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Reinforcement Learning Based Decision Fusion Scheme for Cooperative Spectrum Sensing in Cognitive Radios

机译:基于增强学习的认知无线电合作频谱感知决策融合方案

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Spectrum Sensing is a key module in Cognitive Radios (CR) for detecting spectrum holes. The performance of spectrum sensing algorithms is compromised due to channel impairments, such as, multi-path fading and shadowing. Cooperative Spectrum Sensing (CSS) scheme mitigates the above issues and improves the spatial diversity gain of Secondary Users (SUs). In this paper, we present Reinforcement Learning (RL) based CSS scheme with the objective of improving cooperative sensing accuracy by maximizing expected cumulative reward. Using reinforcement learning, the Fusion Center(FC) makes a global decision by interacting with the radio environment which consists of cooperative SUs and primary transmitter. The cooperative SUs are deployed randomly in a fading wireless channel environment modeled as a Markov Decision Process (MDP). The optimal solution of RL based CSS algorithm is formulated using policy iteration to meet the requirements of IEEE 802.22 Wireless Regional Area Network (WRAN) standard. The simulation results show that the RL based CSS scheme improves the detection performance under channel fading/shadowing and overall cooperative learning capability.
机译:频谱感测是认知无线电(CR)中用于检测频谱空洞的关键模块。频谱感测算法的性能由于诸如多径衰落和阴影之类的信道损伤而受到损害。合作频谱感知(CSS)方案缓解了上述问题,并提高了辅助用户(SU)的空间分集增益。在本文中,我们提出了基于强化学习(RL)的CSS方案,其目的是通过最大化预期的累积奖励来提高协作感测的准确性。通过加强学习,Fusion Center(FC)通过与由协作SU和主要发射机组成的无线电环境进行交互来做出全局决策。协作SU随机部署在建模为马尔可夫决策过程(MDP)的衰落无线信道环境中。使用策略迭代制定了基于RL的CSS算法的最佳解决方案,以满足IEEE 802.22无线局域网(WRAN)标准的要求。仿真结果表明,基于RL的CSS方案提高了信道衰落/阴影和整体协同学习能力下的检测性能。

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