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A Decentralized Federated Learning Approach for Connected Autonomous Vehicles

Shiva Raj Pokhrel, Jinho Choi

202091 citationsDOIOpen Access PDF

Abstract

In this paper, we propose an autonomous blockchain-based federated learning (BFL) design for privacy-aware and efficient vehicular communication networking, where local on-vehicle machine learning (oVML) model updates are exchanged and verified in a distributed fashion. BFL enables on-vehicle machine learning without any centralized training data or coordination by utilizing the consensus mechanism of the blockchain. Relying on a renewal reward approach, we develop a mathematical framework that features the controllable network and BFL parameters, such as the retransmission limit, block size, block arrival rate, and the frame sizes, so as to capture their impact on the system-level performance. More importantly, our rigorous analysis of oVML system dynamics quantifies the end-to-end delay with BFL, which provides important insights into deriving optimal block arrival rate by considering communication and consensus delays.

Topics & Concepts

RetransmissionComputer scienceBlock (permutation group theory)Frame (networking)Distributed computingVehicle dynamicsArtificial intelligenceComputer networkEngineeringMathematicsNetwork packetGeometryAutomotive engineeringBlockchain Technology Applications and SecurityPrivacy-Preserving Technologies in DataVehicular Ad Hoc Networks (VANETs)
A Decentralized Federated Learning Approach for Connected Autonomous Vehicles | Litcius