Novel machine learning based authentication technique in VANET system for secure data transmission

Anand N. Patil, Sujata V. Mallapur
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Abstract

Adaptive transport technologies based on vehicular ad hoc networks (VANET) has proven considerable potential in light of the developing expansion of driver assistance and automobile telecommunication systems. However, confidentiality and safety are the vital challenges in vehicular ad hoc networks which could be seriously impaired by malicious attackers. While protecting vehicle privacy from threats, it is imperative to stop internal vehicles from putting out bogus messages. Considering these issues, a novel machine learning based message authentication combined with blockchain and inter planetary file system (IPFS) is proposed to achieve message dissemination in a secured way. Blockchain is the emerging technology which attempts to solve these problems by producing tamper proof events of records in a distributed environment and inter planetary file system used in the framework is a protocol designed to store the event with content addressability. Along with this combined technology, the source metadata information collected from the inter planetary file system is stored via a smart contract and uploaded to the distributed ledger technology (DLT). For performing event authentication, K-means clustering and support vector machine (SVM) classifier is employed in this framework. K-means clustering performs clustering of vehicles and it is marked malicious or not malicious. After clustering, support vector machine classifier detects the malicious event messages. By this way, the malicious messages are identified and it is dropped. Only the secure messages are forwarded in the network. Finally, our approach is capable of creating a safe and decentralized vehicular ad hoc network architecture with accountability and confidentiality through theoretical study and simulations.
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一种新的基于机器学习的VANET安全数据传输认证技术
鉴于驾驶员辅助和汽车电信系统的不断扩展,基于车辆自组织网络(VANET)的自适应交通技术已被证明具有相当大的潜力。然而,保密性和安全性是车载自组织网络面临的重要挑战,恶意攻击者可能会严重损害该网络。在保护车辆隐私免受威胁的同时,必须阻止内部车辆发布虚假信息。考虑到这些问题,提出了一种新的基于机器学习的消息认证方法,结合区块链和行星间文件系统(IPFS),以安全的方式实现消息传播。区块链是一种新兴技术,它试图通过在分布式环境中生成记录的防篡改事件来解决这些问题,该框架中使用的行星间文件系统是一种旨在存储具有内容寻址能力的事件的协议。与这种组合技术一起,从行星间文件系统收集的源元数据信息通过智能合约存储,并上传到分布式账本技术(DLT)。为了进行事件认证,该框架采用了K-means聚类和支持向量机分类器。K-means聚类对车辆进行聚类,并标记为恶意或非恶意。聚类后,支持向量机分类器对恶意事件消息进行检测。通过这种方式,可以识别恶意消息并将其删除。只有安全消息才会在网络中转发。最后,通过理论研究和仿真,我们的方法能够创建一个安全、分散的车载自组织网络架构,具有问责制和保密性。
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CiteScore
0.40
自引率
0.00%
发文量
25
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