With the explosive growth in mobile data traffic, ultra-dense network (UDN) where a large number of small cells are densely deployed on top of macro cells has received a great deal of attention in recent years. While UDN offers a number of benefits, an upsurge of energy consumption in UDN due to the intensive deployment of small cells has now become a major bottleneck in achieving the primary goals viz., 100-fold increase in the throughput in 5G+ and 6G. In recent years, an approach to reduce the energy consumption of base stations (BSs) by selectively turning off the lightly-loaded BSs, referred to as the sleep mode technique, has been suggested. However, determining the appropriate active/sleep modes of BSs is a difficult task due to the huge computational overhead and inefficiency caused by the frequent BS mode conversion. An aim of this paper is to propose a deep reinforcement learning (DRL)-based approach to achieve a reduction of energy consumption in UDN. Key ingredient of the proposed scheme is to use decision selection network to reduce the size of action space. Numerical results show that the proposed scheme can significantly reduce the energy consumption of UDN while ensuring the rate requirement of network.
翻译:随着移动数据传输的爆炸性增长,近年来,在大型细胞之上密集部署大量小型细胞的超常网络(UDN)近年来受到极大关注,尽管UDN带来一些好处,但UDN由于大量部署小细胞而导致的能源消耗激增,现已成为实现首要目标的一个主要瓶颈,即5G+和6G的输送量增加了100倍。近年来,通过有选择地关闭轻装BS(称为睡眠模式技术),以减少基站的能源消耗。但建议采用一种方法,通过选择性地关闭轻载BS(称为睡眠模式技术),减少基站的能源消耗。然而,确定BS的适当活动/睡眠模式是一项艰巨的任务,因为频繁的BS模式转换导致计算间接费用巨大,效率低下。本文的目的是提出一种以深度强化学习(DRL)为基础的方法,以减少UDN的能源消耗量。拟议计划的关键成分是利用决定选择网络,以减少行动空间的大小。Nmerical结果显示,拟议的计划可以大大降低能源消耗率,同时确保能源消耗率。NUD计划表明,拟议的计划可以大大降低能源消耗率。