MSE-based linear transceiver optimization in MIMO cognitive radio networks with imperfect channel knowledge

Xitao Gong, A. Ishaque, Guido Dartmann, G. Ascheid
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引用次数: 8

Abstract

This paper addresses the robust transceiver optimization in multiple-input and multiple-output cognitive radio network, where primary users (PUs) and secondary users (SUs) coexist in the same spectrum band. In the design of cognitive system, the performance degradation perceived by PU should be strictly restricted even with imperfect channel state information (CSI) at cognitive transmitter and receivers. Therefore, this work aims at minimizing the sum mean square error of secondary downlink network and strictly limiting the interference caused to PUs with imperfect channel knowledge. Two types of CSI error models are considered: the bounded model and the stochastic model. Since the original optimization problems are non-convex for the joint optimization, firstly it is decomposed into two subproblems to optimize the precoding and equalizers separately, then the iterative algorithms are proposed to solve the subproblems in an alternating way. The challenge is to design the efficiently solvable forms of these subproblems. For the bounded model, Schur complement lemma is utilized to convert the subproblems into convex optimization problems. For the stochastic model, the problem is formulated either according to the stochastic rule or derived for the analytical solutions. The effectiveness and robustness of proposed algorithms are evaluated by the numerical results.
信道知识不完全的MIMO认知无线网络中基于mse的线性收发器优化
本文研究了多输入多输出认知无线电网络中主用户和从用户共存于同一频段的鲁棒收发器优化问题。在认知系统的设计中,即使认知发射器和接收器的信道状态信息不完全,也应严格限制PU感知到的性能下降。因此,本工作旨在最小化二次下行网络的和均方误差,严格限制对信道知识不完善的pu造成的干扰。考虑了两种CSI误差模型:有界模型和随机模型。针对联合优化的原优化问题为非凸问题,首先将其分解为两个子问题,分别对预编码和均衡器进行优化,然后提出交替求解子问题的迭代算法。挑战在于如何设计这些子问题的有效可解形式。对于有界模型,利用Schur补引理将子问题转化为凸优化问题。对于随机模型,问题要么根据随机规则表述,要么推导出解析解。数值结果验证了所提算法的有效性和鲁棒性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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