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Randomized Scheduling of Real-Time Traffic in Wireless Networks Over Fading Channels

机译:随机调度无线网络中的实时流量衰落渠道

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Despite the rich literature on scheduling algorithms for wireless networks, algorithms that can provide deadline guarantees on packet delivery for general traffic and interference models are very limited. In this paper, we study the problem of scheduling real-time traffic under a conflict-graph interference model with unreliable links due to channel fading. Packets that are not successfully delivered within their deadlines are of no value. We consider traffic (packet arrival and deadline) and fading (link reliability) processes that evolve as an unknown finite-state Markov chain. The performance metric is efficiency ratio which is the fraction of packets of each link which are delivered within their deadlines compared to that under the optimal (unknown) policy. We first show a conversion result that shows classical non-real-time scheduling algorithms can be ported to the real-time setting and yield a constant efficiency ratio, in particular, Max-Weight Scheduling (MWS) yields an efficiency ratio of 1/2. We then propose randomized algorithms that achieve efficiency ratios strictly higher than 1/2, by carefully randomizing over the maximal schedules. We further propose low-complexity and myopic distributed randomized algorithms, and characterize their efficiency ratio. Simulation results are presented that verify that randomized algorithms outperform classical algorithms such as MWS and GMS.
机译:尽管对无线网络的调度算法有丰富的文献,但可以在通用流量和干扰模型的数据包传送上提供截止日期保证的算法非常有限。在本文中,我们研究了冲突图干扰模型下的实时流量的问题,由于信道衰落而不可靠的链路。未在其截止日期内成功传递的数据包没有值。我们考虑流量(数据包到达和截止日期)和衰落(链接可靠性)进程,以发展为一个未知的有限状态马尔可夫链。性能度量是效率比,其是与最佳(未知)政策下的截止日期内的每个链路的分组的分组。我们首先显示一个转换结果,显示经典的非实时调度算法可以移植到实时设置并产生恒定效率比,特别是最大重量调度(MWS)产生1/2的效率比。然后,我们通过在最大时间表上仔细随机化,提出了随机算法,该算法达到严格高于1/2的效率比率。我们进一步提出了低复杂性和近视分布式随机算法,并表征了它们的效率比。提出了仿真结果,验证了随机算法优于MWS和GMS等经典算法。

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