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Expectation Propagation Detection with Neumann-Series Approximation for Massive MIMO

机译:大规模MIMO的Neumann级数逼近期望传播检测

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For massive multiple-input multiple-output (MIMO) systems, signal detection is always a key concern. Traditional detection methods such as minimum mean square error (MMSE) all suffer from a variety of problems in respect of complexity and performance when applied to large-scale MIMO systems. In this paper, expectation propagation (EP) algorithm is employed to guarantee high-accuracy and low-complexity of symbol detection in high-dimensional MIMO systems. Nevertheless, in the iterative updating process of EP algorithm, the inevitable matrix inversion operation is one of the key challenges to the realistic hardware implementation. Therefore, a new improved EP, which is termed as expectation propagation with Neumann-series approximation (EP-NSA), is firstly proposed to accommodate the complexity as well as the performance by executing an approximate matrix inversion with a small number of Neumann-series terms. Simulation results have shown that the proposed EP-NSA with two items achieves notable performance improvement compared to belief propagation (BP) detection when the system loading factor is relatively large. For antenna configurations with large loading factor, this approach achieves similar performance to MMSE while keeping lower computational complexity.
机译:对于大规模多输入多输出(MIMO)系统,信号检测始终是关键问题。当应用于最小化MIMO系统时,诸如最小均方误差(MMSE)之类的传统检测方法在复杂性和性能方面都会遭受各种问题的困扰。本文采用期望传播(EP)算法来保证高维MIMO系统中符号检测的高精度和低复杂度。然而,在EP算法的迭代更新过程中,不可避免的矩阵求逆运算是现实硬件实现的关键挑战之一。因此,首先提出了一种新的改进的EP,即所谓的Neumann级数逼近(EP-NSA)期望传播,它通过执行少量Neumann级数的近似矩阵求逆来适应复杂性和性能。条款。仿真结果表明,当系统负载因子较大时,与信念传播(BP)检测相比,提出的具有两项的EP-NSA可以显着提高性能。对于负载系数较大的天线配置,此方法可实现与MMSE相似的性能,同时保持较低的计算复杂度。

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