The Impact of 5G Networks on the Development of Connected and Autonomous Cars
Journal: International Journal of Advances in Computer Science and Technology (IJACST) (Vol.13, No. 1)Publication Date: 2024-01-25
Authors : Tejashwini G Jampannanavar Tharun Kumar R T.M.Bharath Kumar Y.V.Karthikeya Prashanth Kumar;
Page : 11-17
Keywords : 5G networks; connected cars; autonomous cars; vehicle-to-vehicle communication; vehicle-to-infrastructure communication; real-time data processing; cybersecurity; driver assistance systems.;
Abstract
Smart The development of connected and autonomous cars (CACs) is set to revolutionize transportation, offering increased safety, efficiency, and convenience. However, the widespread adoption of CACs relies heavily on the availability of reliable and high-speed wireless networks. This paper explores the impact of 5G networks on CACs, focusing on their ability to provide higher speeds, lower latency, and greater capacity. Additionally, it examines the benefits of 5G for CACs, including improved safety, increased efficiency, and the emergence of new transportation services. The paper concludes that 5G networks play an important role in advancing CAC technology and driving its adoption. 5G networks pave the way for the emergence of new transportation services that can revolutionize the mobility landscape. With the high-speed and low-latency capabilities of 5G, CACs can seamlessly connect to other smart devices and infrastructure, enabling innovative services such as ride-sharing, on-demand transportation, and mobility-as-a-service (MaaS) platforms. These services can transform the way people access transportation, offering flexible and convenient options that cater to individual needs
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Last modified: 2024-01-26 22:29:10