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A New Approach for Sparse Bayesian Channel Estimation in SCMA Uplink Systems

机译:SCMA上行系统中稀疏贝叶斯频道估计的一种新方法

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The rapid growth of traffic and number of simultaneously available devices leads to the new challenges in constructing fifth generation wireless networks (5G). To handle with them various schemes of non-orthogonal multiple access (NOMA) were proposed. One of these schemes is Sparse Code Multiple Access (SCMA), which is shown to achieve better link level performance. In order to support SCMA signal decoding channel estimation is needed and sparse Bayesian learning framework may be used to reduce the requirement of pilot overhead. In this paper we propose a modification of sparse Bayesian learning based channel estimation algorithm that is shown to achieve better accuracy of user detection and faster convergence in numerical simulations.
机译:交通的快速增长和同时可用的设备的数量导致构建第五代无线网络(5G)的新挑战。为了处理它们,提出了各种非正交多通道(NOMA)的方案。其中一个方案是稀疏代码多访问(SCMA),其显示为实现更好的链路级性能。为了支持SCMA信号解码信道估计,并且可以使用稀疏的贝叶斯学习框架来减少导频开销的要求。在本文中,我们提出了一种修改了基于稀疏的贝叶斯学习的信道估计算法,其显示在数值模拟中实现了更好的用户检测和更快的收敛性的准确性。

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