To Learn or Not to Learn: Deep Learning Assisted Wireless Modem Design

Shenjun Xue, A. Li, J. Wang, N. Yi, Y. Ma, R. Tafazolli, T. Dodgson
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引用次数: 3

Abstract

Deep learning is driving a radical paradigm shift in wireless communications, all the way from the application layer down to the physical layer. Despite this, there is an ongoing debate as to what additional values artificial intelligence (or machine learning) could bring to us, particularly on the physical layer design; and what penalties there may have? These questions motivate a fundamental rethinking of the wireless modem design in the artificial intelligence era. Through several physical-layer case studies, we argue for a significant role that machine learning could play, for instance in parallel error-control coding and decoding, channel equalization, interference cancellation, as well as multiuser and multiantenna detection. In addition, we will also discuss the fundamental bottlenecks of machine learning as well as their potential solutions in this paper.
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学习还是不学习:深度学习辅助无线调制解调器设计
深度学习正在推动无线通信从应用层到物理层的彻底范式转变。尽管如此,关于人工智能(或机器学习)能给我们带来什么额外价值,特别是在物理层设计方面,仍存在争议;会有什么处罚?这些问题激发了对人工智能时代无线调制解调器设计的根本性反思。通过几个物理层案例研究,我们论证了机器学习可以发挥的重要作用,例如在并行错误控制编码和解码、信道均衡、干扰消除以及多用户和多天线检测中。此外,我们还将在本文中讨论机器学习的基本瓶颈及其潜在解决方案。
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