Title :
Shrinkage Linear and Widely Linear Complex-Valued Least Mean Squares Algorithms for Adaptive Beamforming
Author :
Yun-Mei Shi ; Lei Huang ; Cheng Qian ; So, Hing Cheung
Author_Institution :
Shenzhen Grad. Sch., Dept. of Electron. & Inf. Eng., Harbin Inst. of Technol., Shenzhen, China
Abstract :
In this paper, shrinkage linear complex-valued least mean squares (SL-CLMS) and shrinkage widely linear complex-valued least mean squares (SWL-CLMS) algorithms are devised for adaptive beamforming. By exploiting the relationship between the noise-free a posteriori and a priori error signals, the SL-CLMS method is able to provide a variable step size to update the weight vector for the adaptive beamformer, significantly enhancing the convergence speed and decreasing the steady-state misadjustment. On the other hand, besides adopting a variable step size determined by minimizing the square of the augmented noise-free a posteriori errors, the SWL-CLMS approach exploits the noncircular properties of the signal of interest, which considerably improves the steady-state performance. Simulation results are presented to illustrate their superiority over the CLMS, complex-valued normalized LMS, variable step size, recursive least squares (RLS) algorithms and their corresponding widely linear-based schemes. Additionally, our proposed algorithms are more computationally efficient than the RLS solutions though they may have a slightly slower convergence rate.
Keywords :
array signal processing; convergence of numerical methods; least mean squares methods; vectors; RLS algorithms; SL-CLMS algorithms; SWL-CLMS algorithms; a priori error signals; adaptive beamforming; convergence rate; convergence speed; noise-free a posteriori signals; noncircular properties; recursive least squares algorithms; shrinkage linear complex-valued least mean squares; shrinkage widely linear complex-valued least mean squares; signal of interest; steady-state performance improvement; variable step size; weight vector; Algorithm design and analysis; Approximation algorithms; Convergence; Optimized production technology; Signal processing algorithms; Steady-state; Vectors; Complex-valued least mean squares (CLMS); convergence speed; shrinkage; steady-state; variable step size; widely linear;
Journal_Title :
Signal Processing, IEEE Transactions on
DOI :
10.1109/TSP.2014.2367452