The MIP-Based Large Neighborhood Local Search Method for Large-Scale Optimization Problems with Many Constraints: Application to the Machining Scheduling

Jin Matsuzaki, K. Sakakibara, Masaki Nakamura
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Abstract

This paper addresses the problem of scheduling machining operations in a highly automated manufacturing environment, taking into account the work styles of workers. In actual manufacturing, many issues must be taken into accounts, such as constraints related to the works to be machined in the machining schedule and the conditions of workers. To derive good solutions to such a large-scale problem with many constraints in a realistic amount of computing time, we develop an optimization technique based on the MIP-based large neighborhood local search method for the machining scheduling problem. Then, computer experiments are conducted on a problem created concerning actual machining requirements to verify the validity of the proposed method.
基于mip的多约束大规模优化问题大邻域局部搜索方法在加工调度中的应用
在高度自动化的制造环境中,考虑到工人的工作方式,本文解决了加工作业的调度问题。在实际制造中,必须考虑到许多问题,例如加工计划中与要加工的工件有关的约束以及工人的条件。为了在实际的计算时间内对这类具有许多约束的大规模问题求出较好的解,我们提出了一种基于mip的大邻域局部搜索方法的加工调度问题优化技术。然后,针对实际加工要求所产生的问题进行了计算机实验,验证了所提方法的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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