论文标题

烤箱调度问题的确切方法和下限

Exact methods and lower bounds for the Oven Scheduling Problem

论文作者

Lackner, Marie-Louise, Mrkvicka, Christoph, Musliu, Nysret, Walkiewicz, Daniel, Winter, Felix

论文摘要

烤箱调度问题(OSP)是一个新的并行批处理调度问题,它在电子组件制造领域出现。工作需要安排到几个烤箱之一,如果有兼容的要求,则可以在一批中同时处理。作业的安排必须尊重有关烤箱资格和可用性,释放工作日期,批处理和烤箱能力之间的设置时间的几个限制。运行烤箱是高能量密集型的,因此,除了准时完成工作之外,主要目标是最大程度地减少所有烤箱的累积批处理处理时间。该目标将OSP与其他批处理问题区分开来,这些问题通常可以最大程度地减少与Makepan,Tardiness或迟到相关的目标。 我们建议通过约束编程(CP)和整数线性编程(ILP)解决此NP硬度调度问题,并目前相应的模型。为了进行实验评估,我们引入了多参数随机实例生成器,以提供各种各样的问题实例。使用最先进的求解器,我们评估了CP-和ILP模型的性能。我们表明,我们的模型可以找到可行的解决方案,以实现实际规模的实例,其中许多是最佳或几乎最佳的解决方案。最后,我们根据可行解决方案的解决方案成本得出了理论下限。这些可以在几秒钟内计算。我们表明,这些下限与最先进的求解器衍生的界限具有竞争​​力。

The Oven Scheduling Problem (OSP) is a new parallel batch scheduling problem that arises in the area of electronic component manufacturing. Jobs need to be scheduled to one of several ovens and may be processed simultaneously in one batch if they have compatible requirements. The scheduling of jobs must respect several constraints concerning eligibility and availability of ovens, release dates of jobs, setup times between batches as well as oven capacities. Running the ovens is highly energy-intensive and thus the main objective, besides finishing jobs on time, is to minimize the cumulative batch processing time across all ovens. This objective distinguishes the OSP from other batch processing problems which typically minimize objectives related to makespan, tardiness or lateness. We propose to solve this NP-hard scheduling problem via constraint programming (CP) and integer linear programming (ILP) and present corresponding models. For an experimental evaluation, we introduce a multi-parameter random instance generator to provide a diverse set of problem instances. Using state-of-the-art solvers, we evaluate the quality and compare the performance of our CP- and ILP-models. We show that our models can find feasible solutions for instances of realistic size, many of those being provably optimal or nearly optimal solutions. Finally, we derive theoretical lower bounds on the solution cost of feasible solutions to the OSP; these can be computed within a few seconds. We show that these lower bounds are competitive with those derived by state-of-the-art solvers.

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