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Proposed Back Propagation Deep Neural Network for Intrusion Detection in Internet of Things Fog Computing

Journal: International Journal of Emerging Trends in Engineering Research (IJETER) (Vol.9, No. 4)

Publication Date:

Authors : ;

Page : 464-469

Keywords : Back propagation; CIC 2017 datasets; Deep neural network; Fog computing; Internet of things; Intrusion detection systems;

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Abstract

Internet of things (IoT) is an emerging concept which aims to connect billions of devices with each other anytime regardless of their location. Sadly, these IoT devices do not have enough computing resources to process huge amount of data. Therefore, Cloudcomputingis relied on to provide these resources. However, cloud computing based architecture fails in applications that demand very low and predictable latency, therefore the need for fog computing which is a new paradigm that is regarded as an extension of cloud computing to provide services between end users and the cloud user. Unfortunately, Fog-IoT is confronted with various security and privacy risks and prone to several cyberattacks which is a serious challenge. The purpose of this work is to present security and privacy threats towards Fog-IoT platform and discuss the security and privacy requirements in fog computing. We then proceed to propose an Intrusion Detection System (IDS) model using Standard Deep Neural Network's Back Propagation algorithm(BP-DNN) to mitigate intrusions that attack Fog-IoT platform. The experimental Dataset for the proposed model isobtained from the Canadian Institute for Cybersecurity 2017 Dataset. Each instance of the attack in the dataset is separated into separate files, which are DoS (Denial of Service), DDoS (Distributed Denial of Service), Web Attack, Brute Force FTP, Brute Force SSH, Heartbleed, Infiltration and Botnet (Bot Network) Attack. The proposed model is trained using a 3-layer BP-DNN

Last modified: 2021-04-13 15:03:59