Publication | Closed Access
A Secure Data Aggregation Strategy in Edge Computing and Blockchain-Empowered Internet of Things
123
Citations
28
References
2020
Year
EngineeringData AggregationInformation SecurityHigh ThroughputBlock HeaderIot SecurityData ScienceIot ChallengeBlockchain-empowered InternetInternet Of ThingsComputer EngineeringData PrivacyMobile ComputingComputer ScienceIot Data ManagementData SecurityCryptographyEdge ComputingCloud ComputingFederated LearningBlockchainBlockchain Protocol
With the rapid development of the Internet of Things (IoT), more and more data are generated by smart devices to support various edge services. Since these data may contain sensitive information, security and privacy of data aggregation has become a key challenge in IoT. To tackle this problem, a blockchain-based secure data aggregation strategy, namely (BSDA), is proposed for edge computing empowered IoT. Specifically, in order to restrict task receivers [i.e., mobile data collectors (MDCs)] to search and accept tasks, the block header is intergraded with a security label including task security level (SL) and task completion requirement. Accordingly, new block generation rules are developed to improve system performance in throughput and transaction latency. Furthermore, BSDA decomposes both sensitive tasks and task receivers into groups against privacy disclosure. On the other hand, a deep reinforcement learning method, the improved self-adaptive double bootstrapped deep deterministic policy gradient (IDDPG), is developed to design energy-efficient MDC routes under the constrains that the SLs of MDCs should be higher than the SLs of data aggregation tasks. Simulation results indicate that 1) as a privacy-preserving strategy, BSDA obtains high throughput and low transaction latency and 2) BSDA outperforms certain contemporary strategies in aggregation ratio and energy cost.
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