CooperativeQ:基于合作强化学习的节能通道访问

M. Emre, Gürkan Gür, S. Bayhan, Fatih Alagöz
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引用次数: 8

摘要

认知无线电(CR)具有发现未使用频谱的能力,有望提高频谱效率——这是5G网络的迫切要求。然而,CR将这种能力归功于耗电任务,尤其是频谱传感。考虑到电池容量的进步比设备能力和流量增长的进步要慢,开发节能的CR协议至关重要。为此,我们从能源效率的角度关注频谱传感和接入。我们的建议CooperativeQ允许每个CR根据其缓冲区占用率、缓冲区容量和对主通道状态的观察来决定其行动的能效目标。与传统的强化学习不同的是,CooperativeQ使cr能够定期与他人分享他们的本地知识。有了这些信息,CR选择对当前时隙采取的动作:(i)空转,(ii)感知,(iii)如果信道被决定为空转,则将传输功率调整到其中一个功率水平。我们在不同的PU通道类型、怠速惩罚系数和信息共享周期下评估了我们的建议的性能。我们的研究结果表明,由于其自适应和学习能力以及合作操作模式,CooperativeQ优于贪婪吞吐量最大化方法或随机信道选择。
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CooperativeQ: Energy-efficient channel access based on cooperative reinforcement learning
Cognitive Radio (CR) with the capability of discovering the unused spectrum promises higher spectrum efficiency - a pressing requirement for 5G networks. However, CR owes this capability to power-hungry tasks, most particularly to spectrum sensing. Given that advances in battery capacity has a slower pace compared to advances in device capabilities and traffic growth, it is paramount to develop energy-efficient CR protocols. To this end, we focus on spectrum sensing and access from an energy efficiency perspective. Our proposal CooperativeQ lets each CR decide with an energy efficiency objective on its actions based on its buffer occupancy, buffer capacity, and its observations about the primary channel states. Different than traditional reinforcement learning, CooperativeQ facilitates CRs to share their local knowledge with others periodically. With this information, CR chooses which action to take for the current time slot: (i) idling, (ii) sensing, and (iii) if channel is decided to be idle adapting transmission power to one of the power levels. We evaluate the performance of our proposal under various PU channel types, idling penalty coefficient, and information sharing period. Our results show that CooperativeQ outperforms greedy throughput-maximizing approach or a random channel selection owing to its adaptation and learning capability as well as cooperative mode of operation.
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