SDN-Enabled FiWi-IoT Smart Environment Network Traffic Classification Using Supervised ML Models

被引:21
作者
Ganesan, Elaiyasuriyan [1 ]
Hwang, I-Shyan [1 ]
Liem, Andrew Tanny [2 ]
Ab-Rahman, Mohammad Syuhaimi [3 ]
机构
[1] Yuan Ze Univ, Dept Comp Sci & Engn, Taoyuan 32003, Taiwan
[2] Univ Klabat Manado, Dept Comp Sci, North Sulawesi 95371, Indonesia
[3] Univ Kebangsaan Malaysia, Dept Elect Elect & Syst Engn, Fac Engn & Built Environm, Bangi 43600, Selangor, Malaysia
关键词
SDN-FiWi-IoT; QoS-mapping; network traffic classification; machine learning; MACHINE LEARNING TECHNIQUES; WIRELESS ACCESS NETWORKS; INTERNET; QOS;
D O I
10.3390/photonics8060201
中图分类号
O43 [光学];
学科分类号
070207 ; 0803 ;
摘要
Due to the rapid growth of the Internet of Things (IoT), applications such as the Augmented Reality (AR)/Virtual Reality (VR), higher resolution media stream, automatic vehicle driving, the smart environment and intelligent e-health applications, increasing demands for high data rates, high bandwidth, low latency, and the quality of services are increasing every day (QoS). The management of network resources for IoT service provisioning is a major issue in modern communication. A possible solution to this issue is the use of the integrated fiber-wireless (FiWi) access network. In addition, dynamic and efficient network configurations can be achieved through software-defined networking (SDN), an innovative and programmable networking architecture enabling machine learning (ML) to automate networks. This paper, we propose a machine learning supervised network traffic classification scheduling model in SDN enhanced-FiWi-IoT that can intelligently learn and guarantee traffic based on its QoS requirements (QoS-Mapping). We capture the different IoT and non-IoT device network traffic trace files based on the traffic flow and analyze the traffic traces to extract statistical attributes (port source and destination, IP address, etc.). We develop a robust IoT device classification process module framework, using these network-level attributes to classify IoT and non-IoT devices. We tested the proposed classification process module in 21 IoT/Non-IoT devices with different ML algorithms and the results showed that classification can achieve a Random Forest classifier with 99% accuracy as compared to other techniques.
引用
收藏
页数:21
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