Litcius/Paper detail

SDN Architecture for Smart Homes Security with Machine Learning and Deep Learning

Wesam Abdulrhman Alonazi, Hedi HAMDI, Nesrine A. Azim, A. A. Abd El-Aziz

2022International Journal of Advanced Computer Science and Applications14 citationsDOIOpen Access PDF

Abstract

In recent decades, Intelligent home systems are popular because they improve comfort and quality of life. A growing number of homes are becoming "smarter" by incorporating Internet of Things (IoT) technology to improve comfort, energy efficiency, and safety. Increases in resource-constrained IoT devices heighten security threats and vulnerabilities connected with them. Using SDN and virtualization, the IoT's size and adaptability can be managed at a lower cost than ever before. Using these intelligent security solutions, we can achieve real-time detection and automation for attack detection and prevention using artificial intelligence. Consequently, a large variety of solutions utilizing machine learning and deep learning have been developed to mitigate attacks on the IoT. Thus, the goal of this work is to use machine learning and deep learning to defend smart homes with SDN-based. We have designed smart home environments using Software-Defined Networking and Mininet that provide Instant Virtual networks for IoT in smart homes. Two datasets were used in this work: the first SDN dataset, which we acquired from smart homes by launching real attacks and creating normal traffic, and the second IoTID20 dataset, which is publicly available online. On both datasets, conducted ML and DL experiments. The best accuracy on SDN Dataset was 99.9% using Xgboost classifier, and on IoTID20 was 98.9% LSTM in binary classification, and ANN 85.7% on multiclass.

Topics & Concepts

Computer scienceHome automationMachine learningArtificial intelligenceDeep learningComputer securitySoftware-defined networkingInternet of ThingsVirtualizationAdaptabilityIntrusion detection systemCloud computingComputer networkTelecommunicationsOperating systemBiologyEcologySoftware-Defined Networks and 5GAdvanced Malware Detection TechniquesNetwork Security and Intrusion Detection