1 research outputs found
Regularization Parameter Selection Method for Sign LMS with Reweighted L1-Norm Constriant Algorithm
Broadband frequency-selective fading channels usually have the inherent
sparse nature. By exploiting the sparsity, adaptive sparse channel estimation
(ASCE) algorithms, e.g., least mean square with reweighted L1-norm constraint
(LMS-RL1) algorithm, could bring a considerable performance gain under
assumption of additive white Gaussian noise (AWGN). In practical scenario of
wireless systems, however, channel estimation performance is often deteriorated
by unexpected non-Gaussian mixture noises which include AWGN and impulsive
noises. To design stable communication systems, sign LMS-RL1 (SLMS-RL1)
algorithm is proposed to remove the impulsive noise and to exploit channel
sparsity simultaneously. It is well known that regularization parameter (REPA)
selection of SLMS-RL1 is a very challenging issue. In the worst case,
inappropriate REPA may even result in unexpected instable convergence of
SLMS-RL1 algorithm. In this paper, Monte Carlo based selection method is
proposed to select suitable REPA so that SLMS-RL1 can achieve two goals: stable
convergence as well as usage sparsity information. Simulation results are
provided to corroborate our studies.Comment: 19 pages, 5 figures, submitted for journal. arXiv admin note: text
overlap with arXiv:1503.0080