In this work, we present a joint channel estimation, activity detection and data decoding scheme for massive machine-type communications. By including the channel and the a priori activity factor in the factor graph, we present the bilinear message-scheduling GAMP (BiMSGAMP), a message-passing solution that uses the channel decoder beliefs to refine the activity detection and data decoding. We include two message-scheduling strategies based on the residual belief propagation and the activity user detection in which messages are evaluated and scheduled in every new iteration. An analysis of the convergence of BiMSGAMP along with a study of its computational complexity is carried out. Numerical results show that BiMSGAMP outperforms state-of-the-art algorithms, highlighting the gains achieved by using the dynamic scheduling strategies and the effects of the channel decoding part in the system.
翻译:在这项工作中,我们提出了一个大型机器类型通信的联合频道估计、活动探测和数据解码计划,通过将频道和先验活动系数纳入系数图,我们提出了双线电文排入GAMMP(BIMSGAMP),这是一个信息传递解决方案,利用频道解码器的信念改进活动探测和数据解码,我们包括基于剩余信仰传播和活动用户探测的两种信息排入战略,在每一个新的迭代中评价和安排信息。对BIMSGAMMP的趋同及其计算复杂性研究进行了分析。数字结果显示,BIMSGAMP超越了最新算法,突出了通过使用动态排入战略和频道解码部分在系统中的效果。