随机逼近调度的机会分裂

V. Joseph, V. Sharma, U. Mukherji
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引用次数: 1

摘要

研究了在多个用户间调度无线信道的问题。一个时隙被分配给在该时隙中具有最高度量(例如,信道增益)的用户。调度器可能不知道每个时隙开始时所有用户的通道状态。在这种情况下,机会分裂是一个有吸引力的解决方案。然而,该算法要求不同用户的度量形成具有相同分布的独立的同分布(iid)序列,并且调度程序知道它们的分布和编号。这限制了机会主义分裂的效用。本文开发了该算法的参数化版本。通过随机逼近方案在线学习算法的最优参数。我们的算法不要求不同用户的指标具有相同的分布。这些指标和用户数量的统计数据可能是未知的,而且会随着时间的推移而变化。我们证明了该算法的收敛性,并通过调度通道来最大化其吞吐量,同时满足一些公平性和/或服务质量约束来展示其效用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Opportunistic splitting for scheduling via stochastic approximation
We consider the problem of scheduling a wireless channel among multiple users. A slot is given to a user with a highest metric (e.g., channel gain) in that slot. The scheduler may not know the channel states of all the users at the beginning of each slot. In this scenario opportunistic splitting is an attractive solution. However this algorithm requires that the metrics of different users form independent, identically distributed (iid) sequences with same distribution and that their distribution and number be known to the scheduler. This limits the usefulness of opportunistic splitting. In this paper we develop a parametric version of this algorithm. The optimal parameters of the algorithm are learnt online through a stochastic approximation scheme. Our algorithm does not require the metrics of different users to have the same distribution. The statistics of these metrics and the number of users can be unknown and also vary with time. We prove the convergence of the algorithm and show its utility by scheduling the channel to maximize its throughput while satisfying some fairness and/or quality of service constraints.
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