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A Promising Initial Population Based Genetic Algorithm for Job Shop Scheduling Problem

机译:一种基于有希望的基于初始种群的遗传算法求解作业车间调度问题

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Job shop scheduling problem is typically a NP-Hard problem. In the recent past efforts put by researchers were to provide the most generic genetic algorithm to solve efficiently the job shop scheduling problems. Less attention has been paid to initial population aspects in genetic algorithms and much attention to recombination operators. Therefore authors are of the opinion that by proper design of all the aspects in genetic algorithms starting from initial population may provide better and promising solutions. Hence this paper attempts to enhance the effectiveness of genetic algorithm by providing a new look to initial population. This new technique along with job based representation has been used to obtain the optimal or near optimal solutions of 66 benchmark instances which comprise of varying degree of complexity.
机译:作业车间调度问题通常是NP-Hard问题。在最近的过去,研究人员所做的努力是提供最通用的遗传算法,以有效解决车间作业调度问题。遗传算法中对初始种群方面的关注较少,而对重组算子的关注则较少。因此,作者认为,通过适当设计遗传算法中从初始种群开始的所有方面,可能会提供更好且有希望的解决方案。因此,本文试图通过为初始种群提供新的外观来增强遗传算法的有效性。这项新技术与基于作业的表示一起已用于获得66种基准实例的最佳或接近最佳解决方案,这些基准实例具有不同程度的复杂性。

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