基于元启发式算法的急单作业车间准时调度

Xiyue Ren, Xiuxian Wang, Na Geng, Zhibin Jiang
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引用次数: 0

摘要

在真实的制造系统中,由于紧急订单,重新调度是不可避免的。为了改进重调度中的匆忙订单插入问题,本文研究了准时作业车间重调度问题(JIT JSRP),该问题中每个作业都有自己的到期日,任何早/迟都将导致惩罚。建立了一个混合整数规划模型,以最小化早/迟到的加权惩罚成本和起始时间偏差。本文提出了一种混合禁忌变量邻域搜索(HTVNS)算法。为了提高算法的效率,引入了自适应振动算子选择算法和两种改进的N5邻域结构。在数值实验中,用36个不同规模和不同到达时间的紧急订单实例验证了改进算法,并与经典的元启发式算法进行了比较。计算结果表明了改进算法的有效性。
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The Just-In-Time Job-Shop Rescheduling with Rush Orders by Using a Meta-Heuristic Algorithm
In the real manufacturing system, rescheduling is inevitable because of rush orders. To improve the rush order inserting problem of rescheduling, this paper focuses on the just-in-time job-shop rescheduling problem (JIT JSRP), in which each job has its own due date and any earliness /tardiness leads to the penalty. A mixed integer programming model is established to minimize the weighted penalty cost of earliness/tardiness and the starting time deviations. The paper develops a hybrid tabu-variable neighborhood search (HTVNS) algorithm to solve the problem. Moreover, the adaptive shake operator selection algorithm and two improved N5 neighborhood structures are introduced to improve the efficiency of the algorithm. In numerical experiments, the improved algorithm is testified using 36 cases with different scales and arrival times of rush orders, and compared with classical meta-heuristic algorithms. The computational results show the effectiveness of the proposed improved algorithm.
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