Sporadic Cloud-Based Mobile Augmentation on the Top of a Virtualization Layer: A Case Study of Collaborative Downloads in VANETs

Current approaches to Cloud-based Mobile Augmentation (CMA) leverage (cloud-based) resources to meet the requirements of rich mobile applications, so that a terminal (the so-called application node or AppN) can borrow resources lent by a set of collaborator nodes (CNs). In the most sophisticated app...

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Veröffentlicht in:Journal of advanced transportation 2019-01, Vol.2019 (2019), p.1-21
Hauptverfasser: Gil-Solla, Alberto, Ramos-Cabrer, Manuel, Saiáns-Vázquez, José Víctor, Bravo-Torres, Jack Fernando, Reinoso-Mendoza, Efren Patricio, Blanco Fernandez, Yolanda, Lopez-Nores, M., Ordóñez-Morales, Esteban Fernando, Pazos-Arias, Jose Juan
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Sprache:eng
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Zusammenfassung:Current approaches to Cloud-based Mobile Augmentation (CMA) leverage (cloud-based) resources to meet the requirements of rich mobile applications, so that a terminal (the so-called application node or AppN) can borrow resources lent by a set of collaborator nodes (CNs). In the most sophisticated approaches proposed for vehicular scenarios, the collaborators are nearby vehicles that must remain together near the application node because the augmentation service is interrupted when they move apart. This leads to disruption in the execution of the applications and consequently impoverishes the mobile users’ experience. This paper describes a CMA approach that is able to restore the augmentation service transparently when AppNs and CNs separate. The functioning is illustrated by a NaaS model where the AppNs access web contents that are collaboratively downloaded by a set of CNs, exploiting both roadside units and opportunistic networking. The performance of the resulting approach has been evaluated via simulations, achieving promising results in terms of number of downloads, average download times, and network overhead.
ISSN:0197-6729
2042-3195
DOI:10.1155/2019/3548213