Tensor completion-based 5G positioning with partial channel measurements

Fuxi Wen, T. Svensson
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Abstract

5G mmWave communication systems have promising properties for high precision user localization and environment mapping. Such information is of high value for emerging applications such as connected automated driving (CAD), and it has also potential to be explored to substantially improve efficiency and reliability of mmWave communications itself. However, the acquisition of such information cannot come with too large overhead in the system. Existing studies have so far relied on complete channel measurements, implying a prohibitive channel training overhead. In this paper, we exploit the possibility of 5G positioning using partial channel measurements. We utilize a tensor completion technique to recover the complete channel information from low rank channel measurements. Simulation results demonstrate the trade-off between user positioning accuracy and channel training overhead, and show that sub-meter precision with negligible performance loss is feasible at sample ratio reductions of at least 30%, and meter level precision is achievable with sample ratio reduction of 50%.
基于张量完井的5G定位与部分信道测量
5G毫米波通信系统在高精度用户定位和环境映射方面具有良好的性能。这些信息对于互联自动驾驶(CAD)等新兴应用具有很高的价值,并且在大幅提高毫米波通信本身的效率和可靠性方面也具有潜力。然而,在系统中获取这些信息不能带来太大的开销。到目前为止,现有的研究都依赖于完整的通道测量,这意味着令人望而却步的通道训练开销。在本文中,我们利用部分信道测量利用5G定位的可能性。我们利用张量补全技术从低秩信道测量中恢复完整的信道信息。仿真结果证明了用户定位精度和信道训练开销之间的权衡,并表明在样本比减少至少30%的情况下,可以实现性能损失可以忽略不计的亚米级精度,在样本比减少50%的情况下可以实现米级精度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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