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首页> 外文期刊>IEEE transactions on wireless communications >Optimal Scheduling over Time-Varying Channels with Traffic Admission Control: Structural Results and Online Learning Algorithms
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Optimal Scheduling over Time-Varying Channels with Traffic Admission Control: Structural Results and Online Learning Algorithms

机译:具有交通准入控制的时变通道上的最优调度:结构结果和在线学习算法

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摘要

This work studies the joint scheduling- admission control (SAC) problem for a single user over a fading channel. Specifically, the SAC problem is formulated as a constrained Markov decision process (MDP) to maximize a utility defined as a function of the throughput and queue size. The optimal throughput- queue size trade-off is investigated. Optimal policies and their structural properties (i.e., monotonicity and convexity) are derived for two models: simultaneous and sequential scheduling and admission control actions. Furthermore, we propose online learning algorithms for the optimal policies for the two models when the statistical knowledge of the time-varying traffic arrival and channel processes is unknown. The analysis and algorithm development are relied on the reformulation of the Bellman's optimality equations using suitably defined state-value functions which can be learned online, at transmission time, using time-averaging. The learning algorithms require less complexity and converge faster than the conventional Q-learning algorithms. This work also builds a connection between the MDP based formulation and the Lyapunov optimization based formulation for the SAC problem. Illustrative results demonstrate the performance of the proposed algorithms in various settings.
机译:这项工作研究了衰落信道上单个用户的联合调度接纳控制(SAC)问题。具体来说,将SAC问题公式化为约束马尔可夫决策过程(MDP),以最大化根据吞吐量和队列大小而定义的效用。研究了最佳吞吐量队列大小的折衷方案。针对两个模型推导了最佳策略及其结构特性(即单调性和凸性):同时和顺序调度以及准入控制动作。此外,当时变流量到达和信道过程的统计知识未知时,我们针对两种模型的最优策略提出在线学习算法。分析和算法开发依赖于使用适当定义的状态值函数对Bellman最优性方程式的重新表述,该状态值函数可以在传输时间使用时间平均在线学习。与传统的Q学习算法相比,学习算法所需的复杂度更低,收敛速度更快。这项工作还为SAC问题在基于MDP的公式与基于Lyapunov优化的公式之间建立了联系。说明性结果证明了所提出算法在各种环境下的性能。

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