SBL-based data-aided channel estimation for spatially evolving STTC MIMO systems

Amrita Mishra, A. Jagannatham
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Abstract

In this paper, a spatially sparse representation of the multiple-input multiple-output (MIMO) channel matrix is considered in terms of the overcomplete spatial signature dictionary comprising of the basis signature matrices which correspond to the various directional cosines at the transmit and receive antenna arrays. Further, the spatial evolution of the MIMO channel matrices is suitably captured by modeling the sparse weight vector corresponding to the significant directional cosines as a first order auto-regressive model. Towards this end, the sparse Bayesian learning (SBL) framework is employed to develop a novel pilot-based channel estimation scheme for space-time trellis coded (STTC) MIMO systems based on a time-varying spatially sparse representation of the MIMO channel. Subsequently, an enhanced data-aided channel estimation scheme is also developed by utilizing the expectation-maximization (EM) framework, which culminates in an optimal Kalman filter and smoother (KFS)-based minimum mean squared error channel estimate in the E-step followed by a modified path metric-based trellis decoder in the M-step. Additionally, the Bayesian Cramér-Rao bounds (BCRBs) corresponding to the proposed SBL-based channel estimation schemes are also developed. Finally, simulation results are presented to illustrate the superior performance of the proposed techniques and validate the analytical bounds.
空间演化STTC MIMO系统中基于sbl的数据辅助信道估计
本文考虑了多输入多输出(MIMO)信道矩阵的空间稀疏表示,该空间稀疏表示是由与发射和接收天线阵列的各种方向余弦相对应的基签名矩阵组成的过完备空间签名字典。此外,通过将显著方向余弦对应的稀疏权向量建模为一阶自回归模型,适当地捕获了MIMO信道矩阵的空间演化。随后,利用期望最大化(EM)框架开发了增强的数据辅助信道估计方案,该方案最终在e步中实现了最优卡尔曼滤波器和基于更平滑(KFS)的最小均方误差信道估计,然后在m步中实现了改进的基于路径度量的网格解码器。此外,还开发了与所提出的基于sbl的信道估计方案相对应的贝叶斯cram - rao界(bcrb)。最后,给出了仿真结果,以说明所提技术的优越性能,并验证了分析界。
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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