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A CEGA-Based Optimization Approach for Integrated Designing of a Unidirectional Guide-Path Network and Scheduling of AGVs

机译:基于CEGA的AGV单向导轨网络与调度一体化设计优化方法

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摘要

In the current industrial fields, automatic guided vehicles (AGVs) are widely employed to constitute the flexible manufacturing system (FMS), owing to their great advantages of routing flexibility and high efficiency. However, one main challenge lies in the coupling process of the design problem of the unidirectional guide-path network (UGN) and the task scheduling problem of AGVs. To reduce the complexity, most pertinent literatures only handle these problems one by one, based on the stepwise design methods, thereby neglecting the constraint conditions and the optimization objectives caused by the FMS environment. The motivation of the paper is to bring the coupling factors into the integrated design and solution process. Firstly, an integrated design model of designing UGN and scheduling AGVs simultaneously is proposed, with the objective of minimizing the makespan (i.e., the maximum completion time of all handling tasks), in the consideration of the practical constraints, e.g., the job handling and processing sequence constraints and the AGV number constraint. Secondly, a dual-population collaborative evolutionary genetic algorithm (CEGA) is developed to solve the problems of designing and scheduling in a parallel way. The solutions of the integrated model, i.e., the potential strongly connected UGN and the feasible processing and handling sequence, are, respectively, coded as two different subpopulations with independent and concurrent evolution processes. The neighbourhood search operation, the niche technique, and the elitism strategy are combined to improve the convergence speed and maintain the population diversity. The experimental results show that the integrated design model can formulate the problem more accurately, and the CEGA algorithm is computationally efficient with high solution quality.
机译:在当前的工业领域中,自动导引车(AGV)因其具有布线灵活性和高效率的巨大优势而被广泛用于构成柔性制造系统(FMS)。然而,单向导轨网络(UGN)的设计问题与AGV的任务调度问题的耦合过程是一个主要的挑战。为了降低复杂度,大多数相关文献仅基于逐步设计方法对这些问题进行逐一处理,从而忽略了FMS环境带来的约束条件和优化目标。本文的动机是将耦合因素引入集成设计和求解过程。首先,在考虑作业搬运和加工顺序约束、AGV数量约束等实际约束条件下,提出一种同时设计UGN和调度AGV的一体化设计模型,以最小化makespan(即所有搬运任务的最长完成时间)为目标。其次,发展了一种双群体协同进化遗传算法(CEGA),以解决设计和调度并行的问题;将积分模型的解,即潜在的强连接UGN和可行的处理处理序列,分别编码为两个不同的亚群,具有独立和并发的进化过程。将邻域搜索操作、生态位技术和精英主义策略相结合,提高收敛速度,保持种群多样性。实验结果表明,集成设计模型能够更准确地表述问题,CEGA算法计算效率高,求解质量高。

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