逆向生产调度的蚁群优化

Leandro Pereira dos Santos, G. E. Vieira, H. V. D. R. Leite, M. T. Steiner
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引用次数: 8

摘要

生产调度系统的主要目标是将任务(订单或工作)分配给资源,并尽可能高效和经济地(优化)对其进行排序。在能力通常有限的复杂环境中,实现这一目标是一项艰巨的任务。在这些场景中,找到最优解决方案(如果可能的话)需要大量的计算机时间。由于这个原因,在许多情况下,最好是快速找到好的解决方案。在这种情况下,使用元启发式是一种合适的策略。在过去的二十年里,一些现成的系统已经使用这种技术开发出来。本文提出并分析了在单阶段加工、资源并行、路径灵活的制造场景下,利用蚁群优化算法求解逆向调度问题的车间调度系统开发。这个场景是在一个大型食品行业发现的,通讯作者在那里做了一年多的顾问。这项工作证明了这种人工智能技术的适用性。事实上,蚁群算法与分支绑定算法一样高效,但执行速度要快得多。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Ant Colony Optimisation for Backward Production Scheduling
The main objective of a production scheduling system is to assign tasks (orders or jobs) to resources and sequence them as efficiently and economically (optimised) as possible. Achieving this goal is a difficult task in complex environment where capacity is usually limited. In these scenarios, finding an optimal solution—if possible—demands a large amount of computer time. For this reason, in many cases, a good solution that is quickly found is preferred. In such situations, the use of metaheuristics is an appropriate strategy. In these last two decades, some out-of-the-shelf systems have been developed using such techniques. This paper presents and analyses the development of a shop-floor scheduling system that uses ant colony optimisation (ACO) in a backward scheduling problem in a manufacturing scenario with single-stage processing, parallel resources, and flexible routings. This scenario was found in a large food industry where the corresponding author worked as consultant for more than a year. This work demonstrates the applicability of this artificial intelligence technique. In fact, ACO proved to be as efficient as branch-and-bound, however, executing much faster.
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