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TCNS: Node Selection With Privacy Protection in Crowdsensing Based on Twice Consensuses of Blockchain

机译:TCNS:基于两次区块链的三次共识,节点选择

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摘要

With the rapid growth of smart terminals in recent years, crowdsensing which utilizes the human intelligence to solve complicated problems have gained considerable interest and exploit. The majority of the existing crowdsensing systems rely on a trusted third-party platform to complete sensing tasks and collect large-scale data. However, the platform cannot completely ensure trust in the real world. The issues of security and privacy caused by the center platform should not be ignored. In this paper, we propose a decentralized privacy-preserving model based on twice verifications and consensuses of blockchain (TCNS). In the prototype of TCNS, an anonymity strategy which can be verified based on the elliptic curve algorithm is proposed to protect the user identity privacy. Then, we propose a twice consensus mechanism, which ensures that the data can be traced and avoids data from being impersonated, tampered with, and denied. Moreover, we propose a user attribute protection scheme based on the lightweight homomorphic encryption algorithm. Finally, considering various influencing factors comprehensively, TCNS uses fuzzy theories to select the candidate mobile nodes. Further, we implement the prototype with real-world datasets, the experimental analysis of privacy protection and safety shows that TCNS can effectively prevent association analysis attacks and background knowledge attacks. More gratifying, the time overhead for generating a new block is acceptable.
机译:随着近年来智能终端的快速增长,利用人类智能解决复杂问题的众群人已经获得了相当大的兴趣和利用。大多数现有的众多众多系统依赖于可信的第三方平台来完成传感任务并收集大规模数据。但是,该平台不能完全确保对现实世界的信任。不应忽视由中心平台造成的安全和隐私问题。在本文中,我们提出了基于两次核查和区块链(TCN)的核算和共识的分散的隐私保留模型。在TCN的原型中,提出了可以基于椭圆曲线算法验证的匿名策略,以保护用户身份隐私。然后,我们提出了两次共识机制,确保数据可以追踪并避免数据冒充,篡改和否认。此外,我们提出了一种基于轻量级均匀加密算法的用户属性保护方案。最后,全面考虑各种影响因素,TCNS使用模糊理论来选择候选移动节点。此外,我们利用现实世界数据集实现了原型,对隐私保护和安全的实验分析表明,TCN可以有效地防止关联分析攻击和背景知识攻击。更加令人满足,为生成新块的时间开销是可以接受的。

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