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Peilin Hong

Researcher at University of Science and Technology of China

Publications -  128
Citations -  3665

Peilin Hong is an academic researcher from University of Science and Technology of China. The author has contributed to research in topics: Throughput & Virtual network. The author has an hindex of 28, co-authored 126 publications receiving 2521 citations.

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A temporal-credential-based mutual authentication and key agreement scheme for wireless sensor networks

TL;DR: A temporal-credential-based mutual authentication scheme among the user, GWN and the sensor node and a lightweight key agreement scheme is proposed to embed into the protocol that is realistic and well adapted for resource-constrained wireless sensor networks.
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Healthchain: A Blockchain-Based Privacy Preserving Scheme for Large-Scale Health Data

TL;DR: By introducing Healthchain, both IoT data and doctor diagnosis cannot be deleted or tampered with so as to avoid medical disputes, and security analysis and experimental results show that the proposed Healthchain is applicable for smart healthcare system.
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PPMA: Privacy-Preserving Multisubset Data Aggregation in Smart Grid

TL;DR: Detailed security analysis shows that PPMA can protect individual user's electricity consumption privacy against a strong adversary, and extensive experiments results demonstrate thatPPMA has less computation overhead and no more extra communication and storage costs.
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A lightweight dynamic pseudonym identity based authentication and key agreement protocol without verification tables for multi-server architecture

TL;DR: A lightweight dynamic pseudonym identity based authentication and key agreement protocol for multi-server architecture that provides not only the declared security features in Li et [email protected]?s paper, but also some other security features, such as traceability and identity protection.
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Optimal VNF Placement via Deep Reinforcement Learning in SDN/NFV-Enabled Networks

TL;DR: Evaluation results show that DDQN-VNFPA can get improved network performance in terms of the reject number and reject ratio of Service Function Chain Requests, throughput, end-to-end delay, VNFI running time and load balancing compared with the algorithms in existing literatures.