ITAISPMar 3, 2023

AI-Empowered Hybrid MIMO Beamforming

arXiv:2303.01723v18 citationsh-index: 55
Originality Synthesis-oriented
AI Analysis

It tackles the problem of scalable and power-efficient beamforming for future massive MIMO systems, but is incremental as it reviews and compares existing methods.

This paper reviews AI-based strategies for optimizing hybrid MIMO beamforming in wireless communications, addressing the challenge of designing beampatterns that combine analog and digital components, and provides a comparative study of existing approaches.

Hybrid multiple-input multiple-output (MIMO) is an attractive technology for realizing extreme massive MIMO systems envisioned for future wireless communications in a scalable and power-efficient manner. However, the fact that hybrid MIMO systems implement part of their beamforming in analog and part in digital makes the optimization of their beampattern notably more challenging compared with conventional fully digital MIMO. Consequently, recent years have witnessed a growing interest in using data-aided artificial intelligence (AI) tools for hybrid beamforming design. This article reviews candidate strategies to leverage data to improve real-time hybrid beamforming design. We discuss the architectural constraints and characterize the core challenges associated with hybrid beamforming optimization. We then present how these challenges are treated via conventional optimization, and identify different AI-aided design approaches. These can be roughly divided into purely data-driven deep learning models and different forms of deep unfolding techniques for combining AI with classical optimization.We provide a systematic comparative study between existing approaches including both numerical evaluations and qualitative measures. We conclude by presenting future research opportunities associated with the incorporation of AI in hybrid MIMO systems.

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