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Gauss Markov and Flow Balanced Vector Radial Learning network traffic classification on IoT with SDN

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  • Rajkumar Kulandaivel
  • Manikandan Ramachandran
  • Sathishkumar Veerappampalayam Easwaramoorthy
  • Jaehyuk Cho

Abstract

Recent evolution in connected devices modelled a massive stipulation for network traffic resources and classification. Software-defined networking (SDN) enables ML techniques with the Internet of Things (IoT) to automate network traffic. This helps to reduce accuracy and improves latency. Problems by conventional techniques to categorize network traffic acquired from IoT and assign resources can be resolved through SDN solutions. This manuscript proposes a proposed network traffic classification technique on IoT with SDN called Gauss Markov and Flow-balanced Vector Radial Learning (GM-FVRL). With the network traffic features acquired from the IoT devices, SDN-enabled Gauss Markov Correlation-based IoT Network Traffic Feature Extraction is applied to extort relevant network aspects. Next, the flow-balanced radial-based ML model for network traffic categorization uses the relevant extracted network traffic features. With the aid of flow, the balanced radial basis function reduces the influence of noise due to distinct network flow. This helps to improve accuracy and minimize latency. Due to this, better precision and recall is ensured. Performance of our method has been evaluated utilizing a scheme using an SDN traffic dataset. The results show that our method classifies the network traffic with high classification accuracy and minimum latency, ensuring better precision and recall.

Suggested Citation

  • Rajkumar Kulandaivel & Manikandan Ramachandran & Sathishkumar Veerappampalayam Easwaramoorthy & Jaehyuk Cho, 2024. "Gauss Markov and Flow Balanced Vector Radial Learning network traffic classification on IoT with SDN," PLOS ONE, Public Library of Science, vol. 19(10), pages 1-19, October.
  • Handle: RePEc:plo:pone00:0308052
    DOI: 10.1371/journal.pone.0308052
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