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Traffic Classification in Underwater Networks Using SDN and Data-Driven Hybrid Metaheuristics.

Authors :
PRADHAN, B.
SRIVASTAVA, GAUTAM
ROY, D. S.
REDDY, K. H. K.
CHUN-WE LIN, JERRY
Source :
ACM Transactions on Sensor Networks; Aug2022, Vol. 18 Issue 3, p1-15, 15p
Publication Year :
2022

Abstract

Software-Defined Networks (SDNs), with their segregated data and control planes, has proved to be capable of managing massive amounts of data by leveraging distributed information available across the network for informed decision-making at the network controller. However, with the proliferation of next-generation, real-time Internet of Things (IoT) applications that vary greatly in terms of data frequency and volumes, data traffic classification can substantially assist SDN controllers toward efficient routing and traffic engineering decisions. Existing works on network classification are limited by their application-centric nature, thus overlooking the key criterion for real-time IoT applications, namely, Quality of Service (QoS). In this article, we focus on augmenting SDN controllers’ decision-making capacity and Underwater Sensor Networks with machine learning algorithms to achieve real-time, QoS-aware, network traffic classification. Three classifiers, namely, Feed-forward Neural Network, Naïve Bayes, and Logistics Regression have been employed with a novel Artificial Neural Network and Particle Swarm Optimization hybridization scheme by carrying firstand second-order stability analysis for performance improvement of these classifiers. In short, the proposed framework exploits optimization algorithms and semi-supervised machine learning (ML) for precise traffic classification while keeping communication overhead between controller and switches minimal. Results obtained from real-life datasets demonstrate the efficacy of our proposed scheme. [ABSTRACT FROM AUTHOR]

Details

Language :
English
ISSN :
15504859
Volume :
18
Issue :
3
Database :
Complementary Index
Journal :
ACM Transactions on Sensor Networks
Publication Type :
Academic Journal
Accession number :
159224074
Full Text :
https://doi.org/10.1145/3474556