Litcius/Paper detail

A Push-Based Probabilistic Method for Source Location Privacy Protection in Underwater Acoustic Sensor Networks

Hao Wang, Guangjie Han, Yu Zhang, Ling Xie

2021IEEE Internet of Things Journal36 citationsDOIOpen Access PDF

Abstract

As the research topics in ocean emerge, underwater acoustic sensor networks (UASNs) have become ever more relevant. Consequently, challenges arise with the security and privacy of the UASNs. Compared to the active attacks, the characteristics of passive attacks are more difficult to discriminate. Thus, the focus of this study is on the passive attacks in UASNs, where a push-based probabilistic method for source location privacy protection (PP-SLPP) is proposed. The fake packet technology and the multipath technology are utilized in the PP-SLPP scheme to counter the passive attacks, so as to protect the source location privacy in UASNs. Moreover, the Ekman drift current model is employed to simulate the underwater environment. And the mean shift algorithm and the k-means algorithm are adopted in the dynamic layer and static layer of the Ekman drift current model, respectively, to increase the stability of the clusters. Finally, an autonomous underwater vehicle (AUV) swarm is implemented to collect data in clusters. Through the comparison with existing data collection schemes in UASNs, the simulation results have demonstrated that the PP-SLPP scheme can achieve a longer safety period, with a minor compromise of energy consumption and delay.

Topics & Concepts

Computer scienceProbabilistic logicUnderwaterReal-time computingUnderwater acousticsUnderwater acoustic communicationComputer networkArtificial intelligenceGeologyOceanographyUnderwater Vehicles and Communication SystemsSecurity in Wireless Sensor NetworksEnergy Efficient Wireless Sensor Networks