Publication:
A MEC-based Extended Virtual Sensing for Automotive Services

Loading...
Thumbnail Image

Advisors

Tutors

Editor

Publication date

Defense date

Journal Title

Journal ISSN

Volume Title

Publisher

IEEE

Serie/Núm

Creative Commons license

Impact
Google Scholar
Export

Research Projects

Research Projects

Organizational Units

Journal Issue

To cite this item, use the following identifier: https://hdl.handle.net/10016/29152

Abstract

Multi-access edge computing (MEC) comes with the promise of enabling low-latency applications and of reducing core network load by offloading traffic to edge service instances. Recent standardization efforts, among which the ETSI MEC, have brought about detailed architectures for the MEC. Leveraging the ETSI model, in this paper we first present a flexible, yet full-fledged, MEC architecture that is compliant with the standard specifications. We then use such architecture, along with the popular OpenAir Interface (OAI), for the support of automotive services with very tight latency requirements. We focus in particular on the Extended Virtual Sensing (EVS) services, which aim at enhancing the sensor measurements aboard vehicles with the data collected by the network infrastructure, and exploit this information to achieve better safety and improved passengers/driver comfort. For the sake of concreteness, we select the intersection control as an EVS service and present its design and implementation within the MEC platform. Experimental measurements obtained through our testbed show the excellent performance of the MEC EVS service against its equivalent cloud-based implementation, proving the need for MEC to support critical automotive services, as well as the benefits of the solution we designed.

Note

ODS

Bibliographic citation

Avino, G., Bande, P., Frangoudis, A., Vitale, C., Casetti, C., Chiasserini, C. F., ... Zennaro, G. (2019). A MEC-based Extended Virtual Sensing for Automotive Services. IEEE Transactions on Network and Service Management.

Table of contents

Has version

Is version of

Related dataset

Related Publication

Is part of