Litcius/Paper detail

Securing Wireless Sensor Networks Using Machine Learning and Blockchain: A Review

Shereen Ismail, Diana W. Dawoud, Hassan Reza

2023Future Internet72 citationsDOIOpen Access PDF

Abstract

As an Internet of Things (IoT) technological key enabler, Wireless Sensor Networks (WSNs) are prone to different kinds of cyberattacks. WSNs have unique characteristics, and have several limitations which complicate the design of effective attack prevention and detection techniques. This paper aims to provide a comprehensive understanding of the fundamental principles underlying cybersecurity in WSNs. In addition to current and envisioned solutions that have been studied in detail, this review primarily focuses on state-of-the-art Machine Learning (ML) and Blockchain (BC) security techniques by studying and analyzing 164 up-to-date publications highlighting security aspect in WSNs. Then, the paper discusses integrating BC and ML towards developing a lightweight security framework that consists of two lines of defence, i.e, cyberattack detection and cyberattack prevention in WSNs, emphasizing the relevant design insights and challenges. The paper concludes by presenting a proposed integrated BC and ML solution highlighting potential BC and ML algorithms underpinning a less computationally demanding solution.

Topics & Concepts

Computer scienceBlockchainEnablingWireless sensor networkUnderpinningInternet of ThingsComputer securityKey (lock)Computer networkEngineeringCivil engineeringPsychologyPsychotherapistBlockchain Technology Applications and SecurityNetwork Security and Intrusion DetectionCybercrime and Law Enforcement Studies
Securing Wireless Sensor Networks Using Machine Learning and Blockchain: A Review | Litcius