Reinforcement Learning Based Handoff for Millimeter Wave Heterogeneous Cellular Networks

IEEE Global Communications Conference(2017)

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摘要
The millimeter wave (mmWave) radio band is promising for the next-generation heterogeneous cellular networks (HetNets) due to its large bandwidth available for meeting the increasing demand of mobile traffic. However, the unique propagation characteristics at mmWave band cause huge redundant handoffs in mmWave HetNets if conventional Reference Signal Received Power (RSRP) based handoff mechanism is used. In this paper, we propose a reinforcement learning based handoff policy named LESH to reduce the number of handoffs while maintaining user Quality of Service (QoS) requirements in mmWave HetNets. In LESH, we determine handoff trigger conditions by taking into account both mmWave channel characteristics and QoS requirements of UEs. Furthermore, we propose reinforcement-learning based BS selection algorithms for different UE densities. Numerical results show that in typical scenarios, LESH can significantly reduce the number of handoffs when compared with traditional handoff policies.
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关键词
millimeter wave heterogeneous cellular networks,millimeter wave radio band,next-generation heterogeneous cellular networks,mobile traffic,mmWave HetNets,LESH,handoff trigger conditions,reinforcement-learning based BS selection algorithms,redundant handoffs,Reference Signal Received Power based handoff mechanism,reinforcement learning based handoff policy,RSRP,user Quality of Service requirements,QoS requirements
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