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Energy saving in heterogeneous cellular network via transfer reinforcement learning based policy

机译:基于转移强化学习的政策,通过转移强化的功能节省

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Energy efficient operation of heterogeneous networks (HetNets) has become extremely crucial owing to their fast increasing deployment. This work presents a novel approach in which an actor-critic (AC) reinforcement learning (RL) framework is used to enable traffic based ON/OFF switching of base stations (BSs) in a HetNet leading to a reduction in overall energy consumption. Further, previously estimated traffic statistics is exploited in future scenarios which speeds up the learning process and provide additional improvement in energy saving. The presented scheme leads to up to 82% drop in energy consumption which is a quite significant amount. Furthermore, the analysis of system delay and energy saving trade-off is done.
机译:由于越来越快地部署,异构网络(Hetnets)的节能运行变得非常关键。这项工作提出了一种新的方法,其中演员 - 评论家(AC)加强学习(RL)框架用于在HetNet中基于/关闭基站(BSS)的流量,从而降低总能量消耗。此外,以前估计的交通统计数据在将来的情况下利用,从而加速了学习过程并提供了节能的额外改进。所提出的方案导致能耗降至82%下降,这是一个相当大的量。此外,完成了系统延迟和节能权衡的分析。

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