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A Novel Deep-Learning-Enabled QoS Management Scheme for Encrypted Traffic in Software-Defined Cellular Networks

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Mobile users are served with over-the-top (OTT) services through their cellular networks. To ensure the privacy of users and confidentiality of content, most OTT service providers encrypt their traffic. When… Click to show full abstract

Mobile users are served with over-the-top (OTT) services through their cellular networks. To ensure the privacy of users and confidentiality of content, most OTT service providers encrypt their traffic. When a cellular network has no information about the type of service, a default bearer may be created. However, the default bearer may not guarantee bandwidth to a service. Therefore, users may experience degraded service due to packet loss, delay, and reduced data rates. This article proposes a novel quality-of-service (QoS) management scheme for encrypted traffic in software-defined cellular networks. We introduce a deep-learning-enabled intelligent gateway to predict the service types of encrypted flows by considering statistical and QoS features. A QoS control manager maps the bearers to ongoing flows satisfying their QoS requirements. As a proof of concept, we implement a testbed considering encrypted traffic from the Tor network. Results indicate that the proposed scheme improves the network throughput by 41%, decreases packet loss, delay, and QoS violations by 51%, 21%, and 52%, respectively, and reduces the length and size of the queue at the base station compared to those of the conventional scheme. Moreover, the convolutional-neural-network-based classifier achieves higher accuracy, precision, recall, and $F1$-score, as well as lower loss values, compared to the multilayer perceptron classifier.

Keywords: encrypted traffic; qos management; service; traffic; scheme; cellular networks

Journal Title: IEEE Systems Journal
Year Published: 2022

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