Large-scale multi-user multiple-input multiple-output (MU-MIMO) systems and cloud radio access networks (C-RANs) are considered promising technologies for the fifth generation (5G) of wireless networks. In these technologies, the use of low-resolution analog-to-digital converters (ADCs) is key for energy efficiency and for complying with constrained fronthaul links. Processing signals with few bits implies a significant performance loss and, therefore, techniques that can compensate for quantization distortion are fundamental. In wireless systems, an automatic gain control (AGC) precedes the ADCs to adjust the input signal level in order to reduce the impact of quantization. In this work, we propose the joint optimization of the AGC, which works in the remote radio heads (RRHs), and a low-resolution aware (LRA) linear receive filter based on the minimum mean square error (MMSE), which works in the cloud unit (CU), for large-scale MU-MIMO systems with coarsely quantized signals. We develop linear and successive interference cancellation (SIC) receivers based on the proposed joint AGC and LRA MMSE (AGC-LRA-MMSE) approach. An analysis of the achievable sum rates along with a computational complexity study is also carried out. Simulations show that the proposed AGC-LRA-MMSE design provides substantial gains in bit error rates and achievable information rates over existing techniques.
翻译:在无线系统中,自动增益控制(AGC)先于ADC调整输入信号水平,以减少量化的影响。在这项工作中,我们提议对AGC进行联合优化,在远程无线电头(RRHs)使用低分辨率模拟数字转换器(ADCs),根据最小平均平差(MMSE)处理信号,低分辨率了解(LAC)线性接收过滤器,在云单位(CU)使用大规模MU-MIMO系统,在可分解信号的大型MIMO系统中使用。我们开发了线性和连续性干扰取消技术(SIC)接收器,以降低量化的影响。