一种解决作业车间调度问题的混合进化搜索调度算法

P. V. Bael, D. Devogelaere, M. Rijckaert
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引用次数: 5

摘要

本文提出了一种进化搜索调度算法(ESSA),用于解决最困难的作业车间调度问题(JSSP),即NP-hard组合优化问题。提出的ESSA是一种混合方法,侧重于局部优化解决方案的优化。与其他ESSA策略的不同之处在于新提出的编码、解码和强制方案,使用新的基于修复的邻域结构的局部搜索优化器和新的自举策略。在常用基准上的实验结果表明了混合ESSA的强大功能。结果清楚地表明,可以找到最优的时间表。此外,该算法在计算时间适中的情况下,在平均结果上优于几种ESSAs。
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A hybrid evolutionary search scheduling algorithm to solve the job shop scheduling problem
This paper describes an evolutionary search scheduling algorithm (ESSA) developed to solve the most difficult job shop scheduling problems (JSSP) that are known to be NP-hard combinatorial optimization problems. The ESSA proposed is a hybrid approach that focuses on optimization of locally optimized solutions. The differences versus other ESSA strategies are the new proposed encoding, decoding and forcing scheme, the local search optimizer that uses a new repair based neighborhood structure and a new bootstrapping strategy. Experimental results on common benchmarks indicate the power of the hybrid ESSA. The results clearly show that optimal schedules can be found. Moreover, the algorithm outperformed several ESSAs on average results with moderate computation time needed.
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