Q-DATA: Enhanced Traffic Flow Monitoring in Software-Defined Networks applying Q-learning
Trung V. Phan, Syed Tasnimul Islam, Tri Gia Nguyen, Thomas, Bauschert

TL;DR
Q-DATA leverages reinforcement learning to optimize traffic flow monitoring in SDN, balancing detailed traffic insights with switch performance protection, outperforming existing methods.
Contribution
The paper introduces Q-DATA, a novel SDN traffic flow control framework using Q-learning to enhance monitoring granularity while preventing switch overload.
Findings
Significant reduction in traffic forwarding degradation.
Improved traffic flow granularity and monitoring detail.
Enhanced SDN switch performance compared to baseline methods.
Abstract
Software-Defined Networking (SDN) introduces a centralized network control and management by separating the data plane from the control plane which facilitates traffic flow monitoring, security analysis and policy formulation. However, it is challenging to choose a proper degree of traffic flow handling granularity while proactively protecting forwarding devices from getting overloaded. In this paper, we propose a novel traffic flow matching control framework called Q-DATA that applies reinforcement learning in order to enhance the traffic flow monitoring performance in SDN based networks and prevent traffic forwarding performance degradation. We first describe and analyse an SDN-based traffic flow matching control system that applies a reinforcement learning approach based on Q-learning algorithm in order to maximize the traffic flow granularity. It also considers the forwarding…
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Taxonomy
MethodsQ-Learning
