论文标题
与mmwave的集成感测和通信大量mimo:压缩抽样的观点
Integrated Sensing and Communication with mmWave Massive MIMO: A Compressed Sampling Perspective
论文作者
论文摘要
集成的传感和通信(ISAC)为实现未来的无线系统打开了许多改变游戏规则的机会。在本文中,我们提出了一个依靠毫米波(MMWave)大量多输入多输出(MIMO)系统的ISAC处理框架。具体而言,我们提供了压缩采样(CS)透视图来促进ISAC处理,这不仅可以恢复高维通道状态信息或/和雷达成像信息,而且还可以显着减少飞行员开销。首先,针对雷达接收器量身定制了节能较大的阵列(WSA)架构,该体系结构以角度模棱两可的成本增强了雷达传感的角度分辨率。然后,我们为考虑不同的时间尺度的时变ISAC系统提出了ISAC框架结构。通过考虑混合波束成形(HBF)体系结构引起的CS理论和硬件约束,通过考虑CS理论和硬件约束,是明智地设计的。接下来,我们设计了WSA专用词典,该字典是将ISAC处理作为稀疏信号恢复问题制定的基础。提出了正交匹配的追求(OMP-SR)算法,以有效地解决角度歧义存在的问题。我们还提供了一个框架,用于在有效载荷数据传输过程中估算多普勒频率以保证通信性能。仿真结果证明了在拟议的ISAC框架下的通信和雷达传感的良好性能。
Integrated sensing and communication (ISAC) has opened up numerous game-changing opportunities for realizing future wireless systems. In this paper, we propose an ISAC processing framework relying on millimeter-wave (mmWave) massive multiple-input multiple-output (MIMO) systems. Specifically, we provide a compressed sampling (CS) perspective to facilitate ISAC processing, which can not only recover the high-dimensional channel state information or/and radar imaging information, but also significantly reduce pilot overhead. First, an energy-efficient widely spaced array (WSA) architecture is tailored for the radar receiver, which enhances the angular resolution of radar sensing at the cost of angular ambiguity. Then, we propose an ISAC frame structure for time-varying ISAC systems considering different timescales. The pilot waveforms are judiciously designed by taking into account both CS theories and hardware constraints induced by hybrid beamforming (HBF) architecture. Next, we design the dedicated dictionary for WSA that serves as a building block for formulating the ISAC processing as sparse signal recovery problems. The orthogonal matching pursuit with support refinement (OMP-SR) algorithm is proposed to effectively solve the problems in the existence of the angular ambiguity. We also provide a framework for estimating the Doppler frequencies during payload data transmission to guarantee communication performances. Simulation results demonstrate the good performances of both communications and radar sensing under the proposed ISAC framework.