Credibility based chance constrained programming for parallel machine scheduling under linear deterioration and learning effects with considering setup times dependent on past sequences

IF 1.3 Q4 ENGINEERING, INDUSTRIAL
Amir Sabripoor, Amirali Amirsahami, R. Ghousi
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引用次数: 1

Abstract

The industry has expressed significant concern regarding the issue of parallel machines and the influence of learning and deterioration. This research investigates non-identical parallel machine scheduling, taking into account the simultaneous consideration of learning effects, deterioration, and past-sequence-dependent setup times. Due to the existence of uncertain parameters in real-world scenarios, the processing times and due dates are assumed to be triangular fuzzy numbers. A fuzzy nonlinear mathematical model with two objective functions is presented and solved using the fuzzy Chance Constraint Programming approach. The two objectives are the summation of earliness and tardiness, as well as makespan. To achieve an efficient near-optimal Pareto front for the problem, a hybrid NSGA-II and VNS multi-objective meta-heuristic is proposed and the results are discussed. Finally, the augmented ε-constraint method is utilized to address issues with small dimensions. The computational analysis demonstrates the effectiveness of this proposed algorithm in tackling problems, especially those with substantial dimensions.
考虑设置时间依赖于过去序列的线性退化和学习效应下并行机器调度的基于可信度的机会约束规划
该行业对平行机器问题以及学习和退化的影响表示严重关切。本研究探讨了非相同的并行机器调度,同时考虑了学习效果、退化和过去序列相关的设置时间。由于现实场景中存在不确定参数,处理时间和到期日假定为三角模糊数。提出了一个具有两个目标函数的模糊非线性数学模型,并用模糊机会约束规划方法求解。这两个目标是提前和延迟的总和,以及完工时间。为了求解该问题的近最优Pareto前沿,提出了一种混合NSGA-II和VNS多目标元启发式算法,并对结果进行了讨论。最后,利用增广ε-约束方法求解小维问题。计算分析表明,该算法在处理大量维数问题时是有效的。
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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来源期刊
CiteScore
3.70
自引率
5.90%
发文量
16
审稿时长
16 weeks
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