Advances in Vehicular Networks
Material type:![Article](/opac-tmpl/lib/famfamfam/AR.png)
- books978-3-03943-800-6
- 9783039437993
- 9783039438006
- History of engineering & technology
- vehicular networks
- 5G
- C-RAN
- resource allocation
- edge computing
- optimization
- vehicle-to-everything communication
- pedestrian
- vehicles
- safety
- automotive
- damper
- convolutional neural networks
- fault detection
- diagnosis
- machine learning
- deep learning
- connected vehicles
- reconfigurable meta-surface
- smart environment
- cooperative driving
- vulnerable road user detection
- collision probability
- probabilistic flooding
- vehicular communication
- visible light communications
- 5G networks
- smart vehicles
- field trials
- infrastructure-to-vehicle
- vehicle-to-vehicle
- Intelligent Transportation Systems
- Visible Light Communication
- Fresnel lenses
- AODV
- end-to-end delay
- packet loss ratio
- throughput
- VANET
- n/a
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OPJGU Sonepat- Campus | E-Books Open Access | Available |
Open Access star Unrestricted online access
Connected and automated vehicles have revolutionized the way we move, granting new services on roads. This Special Issue collects contributions that address reliable and ultra-low-latency vehicular applications that range from advancements at the access layer, such as using the visible light spectrum to accommodate ultra-low-latency applications, to data dissemination solutions. Further, articles discuss edge computing, neural network-based techniques, and the use of reconfigurable intelligent surfaces (RIS) to boost throughput and enhance coverage.
Creative Commons https://creativecommons.org/licenses/by/4.0/ cc https://creativecommons.org/licenses/by/4.0/
English
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