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首页> 外文期刊>Eurasip Journal on Wireless Communications and Networking >QoS Differentiated and Fair Packet Scheduling in Broadband Wireless Access Networks
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QoS Differentiated and Fair Packet Scheduling in Broadband Wireless Access Networks

机译:宽带无线接入网中的QoS区分公平分组调度

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This paper studies the packet scheduling problem in Broadband Wireless Access (BWA) networks. The key difficulties of the BWA scheduling problem lie in the high variability of wireless channel capacity and the unknown model of packet arrival process. It is difficult for traditional heuristic scheduling algorithms to handle the situation and guarantee satisfying performance in BWA networks. In this paper, we introduce learning-based approach for a better solution. Specifically, we formulate the packet scheduling problem as an average cost Semi-Markov Decision Process (SMDP). Then, we solve the SMDP by using reinforcement learning. A feature-based linear approximation and the Temporal-Difference learning technique are employed to produce a near optimal solution of the corresponding SMDP problem. The proposed algorithm, called Reinforcement Learning Scheduling (RLS), has in-built capability of self-training. It is able to adaptively and timely regulate its scheduling policy according to the instantaneous network conditions. Simulation results indicate that RLS outperforms two classical scheduling algorithms and simultaneously considers: (i) effective QoS differentiation, (ii) high bandwidth utilization, and (iii) both short-term and long-term fairness.
机译:本文研究了宽带无线接入(BWA)网络中的分组调度问题。 BWA调度问题的关键困难在于无线信道容量的高度可变性以及数据包到达过程的未知模型。传统的启发式调度算法很难处理这种情况并保证BWA网络中令人满意的性能。在本文中,我们介绍了基于学习的方法,以寻求更好的解决方案。具体来说,我们将数据包调度问题公式化为平均成本半马尔可夫决策过程(SMDP)。然后,我们通过强化学习解决SMDP。基于特征的线性逼近和时差学习技术可用于产生相应SMDP问题的近似最优解。所提出的算法称为强化学习计划(RLS),具有内置的自训练功能。它能够根据瞬时网络状况自适应地及时调整其调度策略。仿真结果表明,RLS优于两种经典的调度算法,并同时考虑:(i)有效的QoS区分,(ii)高带宽利用率以及(iii)短期和长期公平性。

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