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Comparative Study of Different Representations in Genetic Algorithms for Job Shop Scheduling Problem

机译:车间作业调度问题遗传算法中不同表示形式的比较研究

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Due to NP-Hard nature of the Job Shop Scheduling Problems (JSP), exact methods fail to provide the optimal solutions in quite reasonable computational time. Due to this nature of the problem, so many heuristics and meta-heuristics have been proposed in the past to get optimal or near-optimal solutions for easy to tough JSP instances in lesser computational time compared to exact methods. One of such heuristics is genetic algorithm (GA). Representations in GA will have a direct impact on computational time it takes in providing optimal or near optimal solutions. Different representation schemes are possible in case of Job Scheduling Problems. These schemes in turn will have a higher impact on the performance of GA. It is intended to show through this paper, how these representations will perform, by a comparative analysis based on average deviation, evolution of solution over entire generations etc.
机译:由于作业车间调度问题(JSP)的NP-Hard性质,精确的方法无法在相当合理的计算时间内提供最佳解决方案。由于问题的这种性质,过去已经提出了许多启发式方法和元启发式方法,以便与精确方法相比,在更短的计算时间内,就易于艰难的JSP实例获得最佳或接近最优的解决方案。这种启发式方法之一是遗传算法(GA)。 GA中的表示形式将直接影响提供最佳或接近最佳解决方案所需的计算时间。在工作计划问题的情况下,可能会有不同的表示方案。这些计划反过来将对GA的绩效产生更大的影响。本文旨在通过基于平均偏差,解决方案在整个世代中的演化等的比较分析,来展示这些表示将如何执行。

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