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ORDINAL OPTIMIZATION APPROACH TO STOCHASTIC SIMULATION OPTIMIZATION PROBLEMS AND APPLICATIONS

机译:随机仿真优化问题和应用的序数优化方法

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In this paper, we propose an ordinal optimization approach to solve for a good enough solution of the stochastic simulation optimization problem with huge decision-variable space. We apply the proposed ordinal optimization algorithm to G/G/1/K polling systems to solve for a good enough number-limited service discipline to minimize the weighting average waiting time. We have compared our results with those obtained by the existing service disciplines and found that our approach outperforms the existing ones. We have also used the genetic algorithm and simulated annealing method to solve the same stochastic simulation optimization problem, and the results show that our approach is much more superior in the aspects of computational efficiency and the quality of obtained solution.
机译:在本文中,我们提出了一种序列优化方法来解决足够良好的解决方案解决方案的巨大决策优化问题。我们将所提出的序数优化算法应用于G / G / 1 / K轮询系统,以解决足够的数量有限的服务学科,以最小化加权平均等待时间。我们将结果与现有服务学科获得的结果进行了比较,发现我们的方法优于现有的服务。我们还使用了遗传算法和模拟退火方法来解决相同的随机仿真优化问题,结果表明,在计算效率和所获得的解决方案的质量方面,我们的方法更加优越。

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