Manufacturing Line Design Configuration with Optimized Resource Groups

T. Nakano, Kajita Daiki, Heming Chen, Ilya Kovalenko, Efe C. Balta, Yassine Qamsane, K. Barton
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引用次数: 2

Abstract

This research aims to develop methods to quickly build new manufacturing lines in response to changes in product varieties and manufacturing fluctuations in a factory. We propose a meta-heuristic algorithm for solving large-scale optimizations of the line design process, which includes resource configuration, process design, control design, and line configuration. The proposed framework improves the automation and system-level interactions of the line design process as compared to conventional methods that manually solve each step in the process design problem individually using skilled line engineers with previous experience. This research introduces the concept of a resource group or module that consists of various manufacturing resources such as robots, tools, autonomous guided vehicles, and conveyors. The line design process is then reconfigured for module or group configuration. To demonstrate the proposed framework, a case study is conducted in which the proposed framework is applied to the line design of an assembly manufacturing facility with production costs and manufacturing lead times selected as the key performance indicators of interest. Results indicate improved line costs and manufacturing lead times concurrently.
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优化资源组的生产线设计配置
本研究旨在开发快速建立新生产线的方法,以应对工厂产品品种的变化和生产的波动。我们提出了一种元启发式算法,用于解决生产线设计过程的大规模优化问题,包括资源配置、工艺设计、控制设计和生产线配置。与传统方法相比,所提出的框架改善了生产线设计过程的自动化和系统级交互,传统方法是使用具有先前经验的熟练生产线工程师单独手动解决工艺设计问题中的每个步骤。本研究引入了资源组或模块的概念,该资源组或模块由各种制造资源组成,如机器人、工具、自动导向车辆和传送带。然后为模块或组配置重新配置线路设计过程。为了演示所建议的框架,进行了一个案例研究,其中所建议的框架应用于装配制造设施的生产线设计,并选择生产成本和制造交货时间作为感兴趣的关键绩效指标。结果表明,生产线成本和生产交货期同时得到改善。
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