Title :
Radar waveform design in a spectrally crowded environment via nonconvex quadratic optimization
Author :
Aubry, A. ; De Maio, A. ; Piezzo, M. ; Farina, A.
Author_Institution :
IREA, Naples, Italy
Abstract :
Radar signal design in a spectrally crowded environment is a very challenging and topical problem due to the increasing demand for both military surveillance/remote-sensing capabilities and civilian wireless services. This paper deals with the synthesis of optimized radar waveforms ensuring spectral compatibility with the overlayed licensed electromagnetic radiators. A priori information, for instance, provided by a radio environmental map (REM), is exploited to force a spectral constraint on the radar waveform, which is thus the result of a constrained optimization process aimed at improving some radar performances (such as detection, sidelobes, resolution, tracking). The feasibility of the waveform optimization problem is extensively studied, and a solution technique leading to an optimal waveform is proposed. The procedure requires the relaxation of the original problem into a convex optimization problem and involves a polynomial computational complexity. At the analysis stage, the waveform performance is studied in terms of trade-off among the achievable signal to interference plus noise ratio (SINR), spectral shape, and the resulting autocorrelation function (ACF).
Keywords :
computational complexity; convex programming; interference (signal); quadratic programming; radar signal processing; radio networks; ACF; REM; SINR; autocorrelation function; civilian wireless services; constrained optimization process; electromagnetic radiators; military surveillance-remote sensing capabilities; nonconvex quadratic optimization; optimized radar waveforms; polynomial computational complexity; radar signal design; radar waveform design; radio environmental map; signal to interference plus noise ratio; spectral compatibility; spectral constraint; spectral shape; spectrally crowded environment; topical problem; waveform optimization problem; Interference; Optimization; Radar remote sensing; Radar tracking; Signal to noise ratio; Vectors;
Journal_Title :
Aerospace and Electronic Systems, IEEE Transactions on
DOI :
10.1109/TAES.2014.120731