT06 data example was used as a test example. In the experiment, the scheme of job scheduling with minimum total completion time was obtained successfully, which verified the feasibility and effectiveness of this method in the shop scheduling problem.
基于蚁群算法的作业车间调度方法
作业车间调度问题是当前的研究热点。如何提高设备的生产效率,缩短工件的加工时间已成为一项重要的研究工作。蚁群优化算法的并行性和分布式计算机制为解决作业车间调度问题提供了一个很好的解决方案。本文将蚁群算法应用于工业生产作业车间调度中。采用蚁群算法求解调度问题,对蚁群算法中的信息素更新策略进行了改进,并引入了轮盘。在此基础上,本文提出了一种基于蚁群算法的作业车间调度方法。此外,本文还建立了作业车间问题的析取图模型,将作业车间调度问题转化为旅行商问题的解,并将其重新定义为适合蚁群算法的自然表达模型。在求解旅行商问题时,在搜索过程中加入虚拟节点作为超源和超目的地,将旅行商中城市间距离和最短路径分别对应于作业车间调度问题的加工时间和最短加工时间。本文采用c++进行编程,并以FT06数据为例进行测试。在实验中,成功地获得了总完成时间最小的作业调度方案,验证了该方法在车间调度问题中的可行性和有效性。
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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