具有弹性流量的多用户类别的最优小区间协调

Prajwal Osti, P. Lassila, S. Aalto
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引用次数: 7

摘要

假设系统中的业务由弹性下行数据流组成,我们考虑相邻两个单元之间的单元间协调问题。在这种情况下,可以选择在特定时间完全关闭一个基站,这样可以减少干扰,并使相邻基站的服务速率更高。基于对称容量区域,采用流级排队模型来描述系统的演化过程。Verloop和Núñez-Queija最近的研究结果表明,假设每个单元只有一类流,随机最优动态策略是,当两个单元都有用户时,两个站点都打开。在本文中,我们考虑一个系统,其中两个站点能够为两种不同类型的用户提供服务-近用户和远用户。在这种情况下,双站在线策略的随机最优性不一定成立,但它可能仍然是一个接近最优的策略,至少对于最小化平均流延迟而言。本文提出了一种基于马尔可夫决策过程理论的策略改进算法来生成近似最优状态相关资源分配策略的系统方法。我们对这两种动态策略进行的数值实验表明,即使存在多个用户类,双站在线策略也确实接近于最优。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Optimal intercell coordination for multiple user classes with elastic traffic
We consider the intercell coordination problem between two neighboring cells, assuming that the traffic in the system consists of elastic downlink data flows. In this case, there is an option of completely switching off one base station at certain times, which reduces interference and enables a higher service rate in the neighboring base station. We use a flow level queueing model to describe the evolution of the system based on a symmetric capacity region. Recent results by Verloop and Núñez-Queija show that, assuming a single class of flows for each cell, the stochastically optimal dynamic policy is to have both stations switched on whenever there are users in both cells. In this paper, we consider a system where the two stations are able to provide services to two different classes of users - the near ones and the far ones. In this setting, the stochastic optimality of the Both Stations On policy does not necessarily hold, but it may still be a close-to-optimal policy, at least for minimizing the mean flow delay. We present a systematic method based on the policy improvement algorithm of the theory of the Markov Decision Processes to generate a near-optimal state-dependent resource allocation policy. Our numerical experiments with these two dynamic policies indicate that the Both Stations On policy is, indeed, close to optimal even when there are multiple user classes.
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