...
首页> 外文期刊>Signal Processing, IEEE Transactions on >Decomposition Principles and Online Learning in Cross-Layer Optimization for Delay-Sensitive Applications
【24h】

Decomposition Principles and Online Learning in Cross-Layer Optimization for Delay-Sensitive Applications

机译:延迟敏感应用的跨层优化中的分解原理和在线学习

获取原文
获取原文并翻译 | 示例
           

摘要

In this paper, we propose a general cross-layer optimization framework for delay-sensitive applications over single wireless links in which we explicitly consider both the heterogeneous and dynamically changing characteristics (e.g., delay deadlines, dependencies, distortion impacts, etc.) of delay-sensitive applications and the underlying time-varying channel conditions. We first formulate this problem as a nonlinear constrained optimization by assuming complete knowledge of the application characteristics and the underlying channel conditions. This constrained cross-layer optimization is then decomposed into several subproblems, each corresponding to the cross-layer optimization for one DU. The proposed decomposition method explicitly considers how the cross-layer strategies selected for one DU will impact its neighboring DUs as well as the DUs that depend on it through the resource price (associated with the resource constraint) and neighboring impact factors (associated with the scheduling constraints). However, the attributes (e.g., distortion impact, delay deadline, etc.) of future DUs as well as the channel conditions are often unknown in the considered real-time applications. In this case, the cross-layer optimization is formulated as a constrained Markov decision process (MDP) in which the impact of current cross-layer actions on the future DUs can be characterized by a state-value function. We then develop a low-complexity cross-layer optimization algorithm using online learning for each DU transmission. This online optimization utilizes information only about the previous transmitted DUs and past experienced channel conditions, which can be easily implemented in real-time in order to cope with unknown source characteristics, channel dynamics and resource constraints. Our numerical results demonstrate the efficiency of the proposed online algorithm.
机译:在本文中,我们为单个无线链路上对延迟敏感的应用程序提出了一个通用的跨层优化框架,在该框架中,我们明确考虑了延迟的异构和动态变化特征(例如,延迟期限,依赖性,失真影响等)。敏感的应用程序以及潜在的时变信道条件。我们首先假设完全了解应用程序特性和潜在的信道条件,将其表示为非线性约束优化问题。然后,将这种受约束的跨层优化分解为几个子问题,每个子问题对应于一个DU的跨层优化。拟议的分解方法明确考虑了为一个DU选择的跨层策略将如何通过资源价格(与资源约束)和邻近影响因素(与调度相关)对相邻的DU以及依赖于该DU的DU产生影响。约束)。然而,在所考虑的实时应用中,未来DU的属性(例如,失真影响,延迟期限等)以及信道条件通常是未知的。在这种情况下,跨层优化被公式化为受约束的马尔可夫决策过程(MDP),其中当前跨层操作对未来DU的影响可以通过状态值函数来表征。然后,我们针对每个DU传输使用在线学习来开发一种低复杂度的跨层优化算法。这种在线优化仅利用有关先前传输的DU和过去经历的信道状况的信息,可以轻松地实时实现这些信息,以应对未知的源特性,信道动态和资源限制。我们的数值结果证明了该在线算法的有效性。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号