基于卫星边缘计算强化学习的4G车联网数据安全增强

Luis Alberto Núñez Lira, K. A. Kumari, R. Raman, Ardhariksa Zukhruf Kurniullah, Santiago Aquiles Gallarday Morales, Tula Del Carmen Espinoza Cordero
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引用次数: 4

摘要

车载网络提供IEEE 802.11p标准的专用短距离通信(DSRC)。VANET模型包括蜂窝车对万物通信与无线通信技术。车辆边缘计算展示了提供有前途的智能交通系统服务的有前途的技术。智能应用和城市计算。车载网络采用卫星边缘计算模型,为VANET通信提供服务,为终端用户管理计算资源,为终端用户提供低延迟服务的接入,最大限度地执行服务。采用4G车载通信网络模型实现的卫星边缘计算模型存在数据安全问题。本文提出了一种路由计算深度学习模型(RCDL),以提高4G技术下VANET通信的安全性。RCDL模型采用最优路由选择的路由建立模型。计算路由使用从卫星边缘计算模型中识别出的选择最优路由的加密方案模型进行传输。提出的RCDL方案采用基于深度学习的强化学习方案,结合4G技术通信模型在VANET环境下进行攻击防御。仿真结果表明,本文提出的RCDL模型达到了98%的PDR值,比现有模型提高了约6%。RCDL方案对端到端时延的估计最小,提高了VANET通信性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Data Security Enhancement in 4G Vehicular Networks Based on Reinforcement Learning for Satellite Edge Computing
The vehicular network provides the dedicated short-range communication (DSRC) with IEEE 802.11p standard. The VANET model comprises of cellular vehicle-to-everything communication with wireless communication technology. Vehicular Edge Computing exhibits the promising technology to provide promising Intelligent Transport System Services. Smart application and urban computing. Satellite edge computing model is adopted in vehicular networks to provide services to the VANET communication for the management of computational resources for the end-users to provide access to low latency services for maximal execution of service. The satellite edge computing model implemented with the 4G vehicular communication network model subjected to data security issues. This paper presented a Route Computation Deep Learning Model (RCDL) to improve security in VANET communication with 4G technology. The RCDL model uses the route establishment model with the optimal route selection. The compute route is transmitted with the cryptographic scheme model for the selection of optimal route identified from the satellite edge computing model. The proposed RCDL scheme uses the deep learning-based reinforcement learning scheme for the attack prevention in the VANET environment employed with the 4G technology communication model. The simulation results expressed that proposed RCDL model achieves the higher PDR value of 98% which is ~6% higher than the existing model. The estimation of end-to-end delay is minimal for the RCDL scheme and improves the VANET communication.
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