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Delay-aware massive random access for machine-type communications via hierarchical stochastic learning

机译:通过分层随机学习对机器类型的通信进行延迟感知的大规模随机访问

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In this paper, we study the delay-aware access control of massive random access for machine-type communications (MTC). We model this stochastic optimization problem as an infinite horizon average cost Markov decision process. To deal with the distributive requirement and the exponential computational complexity, we first exploit the property of successful access probability to transform the coupling to the constraint on the number of MTC devices attempting to access. As a result, we decompose the Bellman equation into multiple fixed point equations for each MTC device by primal-dual decomposition. Based on the equivalent per-MTC fixed point equations, we propose the online hierarchical stochastic learning algorithm to estimate the local Q-factors and determine the access decision at the MTC devices separately with the assistance of the base station which broadcasts common control information only. Finally, the simulation result shows that the proposed hierarchical stochastic learning algorithm has significant performance gain over the baseline algorithm.
机译:在本文中,我们研究了机器类型通信(MTC)的大规模随机访问的延迟感知访问控制。我们将此随机优化问题建模为无限远景平均成本马尔可夫决策过程。为了处理分配需求和指数计算复杂性,我们首先利用成功访问概率的性质将耦合转换为对尝试访问的MTC设备数量的约束。结果,我们通过原始对偶分解将Bellman方程分解为每个MTC设备的多个不动点方程。基于等效的每个MTC不动点方程,我们提出了一种在线分层随机学习算法,以估计局部Q因子,并借助仅广播公共控制信息的基站分别在MTC设备上确定访问决策。最后,仿真结果表明,所提出的分层随机学习算法具有比基线算法明显的性能提升。

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