5G Features and Standards for Vehicle Data Exploitation
- URL: http://arxiv.org/abs/2204.06211v1
- Date: Wed, 13 Apr 2022 07:33:50 GMT
- Title: 5G Features and Standards for Vehicle Data Exploitation
- Authors: Gorka Velez (1), Edoardo Bonetto (2), Daniele Brevi (2), Angel Martin
(1), Gianluca Rizzi (3), Oscar Casta\~neda (4), Arslane Hamza Cherif (5),
Marcos Nieto (1), Oihana Otaegui (1) ((1) Vicomtech Foundation, (2) Links
Foundation, (3) Wind Tre, (4) Dekra, (5) UNIMORE & ICOOR)
- Abstract summary: 5G can enable car-captured data to feed innovative applications and services deployed in the cloud.
This paper identifies and discusses the relevance of the main 5G features that can contribute to a scalable, flexible, reliable and secure data pipeline.
- Score: 0.0
- License: http://creativecommons.org/licenses/by-nc-nd/4.0/
- Abstract: Cars capture and generate huge volumes of data in real-time about the driving
dynamics, the environment, and the driver and passengers' activities. Due to
the proliferation of cooperative, connected and automated mobility (CCAM), the
value of data from vehicles is getting strategic, not just for the automotive
industry, but also for many diverse stakeholders including small and
medium-sized enterprises (SMEs) and start-ups. 5G can enable car-captured data
to feed innovative applications and services deployed in the cloud ensuring
lower latency and higher throughput than previous cellular technologies. This
paper identifies and discusses the relevance of the main 5G features that can
contribute to a scalable, flexible, reliable and secure data pipeline, pointing
to the standards and technical reports that specify their implementation.
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