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Exact and metaheuristic algorithms to minimize the total tardiness of cutting tool sharpening operations

机译:精确的元启发式算法可最大程度地减少刀具锐化操作的总拖延时间

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We present in this study an algorithmic framework of an intelligent scheduling system that aims to provide an optimum planning for the production process of cutting tools taking into consideration the constraining conditions such as production characteristics, capacity, and performance criteria. Once blunt, cutting tools are sent to the sharpening service composed of parallel machines capable of sharpening more than one tool at the same time. After sharpening, tools are sent back to the departments of origins to be used in other production processes. Thus, any delay in the sharpening service provokes delays in other departments. We develop first a genetic algorithm enhanced by a dynamic programming procedure capable of optimally scheduling a given job sequence. Then we develop a branch and bound method that emulates at each node possible decisions based on a postpone or schedule strategy. Numerical results show that both methods give high quality solutions for the scheduling of tool sharpening operations. Beside the minimization of total tardiness, many other types of decision making related to minimal operation time of a sharpening service, minimal amount of cutting tool inventory and the number of required sharpening machines can be deduced thanks to applying our models. (C) 2017 Elsevier Ltd. All rights reserved.
机译:我们在这项研究中提出了一种智能调度系统的算法框架,旨在考虑到诸如生产特性,产能和性能标准等约束条件,为切削工具的生产过程提供最佳计划。一旦变钝,切削工具将被送至由平行机组成的磨削服务,这些机器可以同时磨削多个刀具。锐化后,将工具发送回原始部门,以用于其他生产过程。因此,锐化服务的任何延迟都会导致其他部门的延迟。我们首先开发了一种遗传算法,该算法通过动态规划程序得以增强,该程序能够最佳地调度给定的工作序列。然后,我们开发一种分支定界方法,该方法在每个节点上模拟基于延迟或调度策略的可能决策。数值结果表明,两种方法都可以为刀具磨削作业的调度提供高质量的解决方案。除了总拖延的最小化以外,还可以通过应用我们的模型来推导许多其他类型的决策,这些决策与磨刀服务的最短操作时间,最少的切削刀具库存以及所需的磨刀机数量有关。 (C)2017 Elsevier Ltd.保留所有权利。

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