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Machine Learning Models for Traffic Classification in Electromagnetic Nano-Networks

Akram Galal, Xavier Hesselbach

2022IEEE Access17 citationsDOIOpen Access PDF

Abstract

The number of nano-sensors connected to wireless electromagnetic nano-network generates different traffic volumes that have increased dramatically, enabling various applications of the Internet of nano-things. Nano-network traffic classification is more challenging nowadays to analyze different types of flows and study the overall performance of a nano-network that connects to the Internet through micro/nano-gateways. There are traditional techniques to classify traffic, such as port-based technique and load-based technique, however the most promising technique used recently is machine learning. As machine learning models have a great impact on traffic classification and network performance evaluation in general, it is difficult to declare which is the best or the most suitable model to address the analysis of large volumes of traffic collected in operational nano-networks. In this paper, we study the classification problem of nano-network traffic captured by micro/nano-gateway, and then five supervised machine learning algorithms are used to analyze and classify the nano-network traffic from traditional traffic. Experimental analysis of the proposed models is evaluated and compared to show the most adequate classifier for nano-network traffic that gives very good accuracy and performance score to other classifiers.

Topics & Concepts

Computer scienceTraffic generation modelMachine learningTraffic classificationArtificial intelligenceThe InternetArtificial neural networkNano-Internet trafficComputer networkData miningEngineeringWorld Wide WebChemical engineeringMolecular Communication and NanonetworksQuantum-Dot Cellular AutomataAdvanced Memory and Neural Computing
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