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Approximate linear programming for networks: Average cost bounds

机译:网络的近似线性规划:平均成本范围

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This paper uses approximate linear programming (ALP) to compute average cost bounds for queueing network control problems. Like most approximate dynamic programming (ADP) methods, ALP approximates the differential cost by a linear form. New types of approximating functions are identified that offer more accuracy than previous ALP studies or other performance bound methods. The structure of the infinite constraint set is exploited to reduce it to a more manageable set. When needed, constraint sampling and truncation methods are also developed. Numerical experiments show that the LPs using quadratic approximating functions can be easily solved on examples with up to 17 buffers. Using additional functions reduced the error to 1-5% at the cost of larger LPs. These ALPs were solved for systems with up to 6-11 buffers, depending on the functions used. The method computes bounds much faster than value iteration. It also gives some insights into policies. The ALPs do not scale to very large problems, but they offer more accurate bounds than other methods and the simplicity of just solving an LP. (C) 2015 Elsevier Ltd. All rights reserved.
机译:本文使用近似线性规划(ALP)来计算排队网络控制问题的平均成本界限。像大多数近似动态编程(ADP)方法一样,ALP通过线性形式近似差分成本。确定了新型的逼近函数,它们比以前的ALP研究或其他性能约束方法提供了更高的准确性。利用无限约束集的结构将其简化为更易于管理的集合。如果需要,还可以开发约束采样和截断方法。数值实验表明,使用二次逼近函数的LP可以轻松解决多达17个缓冲区的示例。使用额外的功能可将误差降低到1-5%,这需要更大的LP。根据所使用的功能,已针对具有多达6-11个缓冲区的系统解决了这些ALP。该方法计算边界的速度比值迭代快得多。它还提供了对策略的一些见解。 ALP不会扩展到非常大的问题,但是它们提供的边界比其他方法更准确,并且仅解决LP就简单了。 (C)2015 Elsevier Ltd.保留所有权利。

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