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首页> 外文期刊>The International Journal of Advanced Manufacturing Technology >Scheduling stochastic job shop subject to random breakdown to minimize makespan
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Scheduling stochastic job shop subject to random breakdown to minimize makespan

机译:安排随机工作车间的随机故障以最大程度地减少制造时间

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摘要

The problem of scheduling stochastic job shop subject to breakdown is seldom considered. This paper proposes an efficient genetic algorithm (GA) for the problem with exponential processing time and non-resumable jobs. The objective is to minimize the stochastic makespan itself. In the proposed GA, a novel random key representation is suggested to represent the schedule of the problem and a discrete event-driven decoding method is applied to build the schedule and handle breakdown. Probability stochastic order and the addition operation of exponential random variables are also used to calculate the objective value. The proposed GA is applied to some test problems and compared with a simulated annealing and a particle swarm optimization. The computational results show the effectiveness of the GA and its promising advantage on stochastic scheduling.
机译:很少考虑安排易发生故障的随机作业车间的问题。针对具有指数处理时间和不可恢复工作的问题,本文提出了一种有效的遗传算法。目的是最大程度地减少随机的制造期。在提出的遗传算法中,提出了一种新颖的随机密钥表示方法来表示问题的进度表,并采用离散事件驱动的解码方法来构建进度表并处理故障。概率随机顺序和指数随机变量的加法运算也用于计算目标值。提出的遗传算法应用于一些测试问题,并与模拟退火和粒子群算法进行了比较。计算结果表明了遗传算法的有效性及其在随机调度中的有希望的优势。

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