We consider a cell-free hybrid massive multiple-input multiple-output (MIMO) system with $K$ users and $M$ access points (APs), each with $N_a$ antennas and $N_r< N_a$ radio frequency (RF) chains. When $K\ll M{N_a}$, efficient uplink channel estimation and data detection with reduced number of pilots can be performed based on low-rank matrix completion. However, such a scheme requires the central processing unit (CPU) to collect received signals from all APs, which may enable the CPU to infer the private information of user locations. We therefore develop and analyze privacy-preserving channel estimation schemes under the framework of differential privacy (DP). As the key ingredient of the channel estimator, two joint differentially private noisy matrix completion algorithms based respectively on Frank-Wolfe iteration and singular value decomposition are presented. We provide an analysis on the tradeoff between the privacy and the channel estimation error. In particular, we show that the estimation error can be mitigated while maintaining the same privacy level by increasing the payload size with fixed pilot size; and the scaling laws of both the privacy-induced and privacy-independent error components in terms of payload size are characterized. Simulation results are provided to further demonstrate the tradeoff between privacy and channel estimation performance.
翻译:我们考虑的是无细胞混合型大规模多投入产出(MIMO)系统,用户为KK美元,接入点为MM(APs)美元,每个用户为N美元天线,无线电频率(RF)链条为N美元。当美元时,可以使用低级矩阵完成率来进行高效的上行通道估计和数据探测,但这种系统需要中央处理股收集从所有AP(CPU)收到的信号,使CPU能够推断用户所在地的私人信息。因此,我们在差异隐私权(DP)框架内开发并分析隐私保护频道估计计划。作为频道估计的关键成分,可以分别根据Frank-Wolfe Iteration和单值分解进行两种有差别的私人热度矩阵完成算法。我们分析了隐私和频道估计误差之间的利弊。我们特别表明,通过提高有效载器保密性能的试测规模,可以在保持同一隐私水平的同时减少估计错误。