Emerging Blockchain and Reputation Management in Federated Learning: Enhanced Security and Reliability for Internet of Vehicles (IoV)
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Date
2025-02-02
Journal Title
Journal ISSN
Volume Title
Publisher
IEEE TRANSACTIONS ON VEHICULAR TECHNOLOGY
Abstract
Artificial intelligence (AI) technologies have been applied to the Internet of Vehicles (IoV) to provide convenience services such as traffic flow prediction. However, concerns regarding
privacy and security are on the rise as huge amounts of data
are aggregated to form large models (LMs). Although federated
learning (FL), which trains and updates a model without sharing
the actual datasets, has been intensively researched to prevent
privacy breaches, there are still potential security threats like a
single point of failure and intentional tampering with malicious
data. This is because of the vulnerability of a central curator
and a lack of authentication. As participants, they (i.e., vehicles)
may unintentionally update low-quality data caused by poor wireless connectivity, unstable availability, and insufficient training
datasets. They may also intentionally update unreliable data to
carry out poisoning attacks. The divergence among local models,
trained on non-independent and identically distributed (non-IID)
data, can slow convergence and diminish model accuracy when
these models are aggregated. Therefore, it is important to carefully
select trustworthy participants. In this paper, we propose a new
reliable and secure federated learning for IoV based on decentralized blockchain and reputation management. To cope with a
single point of failure, injection of malicious data, and lack of
authentication while ensuring privacy and traceability, our scheme
combines blockchain and a lightweight digital signature. Moreover,
we employ the concept of the reputation of vehicles to select suitable
participants with reliability, ultimately improving accuracy. Security analysis results, including comparisons with previous works,
prove that the proposed scheme can address security concerns. The
results of performance evaluations demonstrate the effectiveness of
our proposed scheme
Description
Keywords
Blockchain, federated learning (FL), Internet of Vehicles (IoV), large models (LMs), privacy, reputation, security.