A new two-stage reduced-dimension space-time adaptiveprocessing (STAP) approach, which combines the subcoherentprocessing interval (sub-CPI) STAP and the principalcomponent analysis (PCA), is proposed to achieve...A new two-stage reduced-dimension space-time adaptiveprocessing (STAP) approach, which combines the subcoherentprocessing interval (sub-CPI) STAP and the principalcomponent analysis (PCA), is proposed to achieve a more enhancedconvergence measure of effectiveness (MOE). Furthermore,in the case of the subspace leakage phenomenon, theproposed STAP method is modified to hold the fast convergenceMOE by using the covariance matrix taper (CMT) technique. Bothsimulation and real airborne radar data processing are providedto analyze the convergence MOE performance of the proposedSTAP methods. The results show the proposed method is moresuitable for the practical radar applications when compared withthe conventional sub-CPI STAP method.展开更多
基金supported by the National Natural Science Foundation of China(611011296122700161301089)
文摘A new two-stage reduced-dimension space-time adaptiveprocessing (STAP) approach, which combines the subcoherentprocessing interval (sub-CPI) STAP and the principalcomponent analysis (PCA), is proposed to achieve a more enhancedconvergence measure of effectiveness (MOE). Furthermore,in the case of the subspace leakage phenomenon, theproposed STAP method is modified to hold the fast convergenceMOE by using the covariance matrix taper (CMT) technique. Bothsimulation and real airborne radar data processing are providedto analyze the convergence MOE performance of the proposedSTAP methods. The results show the proposed method is moresuitable for the practical radar applications when compared withthe conventional sub-CPI STAP method.