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Sparse Channel Reconstruction With Nonconvex Regularizer via DC Programming for Massive MIMO Systems

机译:具有非直流编程的非透射法规范器的稀疏通道重建,用于大规模MIMO系统

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Sparse channel estimation for massive multiple-input multiple-output systems has drawn much attention in recent years. The required pilots are substantially reduced when the sparse channel state vectors can be reconstructed from a few numbers of measurements. A popular approach for sparse reconstruction is to solve the least-squares problem with a convex regularization. However, the convex regularizer is either too loose to force sparsity or lead to biased estimation. In this paper, the sparse channel reconstruction is solved by minimizing the least-squares objective with a nonconvex regularizer, which can exactly express the sparsity constraint and avoid introducing serious bias in the solution. A novel algorithm is proposed for solving the resulting nonconvex optimization via the difference of convex functions programming and the gradient projection descent. Simulation results show that the proposed algorithm is fast and accurate, and it outperforms the existing sparse recovery algorithms in terms of reconstruction errors.
机译:大量多输入多输出系统的稀疏信道估计近年来绘制了很多关注。当可以从几个测量值重建稀疏信道状态向量时,所需的导频基本上减小。一种流行的稀疏重建方法是通过凸正则化解决最小二乘问题。然而,凸规律器要么过于松动,以强制稀疏性或导致偏见估计。在本文中,通过用非凸常规器最小化目标来解决稀疏信道重建,该非凸常规器可以精确地表达稀疏性约束,并避免在解决方案中引入严重偏差。提出了一种新的算法,用于通过凸函数编程和梯度投影血迹的差来解决产生的非凸化优化。仿真结果表明,该算法快速准确,在重建误差方面优于现有的稀疏恢复算法。

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