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Title LTSM: Lightweight and Trusted Sharing Mechanism of IoT Data in Smart City
ID_Doc 36896
Authors Liu, C; Guo, SY; Guo, S; Yan, Y; Qiu, XS; Zhang, SX
Title LTSM: Lightweight and Trusted Sharing Mechanism of IoT Data in Smart City
Year 2022
Published Ieee Internet Of Things Journal, 9.0, 7
Abstract With the development of smart cities, the chimney construction method can no longer meet service needs. It is extremely urgent to build a unified urban brain, and the core issue is data sharing and fusion. Aiming at the problems of data island, data leakage, and high trust cost in the IoT of the smart city, a lightweight and trusted sharing mechanism (LTSM) is proposed. First, the blockchain is combined with federated learning to realize the data sharing, which not only protects the private data, but also ensures the sharing process trust. Then, a node selection algorithm based on credit value and a node evaluation algorithm based on smart contract are designed to improve the quality of federated learning. Finally, we propose an improved raft consensus to meet the delay and security requirements of the consortium blockchain in the smart city scenario. In the simulation, we evaluate the federated learning algorithm, the node selection algorithm, and the improved raft consensus, respectively. The experimental results show that the LTSM mechanism has a good application value. The federated learning model has a better accuracy, but its training time is also longer. The node selection algorithm is helpful to improve the accuracy of the federated learning model. The improved raft consensus improves the throughput.
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