In the massive machine-type communication (mMTC) scenario, a large number of devices with sporadic traffic need to access the network on limited radio resources. While grant-free random access has emerged as a promising mechanism for massive access, its potential has not been fully unleashed. In particular, the common sparsity pattern in the received pilot and data signal has been ignored in most existing studies, and auxiliary information of channel decoding has not been utilized for user activity detection. This paper endeavors to develop advanced receivers in a holistic manner for joint activity detection, channel estimation, and data decoding. In particular, a turbo receiver based on the bilinear generalized approximate message passing (BiG-AMP) algorithm is developed. In this receiver, all the received symbols will be utilized to jointly estimate the channel state, user activity, and soft data symbols, which effectively exploits the common sparsity pattern. Meanwhile, the extrinsic information from the channel decoder will assist the joint channel estimation and data detection. To reduce the complexity, a low-cost side information-aided receiver is also proposed, where the channel decoder provides side information to update the estimates on whether a user is active or not. Simulation results show that the turbo receiver is able to reduce the activity detection, channel estimation, and data decoding errors effectively, while the side information-aided receiver notably outperforms the conventional method with a relatively low complexity.
翻译:在大规模机型通信(MMTC)设想中,大量交通零星的装置需要利用有限的无线电资源进入网络。尽管免费随机访问已成为大范围访问的一个很有希望的机制,但其潜力尚未完全释放。特别是,大多数现有研究忽视了收到的试点和数据信号中常见的广度模式,而且没有利用频道解码的辅助信息来探测用户活动。本文件力求以整体的方式开发先进的接收器,以便联合活动探测、频道估计和数据解码。特别是,开发了一个以双线通用近似信息传输(BIG-AMP)算法为基础的涡轮接收器。在这个接收器中,收到的所有符号都将被用来共同估计频道状态、用户活动以及软数据符号,有效地利用共同的扰动模式。与此同时,频道解码器的外部信息将有助于联合频道估计和数据检测。为了降低复杂性,还提议了一个低成本的侧信息辅助接收器,在该接收器以双线通用信息传递近似传递信息(BIG-AMP)算法的基础上,频道的解译器将用来对常规检测活动进行快速的估算,而Simderderdro 则能显示常规数据评估结果。