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Dynamic control of the N queueing network with application to shipbuilding

机译:N排队网络的动态控制及其在造船中的应用

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The US shipbuilding industry faces challenges of building ships on time and within budgeted cost. We introduce an operational flexibility to shipbuilding to improve the system control. We model the flexible ship production system as an 'N' queueing network. However, the 'N' network model still lacks effective and computationally lightweight policies, especially with non-preemption. We use a Markov Decision Process (MDP) to gain structural insights into the optimal control policy. We develop a state dependent Optimal Threshold policy and benchmark it against other policies to show its excellent robustness and effectiveness. Our extensive test suite shows that (1) the Optimal Threshold policy performs the best in all the heuristics we tested; and (2) the cost of the system under control of this threshold policy is very close to the optimal cost calculated by the MDP. To calculate the exact optimal threshold level is difficu therefore, we develop a birth-death process to determine a Analytical threshold level. Based on the optimal threshold values over a large test suite, we refine the analytical threshold level using a second-order regression model. We find the performance of the Regression Threshold policy to be within a few percent of optimal.
机译:美国造船业面临着在预算内按时建造船舶的挑战。我们为造船业引入了操作灵活性,以改善系统控制。我们将灵活的船舶生产系统建模为“ N”排队网络。但是,“ N”网络模型仍然缺乏有效且计算量轻的策略,尤其是在非抢占的情况下。我们使用马尔可夫决策过程(MDP)获得对最佳控制策略的结构见解。我们开发了状态相关的最佳阈值策略,并将其与其他策略进行基准比较,以显示其出色的鲁棒性和有效性。我们广泛的测试套件表明:(1)最佳阈值策略在我们测试的所有启发式方法中表现最佳; (2)在此阈值策略控制下的系统成本非常接近MDP计算的最佳成本。要计算确切的最佳阈值水平很困难;因此,我们开发了一个出生-死亡过程来确定分析阈值水平。基于大型测试套件的最佳阈值,我们使用二阶回归模型完善分析阈值水平。我们发现回归阈值策略的性能在最佳值的百分之几之内。

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