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Queue Length Forecasting in Complex Manufacturing Job Shops

机译:复杂制造业工作商店的排队长度预测

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Currently, manufacturing is characterized by increasing complexity both on the technical and organizational levels. Thus, more complex and intelligent production control methods are developed in order to remain competitive and achieve operational excellence. Operations management described early on the influence among target metrics, such as queuing times, queue length, and production speed. However, accurate predictions of queue lengths have long been overlooked as a means to better understanding manufacturing systems. In order to provide queue length forecasts, this paper introduced a methodology to identify queue lengths in retrospect based on transitional data, as well as a comparison of easy-to-deploy machine learning-based queue forecasting models. Forecasting, based on static data sets, as well as time series models can be shown to be successfully applied in an exemplary semiconductor case study. The main findings concluded that accurate queue length prediction, even with minimal available data, is feasible by applying a variety of techniques, which can enable further research and predictions.
机译:目前,制造的特点是在技术和组织层面上增加复杂性。因此,开发了更复杂和智能的生产控制方法,以保持竞争力和实现卓越运营。在目标度量的影响之后描述的操作管理,例如排队时间,队列长度和生产速度。然而,队列长度的准确预测已经被忽视为更好地理解制造系统的手段。为了提供队列长度预测,本文介绍了一种方法来识别基于过渡数据的回报中的队列长度的方法,以及易于部署的基于机器学习的队列预测模型的比较。基于静态数据集的预测,以及时间序列模型可以在示例性半导体案例研究中成功应用。主要发现结论是,即使有最小的可用数据,即使有最小的可用数据,也可以通过应用各种技术来实现准确的队列长度预测,这可以实现进一步的研究和预测。

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