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Stochastic optimization over parallel queues: Channel-blind scheduling, restless bandit, and optimal delay.

机译:并行队列上的随机优化:信道盲调度,躁动的匪徒和最佳延迟。

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摘要

This dissertation addresses several optimal stochastic scheduling problems that arise in partially observable wireless networks and multi-class queueing systems. They are single-hop network control problems under different channel connectivity assumptions and different scheduling constraints. Our goals are two-fold: To identify stochastic scheduling problems of practical interest, and to develop analytical tools that lead to efficient control algorithms with provably optimal performance.;In wireless networks, we study three sets of problems. First, we explore how the energy and timing overhead due to channel probing affects network performance. We develop a dynamic channel probing algorithm that is both throughput and energy optimal. The second problem is how to exploit time correlations of wireless channels to improve network throughput when instantaneous channel states are unavailable. Specifically, we study the network capacity region over a set of Markov ON/OFF channels with unknown current states. Recognizing that this is a difficult restless multi-armed bandit problem, we construct a non-trivial inner bound on the network capacity region by randomizing well-designed round robin policies. This inner bound is considered as an operational network capacity region because it is large and easily achievable. A queue-dependent round robin policy is constructed to support any throughput vector within the inner bound. In the third problem, we study throughput utility maximization over partially observable Markov ON/OFF channels (specifically, over the inner bound provided in the previous problem). It has applications in wireless networks with limited channel probing capability, cognitive radio networks, target tracking of unmanned aerial vehicles, and restless multi-armed bandit systems. An admission control and channel scheduling policy is developed to achieve near-optimal throughput utility within the inner bound. Here we use a novel ratio MaxWeight policy that generalizes the existing MaxWeight-type policies from time-slotted networks to frame-based systems that have policy-dependent random frame sizes.;In multi-class queueing systems, we study how to optimize average service cost and per-class average queueing delay in a nonpreemptive multi-class M/G/1 queue that has adjustable service rates. Several convex delay penalty and service cost minimization problems with time-average constraints are investigated. We use the idea of virtual queues to transform these problems into a new set of queue stability problems, and the queue-stable policies are the desired solutions. The solutions are variants of dynamic cmu rules, and implement weighted priority policies in every busy period, where the weights are functions of past queueing delays in each job class.;Throughout these problems, our analysis and algorithm design uses and generalizes an achievable region approach driven by Lyapunov drift theory. We study the performance region (in throughput, power, or delay) of interest and identify, or design, a policy space so that every feasible performance vector is attained by a stationary randomization over the policy space. This investigation facilitates us to design queue-dependent network control policies that yield provably optimal performance. The resulting policies make greedy and dynamic decisions at every decision epoch, require limited or no statistical knowledge of the system, and can be viewed as learning algorithms over stochastic queueing networks. Their optimality is proved without the knowledge of the optimal performance.
机译:本文解决了部分可观察的无线网络和多类排队系统中出现的几种最优随机调度问题。它们是在不同信道连接性假设和不同调度约束下的单跳网络控制问题。我们的目标有两个:识别具有实际意义的随机调度问题,并开发可导致具有可证明的最佳性能的有效控制算法的分析工具。在无线网络中,我们研究了三组问题。首先,我们探讨由于信道探测而产生的能量和定时开销如何影响网络性能。我们开发了一种动态信道探测算法,该算法既具有吞吐量又具有能量最优性。第二个问题是当瞬时信道状态不可用时,如何利用无线信道的时间相关性来提高网络吞吐量。具体来说,我们研究了一组具有未知电流状态的Markov ON / OFF通道上的网络容量区域。认识到这是一个棘手的多武装匪徒难题,我们通过随机分配精心设计的轮询策略,在网络容量区域上构造了一个重​​要的内部界限。该内边界被认为是可操作的网络容量区域,因为它很大并且很容易实现。构造与队列有关的循环策略以支持内部边界内的任何吞吐量向量。在第三个问题中,我们研究了在部分可观察到的Markov ON / OFF通道(特别是在上一个问题中提供的内边界)上的吞吐量效用最大化。它可用于信道探测能力有限的无线网络,认知无线电网络,无人驾驶飞机的目标跟踪以及不安定的多臂强盗系统。开发了一种准入控制和信道调度策略,以在内部边界内实现接近最佳的吞吐量效用。这里我们使用一种新颖的比率MaxWeight策略,该策略将现有的MaxWeight类型策略推广到从时隙网络到具有基于策略的随机帧大小的基于帧的系统。;在多类排队系统中,我们研究如何优化平均服务具有可调整服务速率的非抢占式多类M / G / 1队列中的成本和每类平均排队延迟。研究了带有时间平均约束的几个凸延迟惩罚和服务成本最小化问题。我们使用虚拟队列的思想将这些问题转换为一组新的队列稳定性问题,并且队列稳定策略是理想的解决方案。这些解决方案是动态cmu规则的变体,并在每个忙碌时段实施加权优先级策略,其中权重是每个工作类别中过去排队延迟的函数。贯穿这些问题,我们的分析和算法设计使用并概括了可实现的区域方法由Lyapunov漂移理论驱动。我们研究感兴趣的性能区域(在吞吐量,功率或延迟方面),并确定或设计策略空间,以便通过在策略空间上进行静态随机化来获得每个可行的性能矢量。这项调查有助于我们设计依赖队列的网络控制策略,从而产生可证明的最佳性能。产生的策略在每个决策时期做出贪婪且动态的决策,需要有限或不需要系统的统计知识,并且可以视为随机排队网络上的学习算法。在没有最佳性能知识的情况下证明了它们的最优性。

著录项

  • 作者

    Li, Chih-ping.;

  • 作者单位

    University of Southern California.;

  • 授予单位 University of Southern California.;
  • 学科 Engineering Electronics and Electrical.
  • 学位 Ph.D.
  • 年度 2011
  • 页码 195 p.
  • 总页数 195
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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