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Can We Exploit Machine Learning to Predict Congestion over mmWave 5G Channels?
2020
Applied Sciences
It is well known that transport protocol performance is severely hindered by wireless channel impairments. We study the applicability of Machine Learning (ML) techniques to predict congestion status of 5G access networks, in particular mmWave links. We use realistic traces, using the 3GPP channel models, without being affected using legacy congestion-control solutions. We start by identifying the metrics that might be exploited from the transport layer to learn the congestion state: delay and
doi:10.3390/app10186164
fatcat:bhbu5vbfknccrppmmzq2km4vae