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Multi-objective hybrid algorithms for layout optimization in multi-robot cellular manufacturing systems

机译:用于多机器人蜂窝制造系统中布局优化的多目标混合算法

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Hybrid evolutionary algorithms to optimize layouts for multi-robot cellular manufacturing systems, which includes cooperative tasks among the robots is proposed in this paper. Layout area, operation time and manipulability of robot are the three design criteria useful to evaluate the robotic assembly systems are presented. Layout design candidates are represented using a sequence-pair scheme to prevent interferences between assembly system components, and the introduction of dummy components is proposed to represent layout areas where components are sparse. The main objective of this paper is to propose and evaluate hybrid algorithms by hybridizing them with genetic algorithm, which has been in use for decades. Differential evolution (DE), artificial bee colony (ABC), charged system search (CSS) and particle swarm optimization (PSO) are hybridized with genetic algorithm to have four hybrid (GA+DE, GA+ABC, GA+CSS and GA+PSO) algorithms. The performances of these algorithms are tested with genetic algorithm reported in the literature. The concept of non-dominated sorting genetic algorithm (NSGA-II) is borrowed to handle multiple objectives and to obtain Pareto solutions for the problems considered. These hybrid algorithms are evaluated using an example design problem of multi-robotic assembly system, and the effectiveness of these algorithms are presented in this paper. It is found that GA+PSO performs better over other hybrid algorithms considered. The application of the proposed algorithms are tested using Mitsubishi RV-6SQ robot configuration. (C) 2017 Elsevier B.V. All rights reserved.
机译:本文提出了一种混合进化算法来优化多机器人蜂窝制造系统的布局,其中包括机器人之间的协作任务。提出了机器人的布局面积,操作时间和可操纵性,这是评估机器人装配系统的三个设计标准。使用序列对方案来表示布局设计候选,以防止装配系统组件之间的干扰,并提出引入虚拟组件来表示组件稀疏的布局区域。本文的主要目的是通过与遗传算法混合来提出和评估混合算法,该算法已经使用了数十年。将差异进化(DE),人工蜂群(ABC),带电系统搜索(CSS)和粒子群优化(PSO)与遗传算法混合,从而具有四个杂种(GA + DE,GA + ABC,GA + CSS和GA + PSO)算法。这些算法的性能通过文献报道的遗传算法进行测试。借用非支配排序遗传算法(NSGA-II)的概念来处理多个目标并获得所考虑问题的Pareto解。通过一个多机器人装配系统的实例设计问题评估了这些混合算法,并在本文中提出了这些算法的有效性。发现GA + PSO的性能优于其他混合算法。使用三菱RV-6SQ机器人配置对提出的算法的应用进行了测试。 (C)2017 Elsevier B.V.保留所有权利。

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