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EP-Based Joint Active User Detection and Channel Estimation for Massive Machine-Type Communications

机译:基于EP的联合主动用户检测和信道估计,用于大规模机器类型通信

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摘要

Massive machine-type communication (mMTC) is a newly introduced service category in 5G wireless communication systems to support a variety of Internet-of-Things (IoT) applications. In recovering sparsely represented multi-user vectors, compressed sensing-based multi-user detection (CS-MUD) can be used. CS-MUD is a feasible solution to the grant-free uplink non-orthogonal multiple access (NOMA) environments. In CS-MUD, active user detection (AUD) and channel estimation (CE) should be performed before data detection. In this paper, we propose the expectation propagation-based joint AUD and CE (EP-AUD/CE) technique for mMTC networks. The EP algorithm is a Bayesian framework that approximates a computationally intractable probability distribution to an easily tractable distribution. The proposed technique finds a close approximation of the posterior distribution of the sparse channel vector. Using the approximate distribution, AUD and CE are jointly performed. We show by numerical simulations that the proposed technique substantially enhances AUD and CE performances over competing algorithms.
机译:大规模机器类型通信(mMTC)是5G无线通信系统中新推出的服务类别,可支持各种物联网(IoT)应用程序。在恢复稀疏表示的多用户向量中,可以使用基于压缩感知的多用户检测(CS-MUD)。 CS-MUD是无授予上行链路非正交多路访问(NOMA)环境的可行解决方案。在CS-MUD中,应在数据检测之前执行主动用户检测(AUD)和信道估计(CE)。在本文中,我们为mMTC网络提出了基于期望传播的AUD和CE联合技术(EP-AUD / CE)。 EP算法是贝叶斯框架,将计算上难以处理的概率分布近似为易于处理的分布。所提出的技术找到了稀疏通道向量的后验分布的近似值。使用近似分布,可以同时执行AUD和CE。我们通过数值模拟表明,与竞争算法相比,所提出的技术大大提高了AUD和CE性能。

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