A Semi-Blind Channel Estimation Algorithm for One-bit Massive MIMO Systems

B. Srinivas, D. Sen, S. Chakrabarti
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引用次数: 1

Abstract

Massive multiple-input-multiple-output (MIMO) uses a large number of antennas and radio frequency (RF) chains which incur a huge cost and power consumption. Since high-resolution analog-to-digital converters (ADCs) consumes a major portion of the RF chain circuit power, so one-bit massive MIMO systems are seen as one of the potential solutions to reduce the power consumption and cost associated with the RF chains. Our paper addresses channel estimation issue which is among one of the crucial needs for the practical realization of one-bit massive MIMO systems. The pilot-aided channel estimator demands additional pilots to improve the estimation accuracy which in turn reduces the spectral efficiency of the system. To overcome this, we propose an iterative semi-blind based channel estimator for one-bit massive MIMO systems. The proposed algorithm consists of two stages: initialization and iteration. The initial channel estimate is obtained from the pilot based initialization stage, which is refined further in the iteration stage with the help of both pilot and few data symbols. So, the semi-blind estimator improves estimation accuracy without the addition of extra pilot symbols into the system. Through simulations, we show that the proposed scheme achieves significant improvement against the existing pilot based estimators in terms of estimation accuracy and bit error rate (BER) at the cost of a nominal increase in the computational complexity. Further, the proposed algorithm attains convergence in almost one iteration for all the considered scenarios of one-bit massive MIMO system. Thus, the semi-blind estimator is spectral and power efficient in comparison to the existing pilot based algorithms.
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一种位大规模MIMO系统的半盲信道估计算法
大规模多输入多输出(MIMO)使用了大量的天线和射频链,产生了巨大的成本和功耗。由于高分辨率模数转换器(adc)消耗了射频链电路功率的主要部分,因此1位大规模MIMO系统被视为降低射频链相关功耗和成本的潜在解决方案之一。信道估计问题是实际实现1位大规模MIMO系统的关键问题之一。导频辅助信道估计需要额外的导频来提高估计精度,这反过来又降低了系统的频谱效率。为了克服这个问题,我们提出了一种基于迭代的半盲信道估计器,用于1位大规模MIMO系统。该算法分为初始化和迭代两个阶段。初始信道估计由导频初始化阶段得到,在迭代阶段利用导频和少量数据符号进一步细化。因此,半盲估计器在不向系统中添加额外导频符号的情况下提高了估计精度。通过仿真,我们表明所提出的方案在估计精度和误码率(BER)方面比现有的基于导频的估计器有了显著的改进,但代价是计算复杂度的名义增加。此外,该算法对所有考虑的1位大规模MIMO系统场景几乎只需一次迭代即可实现收敛。因此,与现有的基于导频的算法相比,半盲估计器具有频谱和功耗效率。
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