Deep Learning-Based Early Detection and Avoidance of Traffic Congestion in Software-Defined Networks

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Prabhavat, Sumet, Thongthavorn, Thananop and Pasupa, Kitsuchart (2022) Deep Learning-Based Early Detection and Avoidance of Traffic Congestion in Software-Defined Networks In: The 14th International Conference on Information Technology and Electrical Engineering (ICITEE), 18-19 October 2022, Virtual. (In Press)

Abstract

Software-defined Networking (SDN) provides an easy way to monitor network and traffic conditions by employing software-based controllers to communicate with the hardware directly. It provides helpful information that enables efficient routing decisions. This research study attempted to use deep learning techniques—Long Short-term Memory, Bidirectional Long Short-term Memory, and Gated Recurrent Unit—to predict network traffic to allow the controller to early detect congestion. The traffic flow in a network link that will likely be congested will be rerouted to a new path with the largest available bandwidth. Various scenarios were simulated to evaluate our deep learning-based SDN controller (Ryu controller platform). The results show that our proposed deep learning-based SDN controller outperformed the traditional load balancing technique.

Item Type:

Conference or Workshop Item (Paper)

Subjects:

Subjects > Computer Science > Networking and Internet Architecture

Subjects > Computer Science > Machine Learning

Deposited by:

Sumet Prabhavat

Date Deposited:

2022-08-21 03:00:03

Last Modified:

2023-02-09 11:25:31

Impact and Interest:

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