A Blockchain-Assisted Distributed Edge Intelligence for Privacy-Preserving Vehicular Networks

Muhammad Firdaus, Harashta Tatimma Larasati, Kyung-Hyune Rhee
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Abstract

The enormous volume of heterogeneous data from various smart device-based applications has growingly increased a deeply interlaced cyber-physical system. In order to deliver smart cloud services that require low latency with strong computational processing capabilities, the Edge Intelligence System (EIS) idea is now being employed, which takes advantage of Artificial Intelligence (AI) and Edge Computing Technology (ECT). Thus, EIS presents a potential approach to enforcing future Intelligent Transportation Systems (ITS), particularly within a context of a Vehicular Network (VNets). However, the current EIS framework meets some issues and is conceivably vulnerable to multiple adversarial attacks because the central aggregator server handles the entire system orchestration. Hence, this paper introduces the concept of distributed edge intelligence, combining the advantages of Federated Learning (FL), Differential Privacy (DP), and blockchain to address the issues raised earlier. By performing decentralized data management and storing transactions in immutable distributed ledger networks, the blockchain-assisted FL method improves user privacy and boosts traffic prediction accuracy. Additionally, DP is utilized in defending the user’s private data from various threats and is given the authority to bolster the confidentiality of data-sharing transactions. Our model has been deployed in two strategies: First, DP-based FL to strengthen user privacy by masking the intermediate data during model uploading. Second, blockchain-based FL to effectively construct secure and decentralized traffic management in vehicular networks. The simulation results demonstrated that our framework yields several benefits for VNets privacy protection by forming a distributed EIS with privacy budget (ε) of 4.03, 1.18, and 0.522, achieving model accuracy of 95.8%, 93.78%, and 89.31%, respectively.
一种区块链辅助的分布式边缘智能用于保护隐私的汽车网络
来自各种基于智能设备的应用程序的海量异构数据日益增加了一个深度交错的网络物理系统。为了提供需要低延迟和强大计算处理能力的智能云服务,现在正在采用边缘智能系统(EIS)的想法,它利用了人工智能(AI)和边缘计算技术(ECT)。因此,EIS提供了一种实施未来智能交通系统(ITS)的潜在方法,特别是在车辆网络(VNets)的背景下。然而,当前的EIS框架遇到了一些问题,并且很容易受到多重对抗性攻击,因为中央聚合器服务器处理整个系统编排。因此,本文引入了分布式边缘智能的概念,结合了联邦学习(FL)、差分隐私(DP)和区块链的优势来解决前面提出的问题。通过执行分散的数据管理并将交易存储在不可变的分布式分类账网络中,区块链辅助FL方法改善了用户隐私并提高了流量预测的准确性。此外,DP还用于保护用户的私有数据免受各种威胁,并被赋予增强数据共享事务机密性的权限。我们的模型已经部署在两种策略中:第一,基于dp的FL通过掩盖模型上传过程中的中间数据来增强用户隐私。二是基于区块链的FL,有效构建安全分散的车联网交通管理。仿真结果表明,我们的框架对VNets隐私保护具有多种好处,形成了一个隐私预算(ε)分别为4.03、1.18和0.522的分布式EIS,模型准确率分别达到95.8%、93.78%和89.31%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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