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首页> 外文期刊>Communications, China >Interference alignment in two-way relay networks via rank constraints rank minimization
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Interference alignment in two-way relay networks via rank constraints rank minimization

机译:通过等级约束等级最小化的双向中继网络中的干扰对准

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摘要

Interference alignment (IA) is one of the promising measures for the multi-user network to manage interference. The rank constraints rank minimization means that interference spans the lowest dimensional subspace and the useful signal spans all available spatial dimensions. In order to improve the performance of two-way relay network, we can use rank constrained rank minimization (RCRM) to solve the IA problem. This paper proposes left reweighted nuclear norm minimization-γ algorithm and selective coupling reweighted nuclear norm minimization algorithm to implement interference alignment in two-way relay networks. The left reweighted nuclear norm minimization-γ algorithm is based on reweighted nuclear norm minimization algorithm and has a novel γ choosing rule. The selective coupling reweighted nuclear norm minimization algorithm weighting methods choose according to singular value of interference matrixes. Simulation results show that the proposed algorithms considerably improve the sum rate performance and achieve the higher average achievable multiplexing gain in two-way relay interference networks.
机译:干扰对齐(IA)是多用户网络管理干扰的有希望的措施之一。等级约束等级最小化意味着干扰跨越了最低维子空间,有用信号跨越了所有可用空间维。为了提高双向中继网络的性能,我们可以使用秩约束秩最小化(RCRM)来解决IA问题。提出了左重加权核规范最小化γ算法和选择性耦合重加权核规范最小化算法,以实现双向中继网络中的干扰对准。左重加权核范数最小化-γ算法基于重加权核范数最小化算法,具有新颖的γ选择规则。选择性耦合重加权核范数最小化算法的加权方法是根据干扰矩阵的奇异值选择的。仿真结果表明,所提出的算法在双向中继干扰网络中大大提高了求和率性能,并实现了更高的平均可复用增益。

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