Secure Healthcare Model Using Multi-Step Deep Q Learning Network in Internet of Things

Author:

Roy Patibandla Pavithra1,Teju Ventrapragada1ORCID,Kandula Srinivasa Rao1ORCID,Sowmya Kambhampati Venkata2ORCID,Stan Anca Ioana3,Stan Ovidiu Petru45ORCID

Affiliation:

1. Department of Electronics & Communications Engineering, Dhanekula Institute of Engineering and Technology, Vijayawada 521139, India

2. Department of Electronics & Communications Engineering, Koneru Lakshmaiah Education Foundation, Vaddeswaram 522302, India

3. Faculty of Industrial Engineering, Robotics and Production Management, Technical University of Cluj Napoca, 400114 Cluj Napoca, Romania

4. OSEAN—Outermost Regions Sustainable Ecosystem for Entrepreneurship and Innovation, University of Madeira Colégio dos Jesuítas, 9000-082 Funchal, Portugal

5. Faculty of Automation and Computer Science, Technical University of Cluj Napoca, 400114 Cluj Napoca, Romania

Abstract

Internet of Things (IoT) is an emerging networking technology that connects both living and non-living objects globally. In an era where IoT is increasingly integrated into various industries, including healthcare, it plays a pivotal role in simplifying the process of monitoring and identifying diseases for patients and healthcare professionals. In IoT-based systems, safeguarding healthcare data is of the utmost importance, to prevent unauthorized access and intermediary assaults. The motivation for this research lies in addressing the growing security concerns within healthcare IoT. In this proposed paper, we combine the Multi-Step Deep Q Learning Network (MSDQN) with the Deep Learning Network (DLN) to enhance the privacy and security of healthcare data. The DLN is employed in the authentication process to identify authenticated IoT devices and prevent intermediate attacks between them. The MSDQN, on the other hand, is harnessed to detect and counteract malware attacks and Distributed Denial of Service (DDoS) attacks during data transmission between various locations. Our proposed method’s performance is assessed based on such parameters as energy consumption, throughput, lifetime, accuracy, and Mean Square Error (MSE). Further, we have compared the effectiveness of our approach with an existing method, specifically, Learning-based Deep Q Network (LDQN).

Publisher

MDPI AG

Subject

Electrical and Electronic Engineering,Computer Networks and Communications,Hardware and Architecture,Signal Processing,Control and Systems Engineering

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