基于mle的无授权大容量接入的设备活动检测

Wang Liu, Ying Cui, Feng Yang, Lianghui Ding, Jun Sun
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引用次数: 2

摘要

近年来,无授权访问被提出作为支持物联网(IoT)中大规模机器类型通信(mMTC)的基本技术。现有的大多数设备活动检测研究要么不使用信道统计,要么为了简单而假设瑞利衰落。在更一般的衰落模型下的设备活动检测仍然是开放的。为了解决这一问题,本文考虑了专家衰落,提出了一种基于极大似然估计(MLE)的设备活动检测方法。首先,我们将设备活动的估计表述为一个最大似然问题。然后,在坐标下降法的基础上,提出了一种迭代算法,对所有的坐标优化问题进行解析求解,从而得到非凸MLE问题的一个平稳点。最后,数值结果证明了该方法相对于现有解决方案的显著改进,并为实际的mMTC大规模免授权访问提供了重要的设计见解。本文的研究结果推广了瑞利衰落的研究结果,具有一定的实用意义。
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MLE-based Device Activity Detection for Grant-free Massive Access under Rician Fading
Recently, grant-free access is proposed as an essential technique for supporting massive machine-type communications (mMTC) for the Internet of Things (IoT). Most existing studies on device activity detection either make no use of channel statistics or assume Rayleigh fading for simplicity. Device activity detection under more general fading models remains open. To shed some light, this paper considers Rician fading and proposes a maximum likelihood estimation (MLE)-based device activity detection method. First, we formulate the estimation of device activities as an MLE problem. Then, based on the coordinate descent (CD) method, we develop an iterative algorithm, where all coordinate optimization problems are solved analytically, to obtain a stationary point of the non-convex MLE problem. Finally, numerical results demonstrate the notable gains of the proposed method over the existing solutions and offer important design insights into practical massive grant-free access for mMTC. The results in this paper generalize those for Rayleigh fading and have practical sense.
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