Greenly offloading traffic in stochastic heterogeneous cellular networks

Xianfu Chen, Tao Chen, Celimuge Wu, M. Lasanen
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引用次数: 2

Abstract

This paper puts forwards an on-line reinforcement learning framework for the problem of traffic offloading in a stochastic Markovian heterogeneous cellular network (HCN), where the time-varying traffic demand of mobile terminals (MTs) can be offloaded from macrocells to small-cells. Our aim is to minimize the average energy consumption of the HCN while maintaining the Quality-of-Service (QoS) experienced by MTs. For each cell (i.e., a macrocell or a small-cell), the energy consumption is determined by its system load which is coupled with the system loads served in other cells due to the sharing over a common frequency band. We model the energy-aware traffic offloading in such HCNs as a constrained Markov decision process (C-MDP). The statistics of the C-MDP depends on a selected traffic offloading strategy and thus, the actions performed by a network controller have a long-term impact on the network state evolution. Based on the traffic demand observations and the traffic offloading operations, the controller gradually optimizes the strategy with no prior knowledge of the process statistics. Numerical experiments are conducted to show the effectiveness of the proposed learning framework in balancing the tradeoff between energy saving and QoS satisfaction.
随机异构蜂窝网络中的绿色分流流量
针对随机马尔可夫异构蜂窝网络(HCN)中的流量分流问题,提出了一种在线强化学习框架,其中移动终端的时变流量需求可以从大蜂窝网络分流到小蜂窝网络。我们的目标是最小化HCN的平均能量消耗,同时保持MTs所经历的服务质量(QoS)。对于每个小区(即,大型小区或小型小区),能量消耗取决于其系统负载,由于在公共频带上共享,该系统负载与其他小区中服务的系统负载相结合。我们将此类HCNs中的能量感知流量卸载建模为约束马尔可夫决策过程(C-MDP)。C-MDP的统计数据取决于所选择的流量卸载策略,因此,网络控制器执行的操作对网络状态演变有长期影响。基于流量需求观测和流量卸载操作,控制器在不知道进程统计的前提下逐步优化策略。数值实验表明,所提出的学习框架在平衡节能和QoS满意度之间的权衡方面是有效的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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