Integration of Digital Twin and Federated Learning for Securing Vehicular Internet of Things
Deepti Gupta, Shafika Showkat Moni, Ali Saman Tosun

TL;DR
This paper proposes a hierarchical federated learning-based anomaly detection system that integrates digital twins to improve security and privacy in vehicular IoT environments, demonstrated through real-world scenarios.
Contribution
It introduces a novel integration of digital twins with hierarchical federated learning for enhanced anomaly detection in V-IoT, addressing privacy and accuracy issues.
Findings
Improved anomaly detection accuracy in V-IoT using the proposed model.
Effective privacy preservation through federated learning.
Demonstrated applicability in real-world vehicular scenarios.
Abstract
In the present era of advanced technology, the Internet of Things (IoT) plays a crucial role in enabling smart connected environments. This includes various domains such as smart homes, smart healthcare, smart cities, smart vehicles, and many others.With ubiquitous smart connected devices and systems, a large amount of data associated with them is at a prime risk from malicious entities (e.g., users, devices, applications) in these systems. Innovative technologies, including cloud computing, Machine Learning (ML), and data analytics, support the development of anomaly detection models for the Vehicular Internet of Things (V-IoT), which encompasses collaborative automatic driving and enhanced transportation systems. However, traditional centralized anomaly detection models fail to provide better services for connected vehicles due to issues such as high latency, privacy leakage,…
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Taxonomy
TopicsPrivacy-Preserving Technologies in Data · Vehicular Ad Hoc Networks (VANETs) · Advanced Data and IoT Technologies
