Sharding for Blockchain based Mobile Edge Computing System: A Deep Reinforcement Learning Approach

2021 IEEE GLOBAL COMMUNICATIONS CONFERENCE (GLOBECOM)(2021)

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摘要
With the growth of data scale in the mobile edge computing (MEC) network, data security of the MEC network has become a burning concern. The application of blockchain technology in MEC enhances data security and privacy protection. However, throughput becomes the bottleneck of the blockchain-enabled MEC system. Hence, this paper proposes a novel hierarchical and partitioned blockchain framework to improve scalability while guaranteeing the security of partitions. Next, we model the joint optimization of throughput and security as a Markov decision process (MDP). After that, we adopt deep reinforcement learning (DRL) based algorithms to obtain the number of partitions, the size of micro blocks and the large block generation interval. Finally, we analyze the security and throughput performance of proposed schemes. Simulation results demonstrate that proposed schemes can improve throughput while ensuring the security of partitions.
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关键词
data scale,mobile edge computing network,MEC network,blockchain technology,MEC enhances data security,privacy protection,blockchain-enabled MEC system,blockchain framework,Markov decision process,deep reinforcement learning based algorithms,blockchain based mobile edge computing system,DRL based algorithms
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