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Computationally efficient neuro-dynamic programming approximation method for the capacitated re-entrant line scheduling problem

机译:计算能力重入行调度问题的有效神经动力学规划逼近方法

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This paper presents a computationally efficient neuro-dynamic programming approximation method for the capacitated re-entrant line scheduling problem by reducing the number of feature functions. The method is based on a statistical assessment of the significance of the various feature functions. This assessment can be made by combining the weighted principal components with a thresholding algorithm. The efficacy of the new feature functions selected is tested by numerical experiments. The results indicate that the feature selection method presented here can extract a small number of significant features with the potential capability of providing a compact representation of the target value function in a neuro-dynamic programming framework. Moreover, the linear parametric architecture considered holds considerable promise as a way to provide effective and computationally efficient approximations for an optimal scheduling policy that consistently outperforms the heuristics typically employed.
机译:通过减少特征函数的数量,提出了一种计算有效的神经动力学规划逼近方法,用于求解能力有限的重入行调度问题。该方法基于对各种功能的重要性的统计评估。可以通过将加权主成分与阈值算法相结合来进行此评估。通过数值实验测试了所选新功能的功效。结果表明,此处提出的特征选择方法可以提取少量重要特征,并具有在神经动力编程框架中提供目标值函数的紧凑表示的潜在能力。此外,所考虑的线性参数体系结构具有可观的前景,可以为持续优于典型启发式算法的最佳调度策略提供有效的计算效率。

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