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On the MIMO Capacity with Multiple Linear Transmit Covariance Constraints

机译:在具有多个线性传输协方差约束的MIMO容量上

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This paper presents an efficient approach to computing the capacity of multiple-input multiple-output (MIMO) channels under multiple linear transmit covariance constraints (LTCCs). LTCCs are general enough to include several special types of power constraints as special cases such as the sum power constraint (SPC), per-antenna power constraint (PAPC), or a combination thereof. Despite its importance and generality, most of the existing literature considers either SPC or PAPC independently. Efficient solutions to the computation of the MIMO capacity with a combination of SPC and PAPC have been recently reported, but were only dedicated to multiple-input single-output (MISO) systems. For the general case of LTCCs, we propose a low-complexity semi-closed-form approach to the computation of the MIMO capacity. Specifically, a modified minimax duality is first invoked to transform the considered problem in the broadcast channel into an equivalent minimax problem in the dual multiple access channel. Then alternating optimization and concave-convex procedure are utilized to derive water-filling-based algorithms to find a saddle point of the minimax problem. This is different from the state-of-the-art solutions to the considered problem, which are based on interior-point or subgradient methods. Analytical and numerical results are provided to demonstrate the effectiveness of the proposed low-complexity solution under various MIMO scenarios.
机译:本文介绍了计算多输入多输入多输出(MIMO)信道的容量的有效方法,在多个线性发送协方差约束(LTCC)下。 LTCCS足够通用,以包括几种特殊类型的功率约束作为特殊情况,例如SUM功率约束(SPC),每个天线功率约束(PAPC)或其组合。尽管其重要性和普遍性,但大多数现有文献都认为SPC或PAPC独立。最近报告了使用SPC和PAPC组合计算MIMO容量的高效解决方案,但仅专用于多输入单输出(MISO)系统。对于LTCCS的一般情况,我们提出了一种低复杂性半闭合形式方法来计算MIMO容量。具体地,首先调用修改的Minimax二元性以将广播信道中的所考虑的问题转换为双多访问信道中的等效最小值问题。然后,利用交替优化和凹凸过程来导出基于水填充的算法以找到最小问题的马鞍点。这与所考虑的问题的最先进的解决方案不同,这是基于内部点或子缩影方法。提供分析和数值结果以证明在各种MIMO情景下提出的低复杂性解决方案的有效性。

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