AI-assisted PHY technologies for 6G and beyond wireless networks

R Sattiraju, A Weinand, HD Schotten - arXiv preprint arXiv:1908.09523, 2019 - arxiv.org
arXiv preprint arXiv:1908.09523, 2019arxiv.org
Machine Learning (ML) and Artificial Intelligence (AI) have become alternative approaches
in wireless networksbeside conventional approaches such as model based
solutionconcepts. Whereas traditional design concepts include the mod-elling of the
behaviour of the underlying processes, AI basedapproaches allow to design network
functions by learning frominput data which is supposed to get mapped to specific outputs
(training). Additionally, new input/output relations can be learntduring the deployement …
Machine Learning (ML) and Artificial Intelligence(AI) have become alternative approaches in wireless networksbeside conventional approaches such as model based solutionconcepts. Whereas traditional design concepts include the mod-elling of the behaviour of the underlying processes, AI basedapproaches allow to design network functions by learning frominput data which is supposed to get mapped to specific outputs(training). Additionally, new input/output relations can be learntduring the deployement phase of the function (online learning)and make AI based solutions flexible, in order to react to newsituations. Especially, new introduced use cases such as UltraReliable Low Latency Communication (URLLC) and MassiveMachine Type Communications (MMTC) in 5G make this ap-proach necessary, as the network complexity is further enhancedcompared to networks mainly designed for human driven traffic(4G, 5G xMBB). The focus of this paper is to illustrate exemplaryapplications of AI techniques at the Physical Layer (PHY) offuture wireless systems and therfore they can be seen as candidatetechnologies for e.g. 6G systems.
arxiv.org
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