Design and Optimization of Loop Layout in Flexible Manufacturing System using Particle Swarm Optimization

Ravindra Rai, S. Jayswal
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引用次数: 9

Abstract

To design any manufacturing setup we need to focus on design of facility layout and it has a huge impact on the performance of the manufacturing system. so the Optimum arrangement of layout is important in order to achieve high productivity in flexible manufacturing system (FMS). The objective of the loop layout problem is the determination of the ordering of machines around a loop, to minimize the total number of loop traversals for a family of parts. The problem we address is to design the layout of the system so that the number of machines that the part types cross in their manufacturing process is minimized. We formulate the problem mathematically and solve it by a meta-heuristics that obtains consistently better results than an earlier popular method. Since, optimum arrangements of layout is a combinatorial problem so finding the best combination out of millions of combinations is a challenging task and can't be solve using conventional techniques. Therefore, this paper details the design, development and testing of particle swarm optimization (PSO) technique to solve the loop layout problem. The proposed method is validated with bench mark problems. Here PSO algorithm is proposed for obtaining the optimal solution of unidirectional loop layout design problem of various FMS models.
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基于粒子群算法的柔性制造系统回路布局设计与优化
为了设计任何制造装置,我们需要关注设施布局的设计,它对制造系统的性能有巨大的影响。在柔性制造系统中,优化布局是实现高生产率的重要途径。环路布局问题的目标是确定机器在环路周围的排序,以最小化一组零件的环路遍历总数。我们解决的问题是设计系统的布局,使零件类型在制造过程中交叉的机器数量最小化。我们用数学的方法提出了这个问题,并通过一种元启发式方法来解决它,这种方法比以前流行的方法获得了一贯更好的结果。由于布局的最优安排是一个组合问题,因此从数百万种组合中找到最佳组合是一项具有挑战性的任务,无法用传统技术解决。因此,本文详细介绍了粒子群优化(PSO)技术的设计、开发和测试,以解决环路布局问题。通过基准问题对该方法进行了验证。针对各种FMS模型的单向环布局设计问题,提出了粒子群优化算法。
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