A Joint Framework to Privacy-Preserving Edge Intelligence in Vehicular Networks
Muhammad Firdaus, Kyung-Hyune Rhee

TL;DR
This paper introduces a secure edge intelligence framework for vehicular networks that combines federated learning, blockchain, and local differential privacy to enhance traffic prediction accuracy while protecting user privacy.
Contribution
It proposes a novel joint framework integrating blockchain, federated learning, and differential privacy for privacy-preserving edge intelligence in vehicular networks.
Findings
Blockchain-based FL improves traffic prediction accuracy.
LDP enhances privacy protection of user data.
Framework demonstrates effective decentralized traffic management.
Abstract
The number of internet-connected devices has been exponentially growing with the massive volume of heterogeneous data generated from various devices, resulting in a highly intertwined cyber-physical system. Currently, the Edge Intelligence System (EIS) concept that leverages the merits of edge computing and Artificial Intelligence (AI) is utilized to provide smart cloud services with powerful computational processing and reduce decision-making delays. Thus, EIS offers a possible solution to realizing future Intelligent Transportation Systems (ITS), especially in a vehicular network framework. However, since the central aggregator server supervises the entire system orchestration, the existing EIS framework faces several challenges and is still potentially susceptible to numerous malicious attacks. Hence, to solve the issues mentioned earlier, this paper presents the notion of secure…
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Taxonomy
TopicsPrivacy-Preserving Technologies in Data · Vehicular Ad Hoc Networks (VANETs) · Blockchain Technology Applications and Security
