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Dimension-Reduced Robust Adaptive Beamforming via Group Cyclic Minimization | IEEE Conference Publication | IEEE Xplore

Dimension-Reduced Robust Adaptive Beamforming via Group Cyclic Minimization


Abstract:

Adaptive digital beamforming (ADBF) is a widely used anti-interference technology for radar and communication systems. However, as the scale of receiving array increases ...Show More

Abstract:

Adaptive digital beamforming (ADBF) is a widely used anti-interference technology for radar and communication systems. However, as the scale of receiving array increases and the fast time-varying interference is applied, reducing the computational complexity of ADBF is demanded to meet realtime requirements. To that end, a dimension-reduced ADBF algorithm based on group cyclic minimization, named GCM-ADBF, is proposed for large-scale array systems. By grouping the weights to be optimized and introducing the groupwise blocking matrix, GCM-ADBF enjoys fast implementation with parallelizable low-dimensional matrix inversion and iterations involving only matrix multiplications and additions, as well as superior robustness against few training samples. Moreover, GCM-ADBF is free from pre-estimation of the number and directions of interferences. The proposed algorithm is available for arrays with arbitrary configurations, and is compatible with fully digital and hybrid analog-digital beamforming systems. The superiority is verified by numerical simulations.
Date of Conference: 04-06 December 2023
Date Added to IEEE Xplore: 08 January 2024
ISBN Information:
Conference Location: Xian, China
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I. Introduction

As the electronic warfare technology develops and the electromagnetic spectrum becomes increasingly crowded, interference suppression is playing an essential role in radar and communication systems [1], [2]. Owing to the extensive application of digital arrays, adaptive digital beamforming (ADBF), especially the minimum variance distortionless response (MVDR) beamformer [3], [4] and the linear constraint minimum variance (LCMV) beamformer [5], [6], has been widely adopted for interference mitigation in spatial domain. However, the closed-form optimal solution for the weight vector of MVDR or LCMV involves matrix inversion, which is computationally expensive for large-scale arrays. Reducing the complexity of ADBF is thus particularly significant in practical applications, especially for synthetic aperture radar (SAR) [1] due to the limitation on the load of platforms.

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