TY - JOUR
T1 - A differential evolution approach for robust adaptive beamforming based on joint estimation of look direction and array geometry
AU - Mallipeddi, R.
AU - Lie, J. P.
AU - Suganthan, P. N.
AU - Razul, S. G.
AU - See, C. M.S.
PY - 2011
Y1 - 2011
N2 - The performance of traditional beamformers tends to degrade due to inaccurate estimation of covariance matrix and imprecise knowledge of array steering vector. The inaccurate estimation of covariance matrix can be attributed to limited data samples and the presence of desired signal in the training data. The mismatch between the actual and presumed steering vectors can be due to the error in the position (geometry) and/or in the look direction estimate. In this paper, we propose a differential evolution (DE) based robust adaptive beamforming that is able to achieve near optimal performance even in the presence of geometry error. Initially, we estimate an optimal steering vector by maximizing and minimizing the signal power in and out of the desired signal's angular range, respectively. Then, we estimate the look direction and reconstruct the covariance matrix. Based on the obtained steering vector, estimate for look direction and reconstructed covariance matrix, near optimal output SINR, can be obtained with the increase in the input SNR without observing any saturation even in the presence of geometry error. Numerical simulations are presented to demonstrate the e±cacy of the proposed algorithm.
AB - The performance of traditional beamformers tends to degrade due to inaccurate estimation of covariance matrix and imprecise knowledge of array steering vector. The inaccurate estimation of covariance matrix can be attributed to limited data samples and the presence of desired signal in the training data. The mismatch between the actual and presumed steering vectors can be due to the error in the position (geometry) and/or in the look direction estimate. In this paper, we propose a differential evolution (DE) based robust adaptive beamforming that is able to achieve near optimal performance even in the presence of geometry error. Initially, we estimate an optimal steering vector by maximizing and minimizing the signal power in and out of the desired signal's angular range, respectively. Then, we estimate the look direction and reconstruct the covariance matrix. Based on the obtained steering vector, estimate for look direction and reconstructed covariance matrix, near optimal output SINR, can be obtained with the increase in the input SNR without observing any saturation even in the presence of geometry error. Numerical simulations are presented to demonstrate the e±cacy of the proposed algorithm.
UR - https://www.scopus.com/pages/publications/80052420150
U2 - 10.2528/PIER11052205
DO - 10.2528/PIER11052205
M3 - Article
AN - SCOPUS:80052420150
SN - 1070-4698
VL - 119
SP - 381
EP - 394
JO - Progress in Electromagnetics Research
JF - Progress in Electromagnetics Research
ER -