Radar sensing will be integrated into the 6G communication system to support various applications. In this integrated sensing and communication system, a radar target may also be a communication channel scatterer. In this case, the radar and communication channels exhibit certain joint burst sparsity. We propose a two-stage joint pilot optimization, target detection and channel estimation scheme to exploit such joint burst sparsity and pilot beamforming gain to enhance detection/estimation performance. In Stage 1, the base station (BS) sends downlink pilots (DP) for initial target search, and the user sends uplink pilots (UP) for channel estimation. Then the BS performs joint target detection and channel estimation based on the reflected DP and received UP signals. In Stage 2, the BS exploits the prior information obtained in Stage 1 to optimize the DP signal to achieve beamforming gain and further refine the performance. A Turbo Sparse Bayesian inference algorithm is proposed for joint target detection and channel estimation in both stages. The pilot optimization problem in Stage 2 is a semi-definite programming with rank-1 constraints. By replacing the rank-1 constraint with a tight and smooth approximation, we propose an efficient pilot optimization algorithm based on the majorization-minimization method. Simulations verify the advantages of the proposed scheme.
翻译:将雷达遥感纳入6G通信系统,以支持各种应用。在这一综合的遥感和通信系统中,雷达目标也可能是通信频道散射器。在这种情况下,雷达和通信频道展示了某些联合爆破信号。我们提出一个两阶段联合试点优化、目标探测和频道估计计划,以利用这种联合爆发的聚变和实验波束增益,加强探测/估计性能。在第一阶段,基地台发送下行连接试验(DP)进行初步目标搜索,用户发送连接试(UP)进行频道估计。然后,BS根据反映的DP进行联合目标探测和频道估计,并接收UP信号。在第二阶段,BS利用在第一阶段获得的先前信息优化DP信号,以取得成形收益和进一步改进性能。建议采用Turbo Sparse Bayesian 推断算法,以便在两个阶段进行联合目标检测和频道估计。第二阶段的试点优化问题是一种具有一级制约的半确定性方案。通过紧凑和平稳的近似近似值来取代一级限制。我们提议以主要模拟法为基础的有效试算法。