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Robust Beamforming and Power Allocation in CR MISO Networks with SWIPT to Maximize the Minimum Achievable Rate

机译:CR MISO网络中的强大波束成形和功率分配,具有SWIPT,以最大限度地提高最低可实现的速率

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摘要

In this paper, a new method is presented to maximize the minimum achievable rate of the users in a cognitive radio multiple input single output network. The secondary system provides simultaneous wireless information and power transfer (SWIPT) for energy harvesting receivers. Considering random Gaussian vector for the estimation error of the channel state information (CSI), we impose some outage constraints to guarantee the quality of service of the network. Outage constraints on the received power and the information leakage at the energy harvesting users are imposed to assure SWIPT. We introduce new convex inequalities to replace the original non-convex constraints and write the objective function as the minimization of the maximum of some fractional functions. This new objective function and convex inequalities result in a new quasi-convex general fractional programming problem. The new quasi-convex optimization problem is written in such a way that the computational costs to solve this problem are as low as possible. We develop an algorithm to obtain the optimal beamforming weights and artificial noise covariance matrix. All stochastic constraints are rewritten for the special case that the covariance matrices of error in the estimation of CSI are a factor of identity matrix. This reformulation results in less computation costs to obtain optimal beamforming weights and AN covariance matrix. Simulation results confirm that, all stochastic constraints are satisfied with certain probability. In comparison with the previous robust related work, the proposed method achieves higher rates which confirms superiority of our method.
机译:在本文中,提出了一种新方法,以最大化认知无线电多输入单输出网络中用户的最小可实现率。辅助系统提供了用于能量收集接收器的同时无线信息和电力传输(SWIPT)。考虑对频道状态信息(CSI)的估计误差的随机高斯向量,我们强加一些中断约束,以保证网络的服务质量。施加了对收到的电力的中断限制和能量收集用户的信息泄漏,以确保Swipt。我们介绍了新的凸不等式,以取代原始的非凸起约束,并将目标函数写入最小化某些分数函数的最小化。这种新的目标函数和凸不等式导致新的准凸一般分数编程问题。新的准凸优化问题是以这样的方式编写的,即解决此问题的计算成本低于可能。我们开发了一种算法来获得最佳波束成形权重和人工噪声协方差矩阵。对于特殊情况,所有随机约束都被重写,即CSI估计中的错误的协方差矩阵是身份矩阵的一个因素。该重构导致较少的计算成本以获得最佳波束成形权重和协方差矩阵。仿真结果证实,所有随机约束都满足了某些概率。与以前的鲁棒相关工作相比,所提出的方法达到更高的速率,即确认我们方法的优越性。

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