Grant-free massive random access (RA) is a promising protocol to support the massive machine-type communications (mMTC) scenario in 5G and beyond networks. In this paper, we focus on the error rate analysis in grant-free massive RA, which is critical for practical deployment but has not been well studied. We consider a two-phase frame structure, with a pilot transmission phase for activity detection and channel estimation, followed by a data transmission phase with coded data symbols. Considering the characteristics of short-packet transmission, we analyze the block error rate (BLER) in the finite blocklength regime to characterize the data transmission performance. The analysis involves characterizing the activity detection and channel estimation errors as well as applying the random matrix theory (RMT) to analyze the distribution of the post-processing signal-to-noise ratio (SNR). As a case study, the derived BLER expression is further simplified to optimize the pilot length. Simulation results verify our analysis and demonstrate its effectiveness in pilot length optimization.
翻译:免费大规模随机访问(RA)是支持5G网络内外大规模机型通信(MMTC)方案的一个很有希望的协议。在本文中,我们侧重于无赠款大规模RA的错误率分析,这对实际部署至关重要,但还没有很好研究。我们考虑一个两阶段框架结构,先是活动探测和频道估计试点传输阶段,然后是带有编码数据符号的数据传输阶段。考虑到短包装传输的特点,我们分析数据传输性能定档长系统中的块状错误率(BLERR),以说明数据传输性能特征。分析涉及活动探测和频道估计误差的特性,以及应用随机矩阵理论分析后处理信号对噪音比率的分布情况。作为案例研究,衍生的BLER表达进一步简化,以优化试验长度。模拟结果验证了我们的分析,并展示了试验长度优化的有效性。