作业车间环境中的事件驱动生产重调度

Florian Pfitzer, Julien Provost, Carina Mieth, Wolfgang Liertz
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引用次数: 2

摘要

不可预测的订单和所需的嵌套过程使钣金作业车间的生产计划和调度非常复杂,并导致极高的交货时间和中间库存。为此,存在许多先进的计划和调度(APS)算法,旨在创建全局优化的生产计划。由于多目标优化的复杂性和大量不可预见的车间事件,到目前为止还没有提出有效和适用的解决方案。这项工作引入了一个基于精益原则的事件驱动的重新调度概念,导致生产过程对任何类型的偏差都具有高响应性。实现了更小的缓冲区占用,缩短了交货时间,提高了交货时间估计。在不同的仿真实验中显示了该重调度概念的优异性能。所提出的概念可以很容易地在任何类型的钣金作业车间及其各自的IT基础设施中实现。
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Event-Driven Production Rescheduling in Job Shop Environments
Unpredictable incoming orders and the required nesting process highly complicate production planning and scheduling in sheet metal job shop environments and cause extremely high lead times as well as intermediate stocks. For this, numerous advanced planning and scheduling (APS) algorithms exist, aiming at creating a globally optimized production schedule. Due to the complexity of the multi-objective optimization and the large amount of unforeseen shop-floor events, effective and applicable solutions have not been presented so far. This work introduces an event-driven rescheduling concept based on lean principles leading to a high responsiveness of the production process to any kind of deviation. The achieved, significantly smaller buffer occupancies enable shorter lead times and improved delivery time estimations. Excellent performance results of the rescheduling concept are shown in different simulation experiments. The presented concept can easily be implemented in any kind of sheet metal job shop and its respective IT infrastructure.
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