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Salp Swarm Algorithm Based on Blocks on Critical Path for Reentrant Job Shop Scheduling Problems

机译:基于关键路径块的Salp Swarm算法用于可重入作业车间调度问题

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In this paper, salp swarm algorithm based on blocks on critical path (SSA_BCP) is presented to minimize the makespan for reentrant job shop scheduling problem (RJSSP), which is a typical NP-complete combinational optimization problem. Firstly, the mathematical model of RJSSP based on the disjunctive graph is established. Secondly, the extended reentrant-smallest-order-value (RSOV) encoding rule is designed to transform SSA's individuals from real vectors to job permutations so that SSA can be used to perform global search for finding high-quality solutions or regions in the solution space. Thirdly, four kinds of neighborhood structures are defined after defining the insert operation based on block structure, which can be used to avoid search in the invalid regions. Then, a high-efficient local search integrating multiple neighborhoods is proposed to execute a thorough search from the promising regions found by the global search. Simulation results and comparisons show the effectiveness of the proposed algorithm.
机译:本文提出了一种基于关键路径块的Salp群算法(SSA_BCP),以最大程度地减少可重入作业车间调度问题(RJSSP)的有效期,该问题是典型的NP完全组合优化问题。首先,建立了基于析取图的RJSSP数学模型。其次,扩展的可重入最小顺序值(RSOV)编码规则旨在将SSA的个体从实向量转换为工作置换,以便可以使用SSA进行全局搜索以在解决方案空间中找到高质量的解决方案或区域。第三,在基于块结构定义插入操作后,定义了四种邻域结构,可用于避免在无效区域中搜索。然后,提出了一种高效的局部搜索方法,该方法整合了多个邻域,可以从全局搜索找到的有希望的区域中进行全面搜索。仿真结果和比较结果表明了该算法的有效性。

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