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Improved Video QoE in Wireless Networks using Deep Reinforcement Learning

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Author(s):
Moura, Henrique D. ; Oliveira, Junia Maisa ; Soares, Daniel ; Macedo, Daniel F. ; Vieira, Marcos A. M.
Total Authors: 5
Document type: Journal article
Source: 2023 19TH INTERNATIONAL CONFERENCE ON NETWORK AND SERVICE MANAGEMENT, CNSM; v. N/A, p. 7-pg., 2023-01-01.
Abstract

Millions of videos are watched per minute on the Internet. Due to real-time performance demands, such as high-quality video streaming, network administrators face new challenges to control the network and cope with the expected quality of experience (QoE). Automatic control is a necessity to reduce the OPEX, because it could reduce the need for resource overprovisioning, as well as the number of human administrators. Dynamic rate in video streaming alleviates the resource usage, but it worsens the video quality when a network bottleneck occurs, lowering the QoE. This paper dynamically adjusts the IEEE 802.11 parameters to improve the network condition and hence maintain a higher QoE. While traditional networks are not aware of the application, in our proposal the controller learns the configuration of the access points (APs) (in terms of transmission power and channel number) that provide the best QoE, using double deep Q-learning (DDQL). The proposal improves video QoE by 91% in the best case, when compared to three baselines. It also balances the QoE among clients, improving the fairness up to 115% when compared to the baselines. (AU)

FAPESP's process: 18/23097-3 - SFI2: slicing future internet infrastructures
Grantee:Tereza Cristina Melo de Brito Carvalho
Support Opportunities: Research Projects - Thematic Grants
FAPESP's process: 20/05182-3 - PORVIR-5G: programability, orchestration and virtualization in 5G networks
Grantee:José Marcos Silva Nogueira
Support Opportunities: Research Projects - Thematic Grants