基于深度学习的射频供电通信集成信息与能量中继

G. Prasad, Deepak Mishra
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引用次数: 3

摘要

射频功率采集中的能量传输(ET)和端到端通信中的信息传输(IT)受到所考虑的网络传输范围的阻碍。这可以通过在ET和IT操作中采用协作中继来解决。然而,在实际未知的环境中进行组合操作需要基于学习的算法来获得有效的能量管理和数据通信的最佳策略。为了解决这一问题,本文提出了一种基于深度确定性策略梯度(DDPG)的深度学习算法,为综合信息和能量中继(i2ER)网络提供最优在线策略下的连续行动过程。在所设计的非凸问题中,在给定中继节点和源节点能量的约束下,实现端到端通信的4个阶段的长期平均净比特率最大化。通过大量的仿真,我们对所提出的算法在学习期间和学习后的传输和学习率的不同调制下的性能有了不同的见解。最后,将实现的i2ER网络比特率与贪婪基准方案的性能进行了比较,提高了62%。
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Deep Learning Based Integrated Information and Energy Relaying in RF Powered Communication
Energy transfer (ET) in RF powered harvesting as well as information transfer (IT) in end-to-end communication is obstructed by range of transmission in the network under consideration. This can be resolved by employing a cooperative relay in both ET and IT operations. However, involving the composite operations in a practically unknown environment require a learning based algorithms to obtain an optimal policy for efficient energy management and data communication together. To confront it, here, we propose a deep learning algorithm based on deep deterministic policy gradient (DDPG), providing continuous course of actions under optimal online policy for integrated information and energy relaying (i2ER) network. In the designed nonconvex problem, the long-term average net bit rate of the end-to-end communication is maximized in four phases of operations under the given constraints on the harvested energy at relay and source nodes. Via extensive simulations, various insights are obtained on the performance of the proposed algorithm in different used modulation for transmission and learning rate while and after learning. Lastly, the achieved bit rate in the i2ER network is compared with the performance of a greedy benchmark scheme and get an improvement upto 62%.
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