首页> 外文期刊>Journal of Optimization in Industrial Engineering >Design of a Hybrid Genetic Algorithm for Parallel Machines Scheduling to Minimize Job Tardiness and Machine Deteriorating Costs with Deteriorating Jobs in a Batched Delivery System
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Design of a Hybrid Genetic Algorithm for Parallel Machines Scheduling to Minimize Job Tardiness and Machine Deteriorating Costs with Deteriorating Jobs in a Batched Delivery System

机译:批量交付系统中并行作业调度的混合遗传算法设计,以最小化作业延迟和作业成本降低的同时降低机器成本

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This paper studies the parallel machine scheduling problem subject to machine and job deterioration in a batched delivery system. By the machine deterioration effect, we mean that each machine deteriorates over time, at a different rate. Moreover, job processing times are increasing functions of their starting times and follow a simple linear deterioration. The objective functions are minimizing total tardiness, delivery, holding and machine deteriorating costs. The problem of total tardiness on identical parallel machines is NP-hard, thus the under investigation problem, which is more complicated, is NP-hard too. In this study, a mixed-integer programming (MILP) model is presented and an efficient hybrid genetic algorithm (HGA) is proposed to solve the concerned problem. A new crossover and mutation operator and a heuristic algorithm have also been proposed depending on the type of problem. In order to evaluate the performance of the proposed model and solution procedure, a set of small to large test problems are generated and results are discussed. The related results show the effectiveness of the proposed model and GA for test problems.
机译:本文研究了在批量交付系统中受机器和工作恶化影响的并行机器调度问题。所谓的机器退化效应,是指每台机器随着时间的推移以不同的速度退化。而且,作业处理时间是其开始时间的增加函数,并且遵循简单的线性恶化。目标功能是最大程度地减少拖延,运输,保管和机器恶化成本。在相同的并行机上的总拖尾问题是NP难的,因此正在研究的问题(也更复杂)也是NP难的。本研究提出了一种混合整数规划(MILP)模型,并提出了一种有效的混合遗传算法(HGA)来解决这一问题。根据问题的类型,还提出了一种新的交叉和变异算子和一种启发式算法。为了评估所提出的模型和求解过程的性能,生成了一组大小不一的测试问题,并讨论了结果。相关结果证明了所提模型和遗传算法对测试问题的有效性。

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