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Analytical Modeling of Human Choice Complexity in a Mixed Model Assembly Line Using Machine Learning-Based Human in the Loop Simulation

机译:混合模型装配线中基于机器学习的人员在回路仿真中的人员选择复杂度的分析建模

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摘要

Despite the recent advances in manufacturing automation, the role of human involvement in manufacturing systems is still regarded as a key factor in maintaining higher adaptability and flexibility. In general, however, modeling of human operators in manufacturing system design still considers human as a physical resource represented in statistical terms. In this paper, we propose a human in the loop (HIL) approach to investigate the operator’s choice complexity in a mixed model assembly line. The HIL simulation allows humans to become a core component of the simulation, therefore influencing the outcome in a way that is often impossible to reproduce via traditional simulation methods. At the initial stage, we identify the significant features affecting the choice complexity. The selected features are in turn used to build a regression model, in which human reaction time with regard to different degree of choice complexity serves as a response variable used to train and test the model. The proposed method, along with an illustrative case study, not only serves as a tool to quantitatively assess and predict the impact of choice complexity on operator’s effectiveness, but also provides an insight into how complexity can be mitigated without affecting the overall manufacturing throughput.
机译:尽管最近在制造自动化方面取得了进步,但是人类参与制造系统的作用仍然被认为是保持较高适应性和灵活性的关键因素。但是,总的来说,在制造系统设计中对操作员进行建模仍然将人视为以统计术语表示的物理资源。在本文中,我们提出了“人在回路(HIL)”方法来研究混合模型装配线中操作员的选择复杂性。 HIL仿真使人成为仿真的核心组成部分,因此以通常无法通过传统仿真方法再现的方式影响结果。在初始阶段,我们确定影响选择复杂度的重要特征。所选特征继而用于构建回归模型,其中关于不同选择复杂性的人类反应时间用作用于训练和测试模型的响应变量。所提出的方法以及示例性案例研究,不仅可以作为定量评估和预测选择复杂性对运营商效率的影响的工具,还可以洞悉如何在不影响整体生产能力的情况下减轻复杂性。

著录项

  • 作者

    Busogi Moise; Kim Namhun;

  • 作者单位
  • 年度 2017
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  • 原文格式 PDF
  • 正文语种 ENG
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