柔性作业车间机械与agv联合调度的一种有效混合算法

Xiaoyu Wen, Yunzhan Fu, Wenchao Yang, Haoqi Wang, Yuyan Zhang, Chunya Sun
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引用次数: 2

摘要

由小批量和多订单驱动的灵活作业车间需要机器和自动导引车(agv)调度的协作,以提高车间的灵活性和生产力。机器和agv的联合调度可以更好地实现全局优化。然而,联合调度需要同时解决两个NP困难问题。因此,本文采用了一种有效的混合算法来解决多agv柔性作业车间调度问题。首先,以最大完工时间、AGV总运行时间和机器总负载最小为目标建立模型;为了解决MA-FJSP问题,设计了高质量的初始化方法和改进的精英策略,以提高算法的全局收敛性。此外,还集成了基于问题知识的邻域搜索,提高了邻域搜索的挖掘能力。最后进行了一系列对比实验研究,验证了改进算法的有效性。结果表明,该算法在收敛性、多样性和分布性方面都有较好的表现。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An effective hybrid algorithm for joint scheduling of machines and AGVs in flexible job shop
Flexible job shops motivated by small batches and multiple orders require the collaboration of machines and automated guided vehicles (AGVs) scheduling to boost shop floor flexibility and productivity. The joint scheduling of machines and AGVs can better achieve global optimization. However, joint scheduling requires two NP hard problems to be solved simultaneously. Therefore, this paper employs a multi-AGV flexible job shop scheduling problem (MA-FJSP) with an effective hybrid algorithm. First of all, a model is established with the objectives of minimizing the makespan, the total AGV running time and the total machine load. To solve the MA-FJSP, high-quality initialization methods and improved elite strategies are designed to improve global convergence in the proposed algorithm. In addition, a problem-knowledge-based neighborhood search is integrated to improve its exploitation capability. At last, a series of comparative experimental studies were performed to exam the effectiveness of the improved algorithm. The results demonstrate that the solutions gained by the proposed algorithm perform well in respect of convergence, diversity and distribution.
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