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AuthorSaria Allahham M.
AuthorAwad Abdellatif A.
AuthorMohamed A.
AuthorErbad A.
AuthorYaacoub E.
AuthorGuizani M.
Available date2022-04-21T08:58:22Z
Publication Date2021
Publication NameIEEE Internet of Things Journal
ResourceScopus
Identifierhttp://dx.doi.org/10.1109/JIOT.2020.3027048
URIhttp://hdl.handle.net/10576/30063
AbstractThe rapid evolution of remote health monitoring applications is foreseen to be a crucial solution for facing an unpredictable health crisis and improving the quality of life. However, such applications come with many challenges, including: the transmission of a large amount of private medical data and the limited power budget for battery-operated devices. Thus, this article proposes an intelligent, secure, and energy-efficient (I-SEE) framework for secure and energy-efficient medical data transmission, leveraging the potential of physical-layer security. In particular, we incorporate a practical secrecy metric, namely, the secrecy outage probability (SOP), along with the adaptive compression at the edge for providing a secure solution for health monitoring applications. In the proposed framework, we first formulate an optimization problem that maximizes the energy efficiency, while maintaining quality-of-service constraints of the health application. Second, we propose a deep reinforcement learning process that obtains the optimal strategy for secure data transmission. Specifically, a multiobjective reward function is defined to optimize energy efficiency and distortion, resulting from the compression scheme. Then, a deep deterministic policy gradients (DDPGs) algorithm, named Static-DDPG is proposed to solve our problem efficiently. Third, the problem is extended to consider the battery lifetime maximization with varying channel conditions. Indeed, a Dynamic-DDPG algorithm is proposed in order to allow the edge to adapt to the environment dynamics while maximizing its battery lifetime. The conducted simulations validate the efficiency of the proposed algorithms in terms of finding the optimal policy that addresses the tradeoff between the considered conflicting objectives, along with the battery lifetime maximization 2014 IEEE.
SponsorQatar Foundation;Qatar National Research Fund
Languageen
PublisherInstitute of Electrical and Electronics Engineers Inc.
SubjectBudget control
Data transfer
Electric batteries
Energy efficiency
Health
Quality of service
Reinforcement learning
Transmissions
Battery operated devices
Conflicting objectives
Energy-efficient techniques
Medical data transmission
Physical layer security
Quality of Service constraints
Remote health monitoring
Secrecy outage probabilities
Deep learning
TitleI-SEE: Intelligent, Secure, and Energy-Efficient Techniques for Medical Data Transmission Using Deep Reinforcement Learning
TypeArticle
Pagination6454-6468
Issue Number8
Volume Number8


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