Smart Vehicle

Author:

Raut Sonali P.,Pise A. C.

Abstract

This article gives a summary of the existing state of affairs and potential developments for smart vehicles while taking into consideration social, technological, and transportation aspects. Additionally, it examines the strategies for turning the smart into a generic vehicle, potential future developments, 5G, ADAS, and power source characteristics. This will make it possible for linked automobiles to take center stage in smart cities. Information may be exchanged between vehicles and road infrastructures as well as from one vehicle to another thanks to the vehicle-to-infrastructure (V2I) and vehicle-to-vehicle (V2V) communication frameworks. It attempts to improve mobility, prevent or lessen auto accidents, and offer additional advantages for road safety. Motivations, open problems, and suggestions from other academics were taken into account to enhance and understand the various histories and characteristics of the business .All publications about data transfers in the V2I communication system were thoroughly searched. They use DSRC and 5G, Bluetooth and WIFI technology but there are many problems and data. I exploited RF frequencies to spontaneously broadcast the data in order to get around that.

Publisher

HM Publishers

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