一种应用于作业车间调度问题的协同进化算法

Zhou Hong, Wang Jian
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引用次数: 2

摘要

针对作业车间调度问题,提出了一种改进的协同进化算法。根据机器的数量,总体自然地被划分为若干个子总体,这些子总体的个体对工作的偏好列表进行编码。该算法在交叉和突变算子中引入稳态复制,并在其他代插入一些新个体,采用改进的基于偏好列表的G&T算法对整个解进行解码,按三种合作伙伴计算适应度,并采用创新的更新技术加快收敛速度。数值实验优化结果表明,该算法优于传统的遗传算法,与其他启发式算法具有较强的竞争能力
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A Cooperative Coevolutionary Algorithm with Application to Job Shop Scheduling Problem
An improved cooperative coevolutionary algorithm, which aims at solving job shop scheduling problem, is proposed in this paper. According to the number of machines, population is naturally divided into some subpopulations whose individuals encode the preference list of jobs. The proposed algorithm introduces steady-state reproduction to crossover and mutation operators, and inserts some new individuals to the subpopulation at some other generations, and uses the improved preference-list-based G&T algorithm to decode the whole solutions to calculate fitness by three types of cooperative partners, and adopts an innovative updating technique to speed up the convergence. The optimization results of numerical experiments have shown that, the proposed algorithm has outperformed traditional genetic algorithms and showed strong competition with other heuristics
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