首页> 外文期刊>Journal of Advanced Computatioanl Intelligence and Intelligent Informatics >Fuzzy Inference Based Vehicle to Vehicle Network Connectivity Model to Support Optimization Routing Protocol for Vehicular Ad-Hoc Network (VANET)
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Fuzzy Inference Based Vehicle to Vehicle Network Connectivity Model to Support Optimization Routing Protocol for Vehicular Ad-Hoc Network (VANET)

机译:基于模糊推理的车对车网络连通性模型,以支持车辆专用网络(VANET)的优化路由协议

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摘要

A Fuzzy Inference based Vehicle to Vehicle Network Connectivity Model is proposed to support Optimization Routing Protocol for Vehicular Ad-hoc Network (VANET), where the real-time vehicle to vehicle network connectivity situation of road segments is expressed using fuzzy inference according to the vehicle distribution situation, and the optimized routing protocol modifies the transmission path dynamically and optimizes packet forwarding. The proposed model expresses the real-time vehicle to vehicle network connectivity of each road segment that cannot be easily expressed directly by a mathematical model and decreases the end-to-end delay and the overall network control overhead. The computation time of the proposed protocol is analyzed and shown as O(IlgI + R + V) where I, R, and V represent the number of intersections on a map, the number of road segments on a map, and the number of vehicles within communication range of the vehicle that wants to transfer a data packet, respectively. The simulation tools NS2 and TraNS are used to perform experiments that include wireless data packet transmission and vehicle mobility traces. The results show that the proposed method decreases end-to-end delay and decreases the control overhead by 20% compared with other routing protocols, e.g. GyTAR and RTRP. This proposal implements an intelligent transportation system application and a traffic-monitoring system in NS2 using the optimization routing protocol. This protocol will be implemented to develop a real vehicle telematics system using the embedded system to improve the user-driving experience.
机译:提出了一种基于模糊推理的车对车网络连通性模型,以支持车辆自组织网络(VANET)的优化路由协议,其中路段的实时车对车网络连通性情况根据车辆的模糊推理来表示。分布情况,优化的路由协议可以动态修改传输路径,优化报文转发。所提出的模型表示每个路段的实时车辆到车辆网络的连通性,而该连通性不能通过数学模型直接轻松地表达,并且减少了端到端的延迟和整个网络的控制开销。分析所提议协议的计算时间,并将其显示为O(IlgI + R + V),其中I,R和V表示地图上的交叉点数量,地图上的路段数量以及车辆数量在要传输数据包的车辆的通信范围内。仿真工具NS2和TraNS用于执行包括无线数据包传输和车辆移动轨迹的实验。结果表明,与其他路由协议相比,该方法减少了端到端延迟,并将控制开销减少了20%。 GyTAR和RTRP。该提议使用优化路由协议在NS2中实现了智能交通系统应用程序和交通监控系统。该协议将被实施以使用嵌入式系统开发真正的车辆远程信息处理系统,以改善用户驾驶体验。

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