In most existing grant-free (GF) studies, the two key tasks, namely active user detection (AUD) and payload data decoding, are handled separately. In this paper, a two-step dataaided AUD scheme is proposed, namely the initial AUD step and the false alarm correction step respectively. To implement the initial AUD step, an embedded low-density-signature (LDS) based preamble pool is constructed. In addition, two message passing algorithm (MPA) based initial estimators are developed. In the false alarm correction step, a redundant factor graph is constructed based on the initial active user set, on which MPA is employed for data decoding. The remaining false detected inactive users will be further recognized by the false alarm corrector with the aid of decoded data symbols. Simulation results reveal that both the data decoding performance and the AUD performance are significantly enhanced by more than 1:5 dB at the target accuracy of 10^3 compared with the traditional compressed sensing (CS) based counterparts
翻译:在大多数现有的无赠款(GF)研究中,两项关键任务,即主动用户探测(AUD)和有效载荷数据解码(有效用户探测)分别处理。在本文件中,提出一个两步数据辅助AUD计划,即最初的AUD步骤和错误警报更正步骤。为了实施最初的AUD步骤,将建立一个嵌入的低密度签名(LDS)序言集合库。此外,还开发了两个基于初始估计器的信息传递算法(MPA)。在错误警报更正步骤中,根据最初的主动用户集(使用MPA解码(数据解码)来解码(数据),构建了一个冗余要素图。其余发现的不活动用户将得到错误警报更正器的进一步识别,并辅以解码数据符号。模拟结果显示,数据解码性表现和AUD的性能,与传统的压缩感(CS)对应方相比,在10+3的目标精度上,大大增强1.5 dB。