Author_Institution :
Center for Eng. Syst. Adv. Res., Oak Ridge Nat. Lab., Oak Ridge, TN, USA
Abstract :
We propose a sparsity-based space-time adaptive processing (STAP) algorithm to detect a slowly-moving target using an orthogonal frequency division multiplexing (OFDM) radar. We observe that the target and interference spectra are inherently sparse in the spatio-temporal domain. Hence, we exploit that sparsity to develop an efficient STAP technique that utilizes considerably lesser number of secondary data and produces an equivalent performance as the other existing STAP techniques. In addition, the use of an OFDM signal increases the frequency diversity of our system, as different scattering centers of a target resonate at different frequencies, and thus improves the target detectability. First, we formulate a realistic sparse-measurement model for an OFDM radar considering both the clutter and jammer as the interfering sources. Then, we apply a residual sparse-recovery technique based on the LASSO estimator to estimate the target and interference covariance matrices, and subsequently compute the optimal STAP-filter weights. Our numerical results demonstrate a comparative performance analysis of the proposed sparse-STAP algorithm with four other existing STAP methods. Furthermore, we discover that the OFDM-STAP filter-weights are adaptable to the frequency-variabilities of the target and interference responses, in addition to the spatio-temporal variabilities. Hence, by better utilizing the frequency variabilities, we propose an adaptive OFDM-waveform design technique, and consequently gain a significant amount of STAP-performance improvement.
Keywords :
OFDM modulation; adaptive filters; covariance matrices; radar clutter; radar signal processing; radiofrequency interference; space-time adaptive processing; LASSO estimator; OFDM radar space-time adaptive processing; OFDM signal; OFDM-STAP filter-weights; adaptive OFDM-waveform design technique; interference covariance matrices; interference response frequency-variabilities; interference spectra; interfering sources; optimal STAP-filter weights; orthogonal frequency division multiplexing radar; radar clutter; radar jammer; realistic sparse-measurement model; residual sparse-recovery technique; secondary data; slowly-moving target; sparsity-based STAP algorithm; sparsity-based space-time adaptive processing algorithm; spatio-temporal domain; spatio-temporal sparsity; target response frequency-variabilities; target scattering centers; Clutter; Covariance matrix; Jamming; OFDM; Radar; Vectors; Adaptive waveform design; OFDM radar; generalized eigenvalue-eigenvector; residual sparse-recovery; space-time adaptive processing; spatio-temporal sparsity;