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Improved Production Performance Through Manufacturing System Learning

机译:通过制造系统学习提高生产性能

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With the advancement of computing technologies in the manufacturing domain, more information is available on factory intranets. This paper introduces a framework to optimize the performance of a production line through multiple plant comparisons and learning among identical or similar production lines by leveraging the information stored on the factory intranet. In this work, production data from multiple identical production lines are collected and analyzed. A fishbone diagram is introduced to help find differences amongst plants. By taking advantage of the abundant information from multiple plants, the “best” feasible action can be learned on critical machines which offers a new way to optimize the product line in addition to root cause analysis. To predict improvements, machine learning is used including preprocessing, model selection and validation. Consequently, a cost-benefit evaluation is provided to help decision making. A case study is performed based on an automotive industry scenario where the method is demonstrated and an increase in throughput is predicted.
机译:随着制造领域的计算技术的进步,在工厂内联网上提供更多信息。本文介绍了一种框架,通过利用存储在工厂内网上的信息来优化生产线的性能,通过多种工厂比较和学习相同或相似的生产线。在这项工作中,收集和分析了来自多个相同生产线的生产数据。介绍了钓鱼骨图以帮助在植物中找到差异。通过利用来自多个工厂的丰富信息,可以在关键机器上学到“最佳”可行行动,该临界机器提供了一种新方法,除了根本原因分析外还可以优化产品线。为了预测改进,使用机器学习包括预处理,模型选择和验证。因此,提供了成本效益评估来帮助决策。基于汽车行业场景进行案例研究,其中证明了该方法并预测了吞吐量的增加。

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