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Joint resource allocation for learning-based cognitive radio networks with MIMO-OFDM relay-aided transmissions

机译:具有MIMO-OFDM中继辅助传输的基于学习的认知无线电网络的联合资源分配

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In this paper, we investigate the joint power allocation for dual-hop amplify-and-forward (AF) MIMO-OFDM cognitive radio (CR) networks. The considered AF MIMO-OFDM CR network coexists with a primary radio (PR) network through underlay spectrum sharing. In order to mitigate the interference to the PR network, environmental learning algorithm is adopted to blindly estimate the null space of the PR user, which are orthogonal to the PR communication channels. With necessary channel state information, under independent transmit power constraints as well as the interference constraints, the power allocation of CR source and relay and subcarrier pairing over two hops are optimized jointly to maximize the CR network throughput. Furthermore, the relay node implements an effective subcarrier permutation policy to enhance the performance further at the cost of affordable complexity. Finally, the performance advantages of the proposed algorithm are demonstrated by the simulation results.
机译:在本文中,我们研究了双跳扩增和前进(AF)MIMO-OFDM认知无线电(CR)网络的关节电力分配。通过底层频谱共享,所考虑的AF MIMO-OFDM CR网络与主无线电(PR)网络共存。为了减轻对PR网络的干扰,采用环境学习算法来盲目地估计PR用户的空区,其与PR通信信道正交。对于必要的信道状态信息,在独立的发射功率约束以及干扰约束下,CR源和继电器的功率分配和两次跳过的CR源和子载波配对,以便最大化CR网络吞吐量。此外,中继节点实现有效的子载波置换策略,以以经济实惠的复杂性的成本进一步增强性能。最后,通过模拟结果证明了所提出的算法的性能优势。

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