CLC number: TN92
On-line Access: 2020-10-14
Received: 2019-09-27
Revision Accepted: 2020-03-27
Crosschecked: 2020-05-18
Cited: 0
Clicked: 4835
Citations: Bibtex RefMan EndNote GB/T7714
Jun Wang, Rong Li, Jian Wang, Yi-qun Ge, Qi-fan Zhang, Wu-xian Shi. Artificial intelligence and wireless communications[J]. Frontiers of Information Technology & Electronic Engineering,in press.https://doi.org/10.1631/FITEE.1900527 @article{title="Artificial intelligence and wireless communications", %0 Journal Article TY - JOUR
人工智能与无线通信1华为技术有限公司无线技术实验室,中国杭州市,310051 2华为技术有限公司无线技术实验室,加拿大渥太华市,K0A3M0 摘要:近来,人工智能和机器学习技术在无线通信领域的应用受到极大关注。人工智能在语音理解、图像识别、自然语言处理等领域取得成功,展示了其解决难以建模问题的巨大潜力。无线通信在大量应用场景中存在着日益增长且多样的需求,而人工智能已成为满足这些需求的重要使能技术。本文详细介绍无线通信中人工智能发挥重要作用的一些典型场景,包括信道建模、信道译码和信号检测以及信道编码设计。进而,从信息瓶颈的角度讨论了人工智能和信息论的关系。最后,讨论了将人工智能技术深入集成在无线通信系统的一些想法。 关键词组: Darkslateblue:Affiliate; Royal Blue:Author; Turquoise:Article
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