6G in the Sky: On-Demand Intelligence at the Edge of 3D Networks
- URL: http://arxiv.org/abs/2010.09463v1
- Date: Mon, 19 Oct 2020 13:07:57 GMT
- Title: 6G in the Sky: On-Demand Intelligence at the Edge of 3D Networks
- Authors: Emilio Calvanese Strinati, Sergio Barbarossa, Taesang Choi, Antonio
Pietrabissa, Alessandro Giuseppi, Emanuele De Santis, Josep Vidal, Zdenek
Becvar, Thomas Haustein, Nicolas Cassiau, Francesca Costanzo, Junhyeong Kim,
Ilgyu Kim
- Abstract summary: 6G will exploit satellite, aerial and terrestrial platforms jointly to improve radio access capability.
We consider an architecture providing communication, computation, and caching (C3) services on demand, anytime and everywhere in 3D space.
- Score: 60.49776988771734
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: 6G will exploit satellite, aerial and terrestrial platforms jointly to
improve radio access capability and to unlock the support of on-demand edge
cloud services in the three dimensional space (3D) by incorporating Mobile Edge
Computing (MEC) functionalities on aerial platforms and low orbit satellites.
This will extend the MEC support to devices and network elements in the sky and
will forge a space borne MEC enabling intelligent personalized and distributed
on demand services. 3D end users will experience the impression of being
surrounded by a distributed computer fulfilling their requests in apparently
zero latency. In this paper, we consider an architecture providing
communication, computation, and caching (C3) services on demand, anytime and
everywhere in 3D space, building on the integration of conventional ground
(terrestrial) base stations and flying (non-terrestrial) nodes. Given the
complexity of the overall network, the C3 resources and the management of the
aerial devices need to be jointly orchestrated via AI-based algorithms,
exploiting virtualized networks functions dynamically deployed in a distributed
manner across terrestrial and non-terrestrial nodes.
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