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Adaptive MIMO Reduced-Rank Equalization Based on Joint Iterative Least Squares Optimization of Estimators

机译:基于关节迭代最小二乘优化的估算器的自适应MIMO降低秩均衡

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This paper presents a novel adaptive reduced-rank multi-input-multi-output (MIMO) linear equalization structure based on joint iterative optimization of adaptive filters. The proposed reduced-rank linear equalization structure consists of a joint iterative optimization of two equalization stages, namely, a projection matrix that performs dimensionality reduction and a reduced-rank linear equalization filter that retrieves the desired transmitted symbol. The novel linear reduced-rank structure is responsible for cancelling the inter-antenna interference caused by the associated data streams and exploiting the available degrees of freedom at the antenna-array receiver. We describe least squares (LS) expressions for the design of the projection matrix and the reduced-rank filter along with computationally efficient recursive least squares (RLS) adaptive estimation algorithms. Simulations for a MIMO linear equalization application show that the proposed scheme outperforms the state-of-the-art reduced-rank and the conventional estimation algorithms at about the same complexity.
机译:本文提出了一种新的自适应降秩的多输入多输出基于自适应滤波器的联合迭代优化(MIMO)线性均衡结构。所提出的降秩线性均衡结构由两个均衡阶段,即一个投影矩阵,其执行降维和一个降秩线性均衡滤波器,其检索所期望的发送符号的联合迭代优化的。新颖的线性降秩结构是负责取消引起的相关联的数据流的相互干扰天线并在天线阵列接收器利用可用的自由度。我们描述最小二乘法(LS)表达式的投影矩阵的设计,并用计算有效的递归最小二乘(RLS)的自适应估计算法沿降秩滤波器。模拟用于MIMO线性均衡应用表明,所提出的方案优于状态的最先进的降秩和在大约相同的复杂性的常规估计算法。

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