NILGMay 12, 2020

Deep Learning for Wireless Communications

arXiv:2005.06068v1158 citations
Originality Synthesis-oriented
AI Analysis

This work tackles the challenge of translating theoretical communication models into practical solutions for emerging wireless applications, though it appears to be an incremental review of existing methods.

The chapter explores how deep learning can address the complexity of optimizing wireless communication systems, demonstrating its application in designing end-to-end systems, improving spectrum awareness, and enhancing security through adversarial machine learning.

Existing communication systems exhibit inherent limitations in translating theory to practice when handling the complexity of optimization for emerging wireless applications with high degrees of freedom. Deep learning has a strong potential to overcome this challenge via data-driven solutions and improve the performance of wireless systems in utilizing limited spectrum resources. In this chapter, we first describe how deep learning is used to design an end-to-end communication system using autoencoders. This flexible design effectively captures channel impairments and optimizes transmitter and receiver operations jointly in single-antenna, multiple-antenna, and multiuser communications. Next, we present the benefits of deep learning in spectrum situation awareness ranging from channel modeling and estimation to signal detection and classification tasks. Deep learning improves the performance when the model-based methods fail. Finally, we discuss how deep learning applies to wireless communication security. In this context, adversarial machine learning provides novel means to launch and defend against wireless attacks. These applications demonstrate the power of deep learning in providing novel means to design, optimize, adapt, and secure wireless communications.

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