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Price-Based Joint Beamforming and Spectrum Management in Multi-Antenna Cognitive Radio Networks

机译:多天线认知无线电网络中基于价格的联合波束成形和频谱管理

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We consider the problem of maximizing the throughput of a multi-antenna cognitive radio (CR) network. With spatial multiplexing over each frequency band, a multi-antenna CR node controls its antenna radiation directions and allocates power for each data stream by appropriately adjusting its precoding matrix. Our objective is to design a set of precoding matrices (one per band) at each CR node so that power and spectrum are optimally allocated for the node and its interference is steered away from unintended receivers. The problem is non-convex, with the number of variables growing quadratically with the number of antenna elements. To tackle it, we translate it into a noncooperative game. We derive an optimal pricing policy for each node, which adapts to the node's neighboring conditions and drives the game to a Nash-Equilibrium (NE). The network throughput under this NE equals to that of a locally optimal solution of the non-convex centralized problem. To find the set of precoding matrices at each node (best response), we develop a low-complexity distributed algorithm by exploiting the strong duality of the convex per-user optimization problem. The number of variables in the distributed algorithm is independent of the number of antenna elements. A centralized (cooperative) algorithm is also developed. Simulations show that the network throughput under the distributed algorithm rapidly converges to that of the centralized one. Finally, we develop a MAC protocol that implements our resource allocation and beamforming scheme. Extensive simulations show that the proposed protocol dramatically improves the network throughput and reduces power consumption.
机译:我们考虑使多天线认知无线电(CR)网络的吞吐量最大化的问题。通过在每个频带上进行空间复用,多天线CR节点控制其天线辐射方向,并通过适当调整其预编码矩阵为每个数据流分配功率。我们的目标是在每个CR节点上设计一组预编码矩阵(每个频带一个),以便为该节点分配最佳的功率和频谱,并避免不必要的接收机受到干扰。问题是非凸的,变量的数量与天线元件的数量呈二次方增长。为了解决这个问题,我们将其转化为非合作游戏。我们为每个节点得出最佳定价策略,该策略会适应节点的邻近条件并将游戏推向Nash均衡(NE)。该NE下的网络吞吐量等于非凸集中式问题的本地最优解决方案的吞吐量。为了找到每个节点处的预编码矩阵集(最佳响应),我们利用凸的每用户优化问题的强对偶性,开发了一种低复杂度的分布式算法。分布式算法中变量的数量与天线元件的数量无关。还开发了集中式(合作)算法。仿真表明,分布式算法下的网络吞吐量迅速收敛到集中式算法。最后,我们开发了一种MAC协议,该协议实现了我们的资源分配和波束成形方案。大量的仿真表明,所提出的协议极大地提高了网络吞吐量,并降低了功耗。

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