4.6 Article

An Intrusion Detection Mechanism for Secured IoMT Framework Based on Swarm-Neural Network

Journal

IEEE JOURNAL OF BIOMEDICAL AND HEALTH INFORMATICS
Volume 26, Issue 5, Pages 1969-1976

Publisher

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/JBHI.2021.3101686

Keywords

Servers; Security; Medical services; Image edge detection; Privacy; Logic gates; Computer hacking; IoMT; neural network; edge computing; swarm intelligence; intrusion detection mechanism

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The paper proposes an Empirical Intelligent Agent method based on Swarm-Neural network to identify attackers in the edge-centric Internet of Medical Things framework. Test results on the ToN-IoT dataset demonstrate that the proposed method achieves 99.5% accuracy in identifying attacks during data transmission.
The seamless integration of medical sensors and the Internet of Things (IoT) in smart healthcare has leveraged an intelligent Internet of Medical Things (IoMT) framework to detect the criticality of the patients. However, due to the limited storage capacity and computation power of the local IoT devices, patient's health data needs to transfer to remote computing devices for analysis, which can easily result in privacy leakage due to lack of control over the patient's health data and the vulnerability of the network for various types of attacks. Motivated by this, in this paper, an Empirical Intelligent Agent (EIA) based on a unique Swarm-Neural Network (Swarm-NN) method is proposed to identify attackers in the edge-centric IoMT framework. The major outcome of the proposed strategy is to identify the attacks during data transmission through a network and analyze the health data efficiently at the edge of the network with higher accuracy. The proposed Swarm-NN strategy is evaluated with a real-time secured dataset, namely the ToN-IoT dataset that collected Telemetry, Operating systems, and Network data for IoT applications and compares the performance over the standard classification models using various performance metrics. The test results demonstrate that the proposed Swarm-NN strategy achieves 99.5% accuracy over the ToN-IoT dataset.

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