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Resource Allocation Optimization for Delay-Sensitive Traffic in Fronthaul Constrained Cloud Radio Access Networks

机译:前程受限云无线接入网中时延敏感流量的资源分配优化

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The cloud radio access network (C-RAN) provides high spectral and energy efficiency performances, low expenditures, and intelligent centralized system structures to operators, which have attracted intense interests in both academia and industry. In this paper, a hybrid coordinated multipoint transmission (H-CoMP) scheme is designed for the downlink transmission in C-RANs and fulfills the flexible tradeoff between cooperation gain and fronthaul consumption. The queue-aware power and rate allocation with constraints of average fronthaul consumption for the delay-sensitive traffic are formulated as an infinite horizon constrained partially observed Markov decision process, which takes both the urgent queue state information and the imperfect channel state information at transmitters (CSIT) into account. To deal with the curse of dimensionality involved with the equivalent Bellman equation, the linear approximation of post decision value functions is utilized. A stochastic gradient algorithm is presented to allocate the queue-aware power and transmission rate with H-CoMP, which is robust against unpredicted traffic arrivals and uncertainties caused by the imperfect CSIT. Furthermore, to substantially reduce the computing complexity, an online learning algorithm is proposed to estimate the per-queue postdecision value functions and update the Lagrange multipliers. The simulation results demonstrate performance gains of the proposed stochastic gradient algorithms and confirm the asymptotical convergence of the proposed online learning algorithm.
机译:云无线电接入网(C-RAN)为运营商提供了高频谱和能效性能,较低的支出以及智能的集中式系统结构,这引起了学术界和行业的强烈兴趣。本文针对C-RAN中的下行传输设计了一种混合协调多点传输(H-CoMP)方案,该方案实现了协作增益与前馈消耗之间的灵活权衡。将对延迟敏感的流量的平均前传消耗约束的队列感知功率和速率分配表述为无限地平线约束的部分观察到的马尔可夫决策过程,该过程同时获取了发射机的紧急队列状态信息和不完善的信道状态信息( CSIT)。为了处理与等效Bellman方程有关的维数诅咒,利用了后决策值函数的线性逼近。提出了一种随机梯度算法,用于通过H-CoMP分配队列感知功率和传输速率,该算法对于未预期的流量到达和CSIT不完善引起的不确定性具有鲁棒性。此外,为了显着降低计算复杂度,提出了一种在线学习算法来估计每个队列的后决策值函数并更新拉格朗日乘数。仿真结果证明了所提出的随机梯度算法的性能提高,并证实了所提出的在线学习算法的渐近收敛性。

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