Litcius/Paper detail

Low-Complexity Sparse Array Synthesis Based on Off-Grid Compressive Sensing

Songjie Yang, Baojuan Liu, Zhiqin Hong, Zhongpei Zhang

2022IEEE Antennas and Wireless Propagation Letters32 citationsDOIOpen Access PDF

Abstract

In this letter, a novel sparse array synthesis method for nonuniform planar arrays is proposed, which belongs to compressive sensing (CS) based synthesis. Particularly, we propose an off-grid refinement technique to simultaneously optimize the antenna element positions and excitations with a low complexity, in response to the antenna position optimization problem that is difficult for standard CS. More importantly, we take into account the minimum interelement spacing constraint for ensuring the physically realizable solution. Specifically, the off-grid orthogonal match pursuit algorithm is first proposed with low complexity and then off-grid look ahead orthogonal match pursuit is designed with better synthesis performance but higher complexity. In addition, simulation results have shown that the proposed schemes have more advantages in computational complexity and synthesis performances compared with the related method.

Topics & Concepts

GridComputer scienceCompressed sensingPlanar arrayComputational complexity theoryAlgorithmPlanarAntenna (radio)Antenna arraySparse arrayConstraint (computer-aided design)MathematicsTelecommunicationsGeometryComputer graphics (images)Antenna Design and OptimizationAntenna Design and AnalysisAdvanced MIMO Systems Optimization
Low-Complexity Sparse Array Synthesis Based on Off-Grid Compressive Sensing | Litcius