大规模MIMO系统的分散递归MMSE均衡器

Kang Zheng, Hao Gao, Shuai Cui, Jiaheng Wang, Yongming Huang
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引用次数: 0

摘要

在大规模多输入多输出(MIMO)系统中,线性均衡器如零强迫(ZF)和最小均方误差(MMSE)均衡器通常被集中使用和实现。随着天线数量的增加,集中式均衡需要庞大的数据交换速率和密集的中央处理能力。分散均衡可以通过将天线阵列划分为多个簇,并单独地和局部地进行均衡来缓解这一瓶颈。本文设计了一种基于链结构的去中心化MMSE均衡器。所提出的均衡器以递归方式通过链进行,并生成收敛到MMSE解决方案的估计信号序列。此外,我们还根据信道质量提出了一种早期终止策略,从而降低了复杂性和数据交换速率。仿真结果表明,所提出的递归MMSE均衡器优于现有的分散式均衡器,在较低的数据交换速率下实现了与集中式MMSE均衡器相同的误码率性能。
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Decentralized Recursive MMSE Equalizer for Massive MIMO Systems
In massive multiple-input multiple-output (MIMO) systems, linear equalizers such as zero-forcing (ZF) and minimum mean-square error (MMSE) equalizers are often used and implemented in a centralized way. As the antenna number increases, the centralized equalization requires a huge data exchange rate as well as intensive central processing capability. Decentralized equalization can alleviate this bottleneck by partitioning the antenna array into multiple clusters and conducting equalization separately and locally. In this paper, we design a decentralized MMSE equalizer based on the chain architecture. The proposed equalizer is conducted in a recursive manner through a chain and generates a sequence of estimated signals that converge to the MMSE solution. Furthermore, we also propose an early termination strategy according to channel quality, thus reducing complexity and data exchange rate. Simulation results illustrate that the proposed recursive MMSE equalizer outperforms the existing decentralized equalizer, and achieves the same BER performance as the centralized MMSE equalizer with a lower data exchange rate.
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