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Structural Solutions for Dynamic Scheduling in Wireless Multimedia Transmission

机译:无线多媒体传输中动态调度的结构解决方案

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摘要

In this paper, we propose a systematic solution to the problem of scheduling delay-sensitive media data for transmission over time-varying wireless channels. We first formulate the dynamic scheduling problem as a Markov decision process that explicitly considers the users' heterogeneous multimedia data characteristics (e.g., delay deadlines, distortion impacts and dependences, and so on) and time-varying channel conditions, which are not simultaneously considered in state-of-the-art packet scheduling algorithms. This formulation allows us to perform foresighted decisions to schedule multiple data units for transmission at each time in order to optimize the long-term utilities of the multimedia applications. The heterogeneity of the media data enables us to express the transmission priorities between the different data units as a priority graph, which is a directed acyclic graph. This priority graph provides us with an elegant structure to decompose the multidata unit foresighted decision at each time into multiple single-data unit foresighted decisions which can be performed sequentially, from the high priority data units to the low priority data units, thereby significantly reducing the computation complexity. When the statistical knowledge of the multimedia data characteristics and channel conditions is unknown a priori, we develop a low-complexity online learning algorithm to update the value functions, which capture the impact of the current decision on the future utility. The simulation results show that the proposed solution significantly outperforms existing state-of-the-art scheduling solutions.
机译:在本文中,我们提出了一种针对时变敏感媒体数据进行调度以在时变无线信道上传输的问题的系统解决方案。我们首先将动态调度问题表述为马尔可夫决策过程,该过程明确考虑了用户的异构多媒体数据特征(例如,延迟期限,失真影响和依赖性等)和时变信道条件,而在最新的数据包调度算法。这种表述使我们能够执行有远见的决策,以便每次计划多个数据单元进行传输,以优化多媒体应用程序的长期效用。媒体数据的异质性使我们能够将不同数据单元之间的传输优先级表示为优先级图,这是有向无环图。此优先级图为我们提供了一种精巧的结构,可将每次将多数据单元的有远见的决策分解为多个顺序的从高优先级数据单元到低优先级的数据单元可顺序执行的有先见之明的决策,从而显着减少了计算复杂度。当先验未知多媒体数据特征和信道条件的统计知识时,我们将开发一种低复杂度的在线学习算法来更新值函数,从而捕获当前决策对未来效用的影响。仿真结果表明,所提出的解决方案明显优于现有的最新调度解决方案。

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