Generalized Nearest Neighbor Decoding: General Input Constellation and a Case Study of Interference Suppression

Shuqin Pang, Wenyi Zhang
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Abstract

In this work, generalized nearest neighbor decoding (GNND), a recently proposed receiver architecture, is studied for channels under general input constellations, and multiuser uplink interference suppression is employed as a case study for demonstrating its potential. In essence, GNND generalizes the wellknown nearest neighbor decoding, by introducing a symbol-level memoryless processing step, which can be rendered seamlessly compatible with Gaussian channel-based decoders. First, criteria of the optimal GNND are derived for general input constellations, expressed in the form of conditional moments matching, thereby generalizing the prior work which has been confined to Gaussian input. Then, the optimal GNND is applied to the use case of multiuser uplink, for which the optimal GNND is shown to be capable of achieving information rates nearly identical to the channel mutual information. By contrast, the commonly used channel linearization (CL) approach incurs a noticeable rate loss. A coded modulation scheme is subsequently developed, aiming at implementing GNND using off-the-shelf channel codes, without requiring iterative message passing between demodulator and decoder. Through numerical experiments it is validated that the developed scheme significantly outperforms the CL-based scheme.
广义近邻解码:通用输入星座和干扰抑制案例研究
本研究针对一般输入构型下的信道,研究了最近提出的广义近邻解码(GNND)接收器架构,并将多用户上行链路干扰抑制作为案例研究,以展示其潜力。从本质上讲,GNND 通过引入符号级无记忆处理步骤,推广了众所周知的近邻解码,可与基于高斯信道的解码器无缝兼容。首先,最优 GNND 的标准是针对一般输入星座得出的,以条件矩匹配的形式表示,从而推广了之前仅限于高斯输入的工作。然后,将最优 GNND 应用于多用户上行链路的使用情况,结果表明最优 GNND 能够实现与信道互信息几乎相同的信息速率。相比之下,常用的信道线性化(CL)方法会产生明显的速率损失。随后开发了一种编码调制方案,旨在利用现成的信道编码实现 GNND,而无需在解调器和解码器之间进行迭代信息传递。通过数值实验,验证了所开发的方案明显优于基于信道编码的方案。
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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