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Intelligent Deep Learning for Anomaly-Based Intrusion Detection in IoT Smart Home Networks

Nazia ButtDepartment of Computer Science, Faculty of Engineering and Computer Science, National University of Modern Languages, Islamabad 44000, PakistanAna ShahidDepartment of Computer Science, Faculty of Engineering and Computer Science, National University of Modern Languages, Islamabad 44000, PakistanKashif Naseer QureshiDepartment of Electronic & Computer Engineering, University of Limerick, V94 T9PX Limerick, IrelandSajjad HaiderDepartment of Computer Science, Faculty of Engineering and Computer Science, National University of Modern Languages, Islamabad 44000, PakistanAshraf Osman IbrahimFaculty of Computing and Informatics, University Malaysia Sabah, Kota Kinabalu 88400, MalaysiaFaisal BinzagrDepartment of Computer Science, King Abdulaziz University, P.O. Box 344, Rabigh 21911, Saudi ArabiaNoman ArshadDepartment of Computer Science, Bahria University, Islamabad 44000, Pakistan
2022en
ABI

Annotatsiya

The Internet of Things (IoT) is a tremendous network based on connected smart devices. These networks sense and transmit data by using advanced communication standards and technologies. The smart home is one of the areas of IoT networks, where home appliances are connected to the internet and smart grids. However, these networks are at high risk in terms of security violations. Different kinds of attacks have been conducted on these networks where the user lost their data. Intrusion detection systems (IDSs) are used to detect and prevent cyberattacks. These systems are based on machine and deep learning techniques and still suffer from fitting or overfitting issues. This paper proposes a novel solution for anomaly-based intrusion detection for smart home networks. The proposed model addresses overfitting/underfitting issues and ensures high performance in terms of hybridization. The proposed solution uses feature selection and hyperparameter tuning and was tested with an existing dataset. The experimental results indicated a significant increase in performance while minimizing misclassification and other limitations as compared to state-of-the-art solutions.

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