In this work, the uplink channel estimation problem is considered for a millimeter wave (mmWave) multi-input multi-output (MIMO) system. It is well known that pilot overhead and computation complexity in estimating the channel increases with the number of antennas and the bandwidth. To overcome this, the proposed approach allows the channel estimation at the base station to be aided by the sensing information. The sensing information contains an estimate of scatterers locations in an environment. A simultaneous weighting orthogonal matching pursuit (SWOMP) - sparse Bayesian learning (SBL) algorithm is proposed that efficiently incorporates this sensing information in the communication channel estimation procedure. The proposed framework can cope with scenarios where a) scatterers present in the sensing information are not associated with the communication channel and b) imperfections in the scatterers' location. Simulation results show that the proposed sensing aided channel estimation algorithm can obtain good wideband performance only at the cost of fractional pilot overhead. Finally, the Cramer-Rao Bound (CRB) for the angle estimation and multipath channel gains in the SBL is derived, providing valuable insights into the local identifiability of the proposed algorithms.
翻译:在这项工作中,考虑对一个毫米波(mmWave)多投入多输出(MSIMO)系统使用上链路估计问题。众所周知,在估计频道时,实验性间接费用和计算复杂性随着天线和带宽的数量增加而增加。为了克服这一点,拟议办法允许基站的频道估计得到遥感信息的帮助。遥感信息载有对环境中散落物位置的估计。同时进行权重或地平匹配(SWOMP) - 稀有的Bayesian学习算法(SBL)建议有效地将这种感测信息纳入通信频道估计程序。拟议的框架可以应对下述情形:在感测信息中存在的散落体与通信渠道无关的情况;以及(b)散落点位置的不完善情况。模拟结果表明,拟议的遥感辅助频道估计算法只有在以小数试验间接费用的成本才能取得良好的宽带性工作表现。最后,为SBL的角估测和多路通道收益而得出的Cramer-Raound(CRB)算法(CRB)提供了宝贵的洞测算法。