Litcius/Paper detail

FBI: A Federated Learning-Based Blockchain-Embedded Data Accumulation Scheme Using Drones for Internet of Things

Anik Islam, Ahmed Al Amin, Soo Young Shin

2022IEEE Wireless Communications Letters102 citationsDOI

Abstract

This letter presents a federated learning-basd data-accumulation scheme that combines drones and blockchain for remote regions where Internet of Things devices face network scarcity and potential cyber threats. The scheme contains a two-phase authentication mechanism in which requests are first validated using a cuckoo filter, followed by a timestamp nonce. Secure accumulation is achieved by validating models using a Hampel filter and loss checks. To increase the privacy of the model, differential privacy is employed before sharing. Finally, the model is stored in the blockchain after consent is obtained from mining nodes. Experiments are performed in a proper environment, and the results confirm the feasibility of the proposed scheme.

Topics & Concepts

Computer scienceBlockchainCryptographic nonceScheme (mathematics)DroneComputer securityTimestampThe InternetAuthentication (law)Bloom filterFilter (signal processing)Computer networkInternet of ThingsEncryptionWorld Wide WebComputer visionMathematical analysisBiologyMathematicsGeneticsPrivacy-Preserving Technologies in DataBlockchain Technology Applications and SecurityUAV Applications and Optimization
FBI: A Federated Learning-Based Blockchain-Embedded Data Accumulation Scheme Using Drones for Internet of Things | Litcius