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Congestion control based ant colony optimization algorithm for large MIMO detection

机译:基于拥塞控制的蚁群优化算法在大型MIMO检测中的应用

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摘要

Employing multiple antennas in wireless communication systems is a key technology for future generation of wireless systems. Symbol detection in multiple-input multiple-output (MIMO) systems with low complexity is challenging. The minimum bit error rate (BER) performance can be achieved by maximum likelihood (ML) detection. However, with increase in number of antennas in MIMO systems, the ML detection becomes impractical. For example, sphere decoder (SD) is a well known ML detector for MIMO systems, however because of its high complexity it is practical only up to 32 real dimensions. Recently, bio-inspired algorithms are being used for improving the BER performance of MIMO symbol detector, along with low complexity. In this article, we propose a congestion control based ant colony optimization (CC-ACO) algorithm for large MIMO detection. We also discuss the robustness of the proposed algorithm under channel state information (CSI) estimation error. The simulation results shows the effectiveness of the proposed algorithm in terms of achieving better bit error rate (BER) performance with low complexity.
机译:在无线通信系统中使用多个天线是下一代无线系统的关键技术。具有低复杂度的多输入多输出(MIMO)系统中的符号检测具有挑战性。最小误码率(BER)性能可以通过最大似然(ML)检测来实现。然而,随着MIMO系统中天线数量的增加,ML检测变得不切实际。例如,球形解码器(SD)是用于MIMO系统的众所周知的ML检测器,但是由于其复杂性高,实际最多只能使用32个实际尺寸。近来,具有生物启发性的算法正以低复杂度被用于改善MIMO符号检测器的BER性能。在本文中,我们提出了一种用于大型MIMO检测的基于拥塞控制的蚁群优化(CC-ACO)算法。我们还讨论了信道状态信息(CSI)估计误差下该算法的鲁棒性。仿真结果表明,该算法在以较低的复杂度实现更好的误码率(BER)性能方面是有效的。

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