通信系统中深度学习的可能性介绍

Ivana Žeger, G. Šišul
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引用次数: 0

摘要

对现代通信系统提出的大量要求促使人们重新评价现有的定义明确、阐述详尽的通信理论。目前的系统实现是否已经过时,或者如果与新技术相结合,是否能够应对挑战,这已经成为一个有争议的问题。开发全新方法的想法也出现了。机器学习特别是深度学习技术的最新进展表明了可能的新研究方向。本文阐述了在通信中引入深度学习的原因。本文提供了现有研究程序的分离。特别重点分析了不同领域的应用,并定义了它们的优缺点,包括端到端通信系统的形成作为自编码器和神经网络在信号检测和调制分类中的贡献。结果表明,深度学习在尚未优化的通信领域具有强大的使用潜力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Introduction to Deep Learning Possibilities in Communication Systems
The considerable requests imposed on modern communication systems have inspired re-evaluation of the existing well-defined and elaborated communication theory. It has become debatable whether the current system implementations have become obsolete or may be able to cope with the challenges if combined with new technologies. The idea of developing entirely new approaches has also risen. Recent advances in machine learning and especially deep learning techniques indicate possible new research directions. This paper states the reasons behind the introduction of deep learning in communications. The paper provides the separation of the existing research procedures. Special focus is put on analyzing different areas of appliance and defining their advantages and disadvantages, including the formation of end-to-end communication systems as autoencoders and neural network contribution in signal detection and modulation classification. The results indicate strong usage potential of deep learning in communications in not already optimized areas.
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