Literature DB >> 33925813

A Framework for Malicious Traffic Detection in IoT Healthcare Environment.

Faisal Hussain1, Syed Ghazanfar Abbas1, Ghalib A Shah1, Ivan Miguel Pires2,3,4, Ubaid U Fayyaz1, Farrukh Shahzad1, Nuno M Garcia2, Eftim Zdravevski5.   

Abstract

The Internet of things (IoT) has emerged as a topic of intense interest among the research and industrial community as it has had a revolutionary impact on human life. The rapid growth of IoT technology has revolutionized human life by inaugurating the concept of smart devices, smart healthcare, smart industry, smart city, smart grid, among others. IoT devices' security has become a serious concern nowadays, especially for the healthcare domain, where recent attacks exposed damaging IoT security vulnerabilities. Traditional network security solutions are well established. However, due to the resource constraint property of IoT devices and the distinct behavior of IoT protocols, the existing security mechanisms cannot be deployed directly for securing the IoT devices and network from the cyber-attacks. To enhance the level of security for IoT, researchers need IoT-specific tools, methods, and datasets. To address the mentioned problem, we provide a framework for developing IoT context-aware security solutions to detect malicious traffic in IoT use cases. The proposed framework consists of a newly created, open-source IoT data generator tool named IoT-Flock. The IoT-Flock tool allows researchers to develop an IoT use-case comprised of both normal and malicious IoT devices and generate traffic. Additionally, the proposed framework provides an open-source utility for converting the captured traffic generated by IoT-Flock into an IoT dataset. Using the proposed framework in this research, we first generated an IoT healthcare dataset which comprises both normal and IoT attack traffic. Afterwards, we applied different machine learning techniques to the generated dataset to detect the cyber-attacks and protect the healthcare system from cyber-attacks. The proposed framework will help in developing the context-aware IoT security solutions, especially for a sensitive use case like IoT healthcare environment.

Entities:  

Keywords:  Internet of Things (IoT); IoT flock; IoT healthcare dataset; IoT healthcare systems; IoT traffic generator; healthcare monitoring; healthcare security; intrusion detection; machine learning; securing healthcare systems

Mesh:

Year:  2021        PMID: 33925813     DOI: 10.3390/s21093025

Source DB:  PubMed          Journal:  Sensors (Basel)        ISSN: 1424-8220            Impact factor:   3.576


  4 in total

Review 1.  Intrusion Detection in Internet of Things Systems: A Review on Design Approaches Leveraging Multi-Access Edge Computing, Machine Learning, and Datasets.

Authors:  Eric Gyamfi; Anca Jurcut
Journal:  Sensors (Basel)       Date:  2022-05-14       Impact factor: 3.847

2.  Preventing MQTT Vulnerabilities Using IoT-Enabled Intrusion Detection System.

Authors:  Muhammad Husnain; Khizar Hayat; Enrico Cambiaso; Ubaid U Fayyaz; Maurizio Mongelli; Habiba Akram; Syed Ghazanfar Abbas; Ghalib A Shah
Journal:  Sensors (Basel)       Date:  2022-01-12       Impact factor: 3.576

3.  Federated learning-based AI approaches in smart healthcare: concepts, taxonomies, challenges and open issues.

Authors:  Anichur Rahman; Md Sazzad Hossain; Ghulam Muhammad; Dipanjali Kundu; Tanoy Debnath; Muaz Rahman; Md Saikat Islam Khan; Prayag Tiwari; Shahab S Band
Journal:  Cluster Comput       Date:  2022-08-17       Impact factor: 2.303

4.  FIDChain: Federated Intrusion Detection System for Blockchain-Enabled IoT Healthcare Applications.

Authors:  Eman Ashraf; Nihal F F Areed; Hanaa Salem; Ehab H Abdelhay; Ahmed Farouk
Journal:  Healthcare (Basel)       Date:  2022-06-15
  4 in total

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