An improved Adaptive BeamForming Algorithm for 5G Interference-coexistence communication

Chao Li, Siye Wang
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引用次数: 4

Abstract

Coexistence of multiple wireless systems in a 5G network can cause interference in the same frequency band and deteriorate the performance of the received signal. In this paper, a novel algorithm is proposed in antenna array processing to handle interference-coexistence communication. We adopt a linear filter which is called Linearly Constrained Minimum Variance (LCMV) filter. On the basis of traditional singly linearly constrained least mean square (LC-LMS), we introduce a log-sum penalty on the coefficients and add it into the cost function. We derive the iterative formula of filter weights. By simulations in antenna environment with signal of interest, noise and interferences, we prove that the convergence rate of the new method is faster than traditional one. Moreover, the mean-square-error(MSE) of the proposed method is also verified. Experiment results demonstrate that our method has lower MSE than the traditional LC-LMS algorithm. The proposed adaptive beamforming scheme can be applied in 5G system to deal with the coexistence of signals and interferences.
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一种改进的5G共存干扰通信自适应波束形成算法
5G网络中多个无线系统共存,会造成同一频段的干扰,降低接收信号的性能。本文提出了一种新的天线阵列处理算法来处理共存干扰通信。我们采用线性约束最小方差(LCMV)滤波器。在传统的单线性约束最小均方(LC-LMS)的基础上,引入了对系数的对数和惩罚,并将其加入到代价函数中。导出了滤波器权值的迭代公式。通过在有兴趣信号、噪声和干扰的天线环境中进行仿真,证明了新方法的收敛速度比传统方法快。此外,还验证了该方法的均方误差(MSE)。实验结果表明,该方法比传统的LC-LMS算法具有更低的MSE。本文提出的自适应波束形成方案可以应用于5G系统中处理信号和干扰共存的问题。
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