基于分析的制造业资源分配和优先调度优化框架

Urtzi Otamendi , Iñigo Martinez , Xabier Belaunzaran , Arkaitz Artetxe , Javier Franco , Alejandro Uribe , Igor G. Olaizola , Basilio Sierra
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引用次数: 0

摘要

生产调度是制造作业的关键,需要对有限的资源进行优化分配。本文介绍了无关并行机(UPM)问题的一种新的概括,解决了现实世界的关键复杂性:序列和机器相关的设置时间,资源分配约束和抢占调度。这些扩展,特别是劳动力分配,其中特定的资格和可用性时间表决定了员工的资格,代表了工业调度研究的重要一步。开发了一个混合整数线性规划(MILP)模型和三个特定约束变量来评估性能和可扩展性,并隔离抢占和资源约束。大量的计算实验证明了模型适用性和计算效率之间的权衡。所提出的模型在机器之间实现了现实的工作分配,但由于我们称之为密集资格矩阵(dense eligibility matrices)所引入的组合复杂性(代表了很大比例的潜在员工-机器分配),遇到了可扩展性挑战。仅抢占模型有效地优化了makespan,而以资源为中心的模型以更高的处理时间为代价提供了更实用的解决方案。具有序列相关设置时间(UPMS)模型的基线UPM具有计算效率,但缺乏对动态工业环境的适用性。本研究强调了抢占和资源分配对调度优化的影响,并强调了稀疏减少技术对增强可伸缩性的重要性。通过弥合劳动力管理和操作灵活性方面的差距,提出的框架为解决复杂的工业调度挑战提供了坚实的基础。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An analytics-based framework for optimizing resource allocation and preemptive scheduling in manufacturing
Production scheduling is critical in manufacturing operations, requiring the optimal assignment of limited resources. This paper introduces a novel generalization of the Unrelated Parallel Machine (UPM) problem, addressing key real-world complexities: sequence- and machine-dependent setup times, resource assignment constraints, and preemptive scheduling. These extensions, particularly workforce assignments where specific qualifications and availability schedules determine employee eligibility, represent a significant step forward in industrial scheduling research. A Mixed Integer Linear Programming (MILP) model and three constraint-specific variations were developed to evaluate performance and scalability and isolate preemption and resource constraints. Extensive computational experiments demonstrated a trade-off between model applicability and computational efficiency. The proposed model achieved realistic job distribution across machines but encountered scalability challenges due to the combinatorial complexity introduced by what we term dense eligibility matrices, representing a high proportion of potential employee-machine assignments. The preemption-only model optimized makespan effectively, while the resource-focused model provided more practical solutions at the cost of higher processing times. The baseline UPM with sequence-dependent setup times (UPMS) model exhibited computational efficiency but lacked applicability to dynamic industrial environments. This study highlights the impact of preemption and resource assignment on scheduling optimization and underscores the importance of sparsity reduction techniques to enhance scalability. By bridging gaps in workforce management and operational flexibility, the proposed framework provides a robust foundation for addressing complex industrial scheduling challenges.
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