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首页> 外文期刊>Wireless personal communications: An Internaional Journal >Convex Combination of SISO Equalization and Blind Source Separation for MIMO Blind Equalization
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Convex Combination of SISO Equalization and Blind Source Separation for MIMO Blind Equalization

机译:MIMO盲均衡的Siso均衡和盲源分离的凸组合

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摘要

For Multiple-Input Multiple-Output (MIMO) system the received signal will suffer not only inter-symbol interference but also inter-antenna interference under frequency selective fading channel. This paper proposes a MIMO blind equalization algorithm consisting of the convex combination of Single-Input Single-Output (SISO) blind equalization algorithm and blind source separation (BSS). The main purpose of the SISO equalization algorithm is to convert the convolution channel into multiplicative channel, and the BSS algorithm is mainly used to separate the different sources. The SISO equalization algorithm used in the paper is the modified constant modulus algorithm (MCMA) because of its simplicity and effectiveness. The BSS algorithm is the constraint fitting probability density function algorithm (CFPA). The MIMO blind equalization algorithm is named as MCMA-CFPA. Moreover, a low complexity MCMA-CFPA and a dual mode algorithm based on soft switching are presented. Simulation results show that the proposed algorithms can simultaneously equalize and separate all transmission signals.
机译:对于多输入多输出(MIMO)系统,所接收的信号不仅会遭受符号间干扰,而且在频率选择性衰落通道下也是天线干扰。本文提出了一种MIMO盲均衡算法,由单输入单输出(SISO)盲均衡算法和盲源分离(BSS)组成的凸组合。 SISO均衡算法的主要目的是将卷积通道转换为乘法信道,并且BSS算法主要用于分离不同的源。本文中使用的SISO均衡算法是改进的恒定模量算法(MCMA),因为其简单性和有效性。 BSS算法是约束拟合概率密度函数算法(CFPA)。 MIMO盲均衡算法名为MCMA-CFPA。此外,介绍了基于软切换的低复杂性MCMA-CFPA和双模算法。仿真结果表明,所提出的算法可以同时均衡和分离所有传输信号。

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