Compressive sensing based channel estimation for millimeter wave MIMO

S. Kirthiga
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引用次数: 2

Abstract

Millimeter waves (MMW) are meant for high data rate short range indoor communications. The indoor environment is Doppler sparse, due to slow movement of objects and humans. Thus the Doppler spread becomes negligible. Owing to this fact channel estimation using compressive sensing is used. Conventionally, training symbol based linear channel estimation techniques least squares, minimum mean square error estimation is used in the multiantenna setup. The linear techniques work with the linear combination of multipath symbols and hence computationally complex. Hence in this work, compressive sensing and least square channel estimation techniques are compared with respect to the bit error rate. Comparative analysis indicate compressive sensing achieves the same performance as least square technique with respect to bit error rate however with reduced number of samples. In compressive sensing based channel estimation, Orthogonal Matching Pursuit (OMP) is used as the reconstruction algorithm due to its fast convergence rate and reduced computational complexity.
基于压缩感知的毫米波MIMO信道估计
毫米波(MMW)用于高数据速率的短距离室内通信。由于物体和人的缓慢移动,室内环境是多普勒稀疏的。因此,多普勒频散变得可以忽略不计。由于这一事实信道估计使用压缩感知。传统上,基于训练符号的线性信道估计技术最小二乘、最小均方误差估计用于多天线设置。线性技术与多路径符号的线性组合一起工作,因此计算复杂。因此,在这项工作中,压缩感知和最小二乘信道估计技术在误码率方面进行了比较。对比分析表明,压缩感知在误码率方面与最小二乘技术具有相同的性能,但样本数量较少。在基于压缩感知的信道估计中,采用正交匹配追踪(Orthogonal Matching Pursuit, OMP)作为重构算法,其收敛速度快,计算复杂度低。
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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