The fog radio access network (Fog-RAN) has been considered a promising wireless access architecture to help shorten the communication delay and relieve the large data delivery burden over the backhaul links. However, limited by conventional inflexible communication design, Fog-RAN cannot be used in some complex communication scenarios. In this study, we focus on investigating a more intelligent Fog-RAN to assist the communication in a high-speed railway environment. Due to the train's continuously moving, the communication should be designed intelligently to adapt to channel variation. Specifically, we dynamically optimize the power allocation in the remote radio heads (RRHs) to minimize the total network power cost considering multiple quality-of-service (QoS) requirements and channel variation. The impact of caching on the power allocation is considered. The dynamic power optimization is analyzed to obtain a closed-form solution in certain cases. The inherent tradeoff among the total network cost, delay and delivery content size is further discussed. To evaluate the performance of the proposed dynamic power allocation, we present an invariant power allocation counterpart as a performance comparison benchmark. The result of our simulation reveals that dynamic power allocation can significantly outperform the invariant power allocation scheme, especially with a random caching strategy or limited caching resources at the RRHs.
翻译:雾无线电接入网(Fog-RAN)被认为是一个有希望的无线接入架构,有助于缩短通信延迟,减轻回航连接的巨大数据传输负担。然而,由于受传统不灵活的通信设计的限制,Fog-RAN无法在某些复杂的通信情况下使用。在这项研究中,我们的重点是调查一个更智能的Fog-RAN,以协助高速铁路环境中的通信。由于火车不断移动,通信设计应明智,以适应频道变异。具体地说,我们应优化远程无线电头(RRRHs)的电力分配,以尽量减少整个网络的电力成本,同时考虑到多种服务质量要求和频道变异。考虑到对电力分配的影响。对动态电力优化的分析是为了在某些情况下获得封闭式的解决方案。进一步讨论了总网络成本、延迟和交付内容大小之间的内在权衡。为了评估拟议的动态电力分配的绩效,我们提出了一个动态电源分配对应方,作为绩效比较基准。我们模拟的结果显示,动态电力分配的任意动力分配办法可以大大超过动态战略,特别是不断变动的系统。