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Deep Reinforcement Learning Based Spinal Code Transmission Strategy in Long Distance FSO Communication

机译:基于深度强化学习的长距离FSO通信中的脊髓代码传输策略

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We consider a deep reinforcement learning based Spinal code transmission strategy to reduce resource consumption and improve channel utilization while guaranteeing communication quality in long-distance free space optical (FSO) communication. First, a deep Q network is established to model the channel state-action value function, and then the neural network approximation value function is trained so as to determine the number of Spinal code symbols that should be transmitted for effective communication under current channel conditions. The final simulation results show that compared with the basic spinal code transmission mechanism and the adjustment algorithm based on linear filtering, the average throughput of the system using the proposed algorithm is improved by 26% -34%.
机译:我们考虑基于深度加强学习的脊柱代码传输策略,以降低资源消耗,并提高信道利用,同时保证远程自由空间光学(FSO)通信中的通信质量。首先,建立一个深度Q网络以模拟信道状态 - 动作值函数,然后训练神经网络近似值函数,以便确定应在当前信道条件下发送以进行有效通信的脊柱代码符号的数量。最终仿真结果表明,与基于线性滤波的基本脊柱码传输机制和调整算法相比,使用该算法的系统平均吞吐量得到了26%-34

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