Interference alignment in two-way relay networks via rank constraints rank minimization
China Communications(2017)
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.
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关键词
Minimization,Interference,Relay networks (telecommunications),Couplings,Signal processing algorithms,Artificial neural networks
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