Intelligent signal processing for wireless communications is a vital task in modern wireless systems, but it faces new challenges because of network heterogeneity, diverse service requirements, a massive number of connections, and various radio characteristics. Owing to recent advancements in big data and computing technologies, artificial intelligence (AI) has become a useful tool for radio signal processing and has enabled the realization of intelligent radio signal processing. This survey covers four intelligent signal processing topics for the wireless physical layer, including modulation classification, signal detection, beamforming, and channel estimation. In particular, each theme is presented in a dedicated section, starting with the most fundamental principles, followed by a review of up-to-date studies and a summary. To provide the necessary background, we first present a brief overview of AI techniques such as machine learning, deep learning, and federated learning. Finally, we highlight a number of research challenges and future directions in the area of intelligent radio signal processing. We expect this survey to be a good source of information for anyone interested in intelligent radio signal processing, and the perspectives we provide therein will stimulate many more novel ideas and contributions in the future.
翻译:现代无线通信的智能信号处理是现代无线系统的一项重要任务,但由于网络多样性、服务要求的多样性、大量连接和各种无线电特征,它面临着新的挑战。由于大数据和计算技术最近的进展,人工智能(AI)已成为无线电信号处理的有用工具,并使得智能无线电信号处理得以实现。这项调查涵盖无线物理层的四个智能信号处理专题,包括调制分类、信号探测、信号成形和频道估计。特别是,每个主题都放在一个专门章节中,从最根本的原则开始,然后审查最新研究和摘要。为了提供必要的背景,我们首先简要概述人工智能技术,例如机器学习、深层学习和联合学习。最后,我们强调智能无线电信号处理领域的一些研究挑战和未来方向。我们期望这项调查成为任何对智能无线电信号处理感兴趣的人的良好信息来源,我们在报告中提供的观点将在未来激发更多新的想法和贡献。