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Robust optimization of resource-constrained assembly line balancing problems with uncertain operation times

机译:对资源受限的装配线平衡问题进行稳健优化,解决操作时间不确定的问题

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Purpose Due to the market trend of low-volume and high-variety, the manufacturing industry is paying close attention to improve the ability to hedge against variability. Therefore, in this paper the assembly line with limited resources is balanced in a robust way that has good performance under all possible scenarios. The proposed model allows decision makers to minimize a posteriori regret of the selected choice and hedge against the high cost caused by variability. Design/methodology/approach A generalized resource-constrained assembly line balancing problem (GRCALBP) with an interval data of task times is modeled and the objective is to find an assignment of tasks and resources to the workstations such that the maximum regret among all the possible scenarios is minimized. To properly solve the problem, the regret evaluation, an exact solution method and an enhanced meta-heuristic algorithm, Whale Optimization Algorithm, are proposed and analyzed. A problem-specific coding scheme and search mechanisms are incorporated. Findings Theory analysis and computational experiments are conducted to evaluated the proposed methods and their superiority. Satisfactory results show that the constraint generation technique-based exact method can efficiently solve instances of moderate size to optimality, and the performance of WOA is enhanced due to the modified searching strategy. Originality/value For the first time a minmax regret model is considered in a resource-constrained assembly line balancing problem. The traditional Whale Optimization Algorithm is modified to overcome the inferior capability and applied in discrete and constrained assembly line balancing problems.
机译:目的 由于小批量、多品种的市场趋势,制造业正在密切关注提高对冲可变性的能力。因此,在本文中,资源有限的装配线以一种稳健的方式进行平衡,在所有可能的情景下都具有良好的性能。所提出的模型使决策者能够最大限度地减少所选选择的事后后悔,并对冲可变性造成的高成本。设计/方法/途径 对具有任务时间间隔数据的广义资源约束装配线平衡问题 (GRCALBP) 进行建模,目标是找到任务和资源分配给工作站的方法,从而将所有可能场景中的最大遗憾降至最低。为了正确解决该问题,提出了一种遗憾评估、精确求解方法和一种增强的元启发式算法——鲸鱼优化算法。结合了针对特定问题的编码方案和搜索机制。结果 通过理论分析和计算实验,对所提方法及其优越性进行了评价。结果表明,基于约束生成技术的精确方法能够有效地求解中等大小到最优的实例,并且由于改进了搜索策略,WOA的性能得到了提高。独创性/价值 首次在资源受限的流水线平衡问题中考虑最小最大后悔模型。对传统的鲸鱼优化算法进行了改进,克服了能力较差的问题,并应用于离散和约束的流水线平衡问题。

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