In this paper, we consider the problem of scheduling real-time traffic in wireless networks under a conflict-graph interference model and single-hop traffic. The objective is to guarantee that at least a certain fraction of packets of each link are delivered within their deadlines, which is referred to as delivery ratio. This problem has been studied before under restrictive frame-based traffic models, or greedy maximal scheduling schemes like LDF (Largest-Deficit First) that provide poor delivery ratio for general traffic patterns. In this paper, we pursue a different approach through randomization over the choice of maximal links that can transmit at each time. We design randomized policies in collocated networks, multi-partite networks, and general networks, that can achieve delivery ratios much higher than what is achievable by LDF. Further, our results apply to traffic (arrival and deadline) processes that evolve as positive recurrent Markov Chains. Hence, this work is an improvement with respect to both efficiency and traffic assumptions compared to the past work. We further present extensive simulation results over various traffic patterns and interference graphs to illustrate the gains of our randomized policies over LDF variants.
翻译:在本文中,我们考虑了将无线网络的实时交通安排在冲突干扰模式和单速传输模式下的问题。目标是保证每个链接的包至少有一定部分在最后期限内交付,即交付率。这个问题以前曾根据限制性的基于框架的交通模式或贪婪的最大日程安排计划(如LDF(Largest-Deficit First))进行过研究,这些模式为一般交通模式提供了较差的交付率。在本文中,我们通过随机安排选择每次能够传输的最大链接,采取了不同的做法。我们设计了合用网络、多部分网络和一般网络的随机化政策,这些政策的交付率可以大大高于LDF所能实现的水平。此外,我们的结果适用于作为积极的经常性Markov链路的交通(入境和最后期限)流程。因此,这项工作在效率和交通假设方面与过去的工作相比都有所改善。我们进一步对各种交通模式和干扰图进行了广泛的模拟,以说明我们对LDF变量的随机化政策的成果。