A groundbreaking design of radio access networks (RANs) is needed to fulfill 5G traffic requirements. To this aim, a cost-effective and flexible strategy consists of complementing terrestrial RANs with unmanned aerial vehicles (UAVs). However, several problems must be solved in order to effectively deploy such UAV-based RANs (U-RANs). Indeed, due to the high complexity and heterogeneity of these networks, model-based design approaches, often relying on restrictive assumptions and constraints, exhibit severe limitation in real-world scenarios. Moreover, design of a set of appropriate protocols for such U-RANs is a highly sophisticated task. In this context, machine learning (ML) emerges as a useful tool to obtain practical and effective solutions. In this paper, we discuss why, how, and which types of ML methods are useful for designing U-RANs, by focusing in particular on supervised and reinforcement learning strategies.

On the Application of Machine Learning to the Design of UAV-Based 5G Radio Access Networks / Kouhdaragh, V.; Verde, F.; Gelli, G.; Abouei, J.. - In: ELECTRONICS. - ISSN 2079-9292. - 9:4(2020), pp. 688-708. [10.3390/electronics9040689]

On the Application of Machine Learning to the Design of UAV-Based 5G Radio Access Networks

Verde F.
;
Gelli G.;
2020

Abstract

A groundbreaking design of radio access networks (RANs) is needed to fulfill 5G traffic requirements. To this aim, a cost-effective and flexible strategy consists of complementing terrestrial RANs with unmanned aerial vehicles (UAVs). However, several problems must be solved in order to effectively deploy such UAV-based RANs (U-RANs). Indeed, due to the high complexity and heterogeneity of these networks, model-based design approaches, often relying on restrictive assumptions and constraints, exhibit severe limitation in real-world scenarios. Moreover, design of a set of appropriate protocols for such U-RANs is a highly sophisticated task. In this context, machine learning (ML) emerges as a useful tool to obtain practical and effective solutions. In this paper, we discuss why, how, and which types of ML methods are useful for designing U-RANs, by focusing in particular on supervised and reinforcement learning strategies.
2020
On the Application of Machine Learning to the Design of UAV-Based 5G Radio Access Networks / Kouhdaragh, V.; Verde, F.; Gelli, G.; Abouei, J.. - In: ELECTRONICS. - ISSN 2079-9292. - 9:4(2020), pp. 688-708. [10.3390/electronics9040689]
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11588/838260
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