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Multistep linear predictors-based blind identification and equalization of multiple-input multiple-output channels

机译:基于多步线性预测变量的多输入多输出通道盲辨识和均衡

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Channel estimation and blind equalization of multiple-input multiple-output (MIMO) communications channels is considered using primarily the second-order statistics of the data. Such models arise when single receiver data from multiple sources is fractionally sampled (assuming that there is excess bandwidth) or when an antenna array is used with or without fractional sampling. We consider the estimation of (partial) channel impulse response and design of finite-length minimum mean-square error (MMSE) blind equalizers. We extend the multistep linear prediction approach to MIMO channels where the multichannel transfer function need not be column reduced. Moreover, we allow infinite impulse response (IIR) channels as well as the case where the "subchannel" transfer functions have common zeros. In the past, this approach has been confined to SIMO finite impulse response (FIR) channels with no common subchannel zeros. A related existing approach applicable to MIMO channels is restricted to FIR column-reduced systems with equal length subchannels. In our approach, the knowledge of the nature of the underlying model (FIR or IIR) or the model order is not required. Our approach works when the "subchannel" transfer functions have common zeros, as long as the common zeros are minimum-phase zeros. The sources are recovered up to a unitary mixing matrix and are further "unmixed" using higher order statistics of the data. Illustrative computer simulation examples are provided.
机译:主要使用数据的二阶统计量来考虑多输入多输出(MIMO)通信信道的信道估计和盲均衡。当对来自多个源的单个接收器数据进行部分采样(假设存在多余带宽)时,或者使用天线阵列进行部分采样或不进行部分采样时,就会出现此类模型。我们考虑(部分)信道脉冲响应的估计和有限长度最小均方误差(MMSE)盲均衡器的设计。我们将多步线性预测方法扩展到无需减少列多通道传递函数的MIMO通道。此外,我们允许无限脉冲响应(IIR)通道以及“子通道”传递函数具有公共零的情况。过去,这种方法仅限于没有公共子信道零的SIMO有限脉冲响应(FIR)信道。适用于MIMO信道的相关现有方法限于具有相等长度的子信道的FIR列缩减系统。在我们的方法中,不需要了解基础模型(FIR或IIR)的性质或模型顺序。当“子通道”传递函数具有公共零时,只要公共零是最小相位零,我们的方法就会起作用。将源恢复到统一的混合矩阵,然后使用数据的更高阶统计量进一步“取消混合”。提供了说明性计算机仿真示例。

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