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Editorial

OCLC Number/Unique Identifier: 9501817542

Autonomous Vehicles: Ingress and Potential

General Science    Start Submission

Rasa Uspalyte Vitkuniene*

Volume3-Issue3
Dates: Received: 2022-03-30 | Accepted: 2022-03-30 | Published: 2022-03-31
Pages: 311-315

Abstract

New engineering solutions have been developed with the aim to help the driver over the past few decades. 94 ± 2.2% of accidents are caused by a human choice or error, where the critical reason, in the crash causal chain, was assigned to the driver. Autonomous Vehicles (AV) have great potential for improving road safety. This paper provides overview of the autonomic car background, the need for infrastructure for competitive entry of autonomous cars into the urban transport market. The description of the potential of autonomous cars covers the two main most promising areas: the application of AV to public transport and AV in car sharing service.

FullText HTML FullText PDF DOI: 10.37871/jbres1439


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© 2022 Vitkuniene RU. Distributed under Creative Commons CC-BY 4.0

How to cite this article

Vitkuniene RU. Autonomous Vehicles: Ingress and Potential. J Biomed Res Environ Sci. 2022 Mar 31; 3(3): 311-315. doi: 10.37871/jbres1439, Article ID: JBRES1439, Available at: https://www.jelsciences.com/articles/jbres1439.pdf


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