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Machine learning technologies for order flowtime estimation in manufacturing systems

机译:用于制造系统中订单流时间估计的机器学习技术

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The problem of order due date assignment is an important issue for many companies and especially SMEs, which typically rely on production managers’ best estimates to assign customer order due-dates. This paper investigates the use of machine learning (ML) technologies for order flowtime estimation in dynamic job shops, utilising a discrete event simulation framework for modelling manufacturing operations. The data generated via simulation is used by a series of ML technologies for predicting when orders could be completed. A series of experiments are conducted, and the performance of the proposed approach is compared with conventional due date assignment methods.
机译:订单到期日期分配问题对于许多公司,尤其是中小型企业来说是一个重要的问题,它们通常依靠生产经理的最佳估计来分配客户订单到期日期。本文研究了使用机器学习(ML)技术在动态作业车间中估算订单流程时间,并利用离散事件仿真框架对制造操作进行建模。一系列ML技术使用通过仿真生成的数据来预测何时可以完成订单。进行了一系列实验,并将该方法的性能与常规到期日分配方法进行了比较。

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