Comparison of the Performance of Forward-Looking Imaging Systems: Phased-Array or MIMO Radar

Yujie Zhang, Hui Ma
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Abstract

Forward-looking imaging systems are mainly divided into phased-array (PA) radar and multiple-input-multiple-output (MIMO) radar according to whether the transmitted signals are coherent or not. Since PA radar can improve the signal-to-noise ratio (SNR) through beamforming, while MIMO radar can achieve higher spatial resolution through channel separation at the receiver. In this paper, the noise-robustness and super-resolution performance of the two systems are analyzed. A fair comparison is conducted under the equal conditions, including algorithm, hardware, etc. We use a half-wavelength uniform array to transmit linear frequency modulation (LFM) signals for PA radar and orthogonal signals for MIMO radar. We first establishes signal models of PA system and MIMO system respectively, where the sparse Bayesian learning algorithm is used for the scene imaging. The simulation results show that the imaging quality of phased array radar is better than that of MIMO radar under low SNR, but worse than MIMO radar under high SNR, which shows that the PA radar is more suitable for imaging under low SNR, while MIMO radar is better under high SNR.
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前视成像系统性能的比较:相控阵或MIMO雷达
前视成像系统根据发射信号是否相干,主要分为相控阵(PA)雷达和多输入多输出(MIMO)雷达。由于PA雷达可以通过波束形成来提高信噪比,而MIMO雷达可以通过接收机处的信道分离来实现更高的空间分辨率。本文分析了两种系统的噪声鲁棒性和超分辨率性能。在相同的条件下,包括算法、硬件等,进行公平的比较。我们使用半波长均匀阵列传输线性调频(LFM)信号用于扩频雷达和正交信号用于MIMO雷达。首先分别建立了扩音系统和MIMO系统的信号模型,采用稀疏贝叶斯学习算法进行场景成像。仿真结果表明,相控阵雷达在低信噪比下的成像质量好于MIMO雷达,而在高信噪比下的成像质量差于MIMO雷达,说明PA雷达更适合在低信噪比下成像,而MIMO雷达则更适合在高信噪比下成像。
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