With the rapid development of Internet of Things (IoT), low earth orbit (LEO) satellite IoT is expected to provide low power, massive connectivity and wide coverage IoT applications. In this context, this paper provides a massive grant-free random access (GF-RA) scheme for LEO satellite IoT. This scheme does not need to change the transceiver, but transforms the received signal to a tensor decomposition form. By exploiting the characteristics of the tensor structure, a Bayesian learning algorithm for joint active device detection and channel estimation during massive GF-RA is designed. Theoretical analysis shows that the proposed algorithm has fast convergence and low complexity. Finally, extensive simulation results confirm its better performance in terms of error probability for active device detection and normalized mean square error for channel estimation over baseline algorithms in LEO satellite IoT. Especially, it is found that the proposed algorithm requires short preamble sequences and support massive connectivity with a low power, which is appealing to LEO satellite IoT.
翻译:随着物的互联网的迅速发展,低地轨道卫星IoT预计将提供低功率、大规模连通和广覆盖面的IoT应用。在这方面,本文件为低地轨道卫星IoT提供了大规模无赠款随机访问(GF-RA)计划。这一计划不需要改变收发器,而是将收到的信号转换为发光分解形式。通过利用强电结构的特性,设计了一种巴伊西亚学习算法,用于在大规模GF-RA期间联合积极设备探测和频道估计。理论分析表明,拟议的算法快速趋同和复杂程度低。最后,广泛的模拟结果证实,在主动装置探测的误差概率方面表现更好,在对低地轨道卫星IoT基线算法的频道估计上,出现正常平均平方差。特别发现,拟议的算法需要简短的序言序列,并支持与低电站进行大规模连接,这对低地轨道卫星IoT具有吸引力。