drones
Article
Drones in B5G/6G Networks as Flying Base Stations
Georgios Amponis 1,2 , Thomas Lagkas 1, * , Maria Zevgara 2 , Georgios Katsikas 3 , Thanos Xirofotos 3 ,
Ioannis Moscholios 4 and Panagiotis Sarigiannidis 5
1
2
3
4
5
*
Department of Computer Science, International Hellenic University, 65404 Kavala, Greece;
[email protected]
or
[email protected]
K3Y Ltd., 1612 Sofia, Bulgaria;
[email protected]
UBITECH Ltd., 15231 Athens, Greece;
[email protected] (G.K.);
[email protected] (T.X.)
Department Informatics & Telecommunications, University Peloponnese, 22100 Tripolis, Greece;
[email protected]
Department of Electrical and Computer Engineering, University of Western Macedonia, 50100 Kozani, Greece;
[email protected]
Correspondence:
[email protected]
Abstract: Advances in the fields of networking, broadband communications and demand for highfidelity low-latency last-mile communications have rendered as-efficient-as-possible relaying methods
more necessary than ever. This paper investigates the possibility of the utilization of cellular-enabled
drones as aerial base stations in next-generation cellular networks. Flying ad hoc networks (FANETs)
acting as clusters of deployable relays for the on-demand extension of broadband connectivity
constitute a promising scenario in the domain of next-generation high-availability communications.
Matters of mobility, handover efficiency, energy availability, optimal positioning and node localization
as well as respective multi-objective optimizations are discussed in detail, with their core ideas
defining the structure of the work at hand. This paper examines improvements to the existing cellular
network core to support novel use-cases and lower the operation costs of diverse ad hoc deployments.
Citation: Amponis, G.; Lagkas, T.;
Zevgara, M.; Katsikas, G.; Xirofotos,
Keywords: cellular-enabled drones; aerial base stations; 5G/B5G/6G cellular networks
T.; Moscholios, I.; Sarigiannidis, P.
Drones in B5G/6G Networks as
Flying Base Stations. Drones 2022, 6,
39. https://doi.org/10.3390/
1. Introduction
drones6020039
Next-generation cellular communications constitute a key enabler of the greater adoption of next-generation Internet of Things (NG-IoT)-based technologies, by allowing an
increase in the number of interconnected orders of magnitude, offering high data rates and
near real-time responsiveness as well as addressing various requirements of NG-IoT [1].
Elevated security, better quality of service (QoS), reduced end-to-end delay and higher datarates are directly correlated to the utilization of higher frequencies, which in turn demand
more power and introduce additional dependencies and overhead at the hardware and
software levels. The aforementioned parameters, requirements and considerations significantly limit the available spectrum of competent low-power devices and introduce power,
effort and networking overhead, especially in ad hoc and remote sensing applications.
Millimeter wave (mmWave) communications, multiple-input–multiple-output (MIMO)
and non-orthogonal multiple access (NOMA) are some examples of the technological novelties introduced by 5G and highlighted in the 6G standard currently under development.
Novel orchestration mechanisms specific to next-generation cellular networks allow for
and push towards a more intelligent edge, with an increasing number of functionalities
being implemented in an ad hoc, distributed manner.
It is important to note that 5G and 6G introduce the requirement for a previously unseen densification of networks. This is particularly challenging and constitutes a challenge
directly addressable via aerial and ad hoc communications. FANETs have the potential
of bringing about this technological revolution by means of the intelligent relaying and
provision of broadband in otherwise isolated areas and cut-off hubs. Individual UAVs can
constitute aerial base stations as a means of serving local wireless networks, e.g., wireless
Academic Editors: Diego
González-Aguilera and Pablo
Rodríguez-Gonzálvez
Received: 15 December 2021
Accepted: 30 January 2022
Published: 5 February 2022
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Drones 2022, 6, 39. https://doi.org/10.3390/drones6020039
https://www.mdpi.com/journal/drones
Drones 2022, 6, 39
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sensor networks (WSNs). Correspondingly, networks of flying base stations constitute
great candidates for the units responsible for the opportunistic interconnection of isolated
nodes and hubs by employing context-aware routing and swarm topology formation in a
3D aerial grid. The necessary performance optimizations of such networks are in need of
scalable and decentralized architectural approaches.
The ongoing development and wide adoption of 5G have driven the design of wireless
systems beyond 5G (B5G), including the sixth generation (6G). This new generation of cellular communications should be able to unlock the full potential of the numerous autonomous
services that encompass both past and emerging trends. More specifically, 6G should bring
novel, breakthrough wireless technologies and innovative network architectures into focus.
The sixth generation of cellular communications has the potential to offer extreme data
rates to address the massive connectivity aspect and enable an extremely high throughput,
even under extreme conditions or in emergency scenarios in which node density, spectrum and infrastructure availability, and traffic patterns may vary. Additionally, B5G/6G
networks will be pivotal in achieving a high degree of immersion and capacity whilst
also offering a uniform and highly deterministic quality of experience, required by novel
applications. A key application area of next generation networks is delivering real-time
feedback-based services enabled by near-zero latency to fulfill the requirements of said
novel applications.
As highlighted in [2], airborne communication base stations are envisaged to constitute
a pivotal component of the B5G/6G cellular architecture, as mentioned due to their flexible
and highly mobile nature. As networks and UEs become increasingly mobile, it is absurd to
keep gNBs and relaying equipment solely statically, especially for providing coverage, e.g.,
in hotspots and in areas with sub-optimal infrastructure (in environments recovering from
disaster, rural/suburban areas that suffer due to lack of financial incentives for network
operators, etc.).
The first large-scale attempt by the industry was made by Google, aiming to address
lack of infrastructure to provide Internet access for the currently non-covered population.
Project Loon aspired to provide connectivity in remote or rural areas using stratosphere
balloons. These balloons would hover at a height of approximately 20 km. The core idea
revolved around using wind waves blowing in the right direction to steer the balloon to the
area in need of coverage, and establishing a stratosphere-layer mobile ad hoc network [3].
Nevertheless, high operational costs rendered this idea non-viable in the commercial
landscape, and the project was shut down. Similarly, in recent years, there has been a
substantial amount of research in the domain of satellite-enabled broadband provision. The
authors in [4] reviewed the potential of the usage of satellites for the provision of 5G NR
channels. The authors investigated issues arising from a severe Doppler shift and impact on
reception and demodulation on a user-equipment level. Several severe limitations render
satellite-enabled NR channels unpractical for mobile or real-time applications. Dedicated
receivers and demodulation hardware are required, along with software and hardware
methods to mitigate issues related to the random-access process.
Increased ease in establishing a direct LOS link with ground users and other cellular infrastructures can support B5G/6G networks in formulating more reliable links and
offering a wider coverage area, immune to reflection-induced or environmental losses.
These advantages of airborne BSs combined with the requirements set by the oncoming 6G
networks have led to the investigation of a spectrum of drone-enabled and cellular-specific
communication networks, namely air-to-ground channel characteristics, the optimal positioning of drones (either as sole relays or parts of a swarm), as well as flight trajectory
optimizations.
An important and rather novel improvement of 6G is the direct incorporation of
artificial intelligence (AI) in the network core as a means of supporting seamless data-centric
and context-aware services capable of great degrees of self-optimization [5]. Additionally,
6G will enable the modern cellular communications landscape to meet the desired high
levels of end-to-end reliability and correspondingly low end-to-end latency to support
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ultra-high mobility scenarios, such as flying vehicles. B5G and 6G communications are
envisaged to support wireless federated learning (WFL) [6] through the joint optimization
of resources targeting a reduction in the delay for novel federated applications [7]. Inherent
support for AI within the network core will be pivotal in supporting novel applications in
a spectrum of domains, with a great example being drone-enabled intelligent surveillance
and machine vision-supported remote sensing [8].
B5G/6G, a major driving force behind the vision of 6G, involves the deployment of
connected and autonomous vehicle systems (CAVs) and drone communications. Research
efforts in the field of CAV and drone-based communication systems have been steadily
increasing in both academia and industry, targeting strict requirements, especially ultra-low
latency and unprecedented communication reliability. As the industry is shifting towards
wireless, real-time and high-throughput networking, drone base stations are envisaged to
constitute pivotal assets.
Table 1 showcases the main differences between 5G and 6G networks and the main
improvements with regard to their core attributes [9].
Table 1. Comparison of 5G and 6G attributes.
Attribute
5G
6G
Peak Frequency
110 GHz (W-band)
10 THz
Peak Spectral Efficiency
30 bps/Hz
100 bps/Hz
Peak Data-rate
20 Gbps
1000 Gbps
End-to-End Latency
10 ms
1 ms
Connection Density
1 million per sq. kilometer
10 million per sq. kilometer
Supported Node Mobility
500 km/h
1000 km/h
Table 2 compares the present work to already existing surveys’ drone-BS related papers.
The present work is focused not only on surveying and reviewing the current state of the
art, but also documenting what is missing from the current research landscape. This paper
also contributes to identifying the challenges directly associated with the NR landscape,
examining the usability of aerially supported communication frameworks, offered benefits,
the implications and challenges of such technological leaps, mainly revolving around
resource allocation and power consumption, node mobility and path formation, positioning,
security and offered QoS. Our approach proves to be the most complete in terms of the
variables considered for the survey comparison.
By reading the presented work, the reader will have gained applicable knowledge in
the domain of next-generation ad hoc communications, as well as the capability to critically
compare and review related literature, thus supporting further research in this rapidly
evolving field. Furthermore, the aerially supported applications of 5G communications are
disseminated, and implications of secure, resource-aware and intelligent orchestration are
examined. As the presented work constitutes an output of the 5G-INDUCE H2020 project,
parallels are drawn—where applicable—between the examined use cases and challenges.
The layout of the rest of this paper is as follows: Section 2 follows this introduction, which documents the evolution of cellular communications and the potential offered by 5G/B5G/6G networks; Section 3 introduces the reader to the concept of using
unmanned aerial vehicles to extend cellular connectivity and is divided into two main
subsections: Section 3.1, which describes the various potential use cases of this technology
and Section 3.2, which analyzes the main challenges currently faced. Section 4 discusses
the overall developments enabling the acceleration of aerially supported next-generation
cellular communications. Section 5 concludes this paper with comments regarding further
work in this field and possible extensions of existing research. Figure 1 provides a high-level
view of the paper’s structure, discussed topics and overall flow.
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Table 2. Related research.
Consideration and/or Analysis of:
Related Work
Drone-BSs 5G/B5G/6G Energy Availability Path Planning BS Positioning Drone-BS Use Cases
Nikooroo et. al.
-
-
-
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Mach et. al.
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Plachy et. al.
-
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Zhao et. al.
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Fotouhi et. al.
-
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Becvar et. al.
-
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Bayerlein et. al.
-
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Zhang et. al.
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Alzenad et. al.
-
Bushnaq et. al.
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Mozaffari et. al.
-
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-
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-
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Our work
Paper organization
§1 Introduction
§2 Advances in 5G Network
§3 Drones as Base Stations
§3.1 Use Cases
§3.1.1 Terrestrial Network Coverage and Capacity Enhancements
§3.2 Challenges
§3.2.1 Energy availability
§3.2.2 Mobility and Path Planning
§3.2.2 Optimal Positioning of Aerial BSs
§3.2.3 Security and QoS
§3.1.2 Flying BS-Assisted Mobile Ad Hoc Networks
Discussion
§3.1.3 Flying BS-Assisted Beamforming
§5 Conclusions and Future Work
Figure 1. High-level structure of the presented work.
2. Advances in 5G Networks
The core elements of the 3GPP 5G architecture are defined in ETSI TS 123 501 V15.2.0
(2018-06). As demonstrated in Figure 2, the core 5G services (implemented in the form
of network functions (NFs)), are the network slice selection function (NSSF), the network
exposure function (NEF), the network repository function (NRF), the policy control function
(PCF), the unified data management (UDM), the application function (AF), the authentication server function (AUSF), the access and mobility management function (AMF), the
session management function (SMF), the user plane function (UPF), the data network (DN),
the radio access network (RAN), and the user equipment (UE).
In the context of the presented work, the most important components can be narrowed
down to the AMF, the RAN and the UE. The AMF is responsible for registration and
connection management, as well as ensuring reachability and managing UE mobility. As
demonstrated in Figure 1, the supported mobility for 5G networks reaches up to 500 km/h,
and up to 100 km/h for the upcoming 6G networks. Handling node mobility is enabled by
this network function. The RAN utilizes radio transceivers (gNodeB/gNB instances) to
facilitate cellular connectivity; gNBs provide the New Radio (NR) user plane and control
plane protocol interfaces with the UE. According to 3GPP, a device utilized by an end-user
to facilitate communication with another user or service is a UE, which is in turn connected
to the gNB.
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NSSF
Control Plane
Function Group
UE
NEF
NRF
AUSF
PCF
AMF
(R)AN
UDM
AF
SMF
UPF
DN
User Plane
Function
Figure 2. 3GPP-compliant 5G architecture.
It can be assumed that drones have a dual function in this architecture. On the
one hand, drones constitute consumers of the services offered by the 5G core (5GC) and
can be considered as the devices with the end-user is in direct interface with, while on
the other hand, drones utilized as flying base stations are implementing the services
offered by the gNBs as they offer the end-users a connection to the 5GC and the respective
NF services. Since drones are typically not in a direct interface with the rest of the 5G
core network architecture, they can be better described as UEs implementing (part of)
the gNB services to serve other nodes in terms of communication enhancements and
range extension for both terrestrial and mobile ad hoc networks. The authors in [10]
considered the possibility of using low-cost solutions to realize a flying 5G UPF, to assist the
attachment of mobile devices to the network core, whose functionality is also implemented
within the drone itself. This method promises to enable easier offloading. However, this
method poses several security risks, as it exposes core network services to end-users
and potential attackers. As mentioned, due to the presented architecture being highly
compartmentalized, a high degree of distribution can be achieved. This directly supports
the dockerization and offloading of NFs and tasks via resource-aware orchestrators, thus
enabling traditionally non-cellular infrastructure (namely drones or other edge devices) to
implement functionalities of the core cellular network.
Existing technologies fall short in terms of fully leveraging smart 5G infrastructure
capabilities. Even the most mature orchestration technologies to date are typically restricted
to serve rather simple 5G slicing requests, resulting in:
1.
2.
Partial or no support for advanced services, namely the use-cases mentioned in the
presented paper and an advanced slicing mechanism associated with application
offloading;
The inability to discover and directly expose the entire range of smart 5G infrastructure capabilities, which may be advertised by an underlying network function
virtualization orchestrator (NFVO) platform.
The intelligent OSS of the 5G-INDUCE project, is of particular interest to the currently
examined set of applications, as it will be capable of exposing the core network capabilities
to the end-users at a high application level without revealing any potentially confidential
low-level (infrastructure-related) information. This is particularly valuable for usage in
the networks established in an ad hoc or on-demand manner. By offering novel intelligent
orchestration services, 5G-INDUCE aims to support drone-assisted network performance
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and coverage monitoring for critical scenarios. The main goal of the 5G-INDUCE project is
thus to enable an entirely new spectrum of ad hoc and high-fidelity services.
3. Drones as Base Stations
As highlighted in [11], drones are relatively low-cost solutions that can efficiently
extend next-generation connectivity in areas that are normally either unreachable via
traditional infrastructure or momentarily unreachable due to, e.g., network disruptions.
Similarly, drone base stations (BSs) can increase the quality of a connection between an ad
hoc/remote node and a given cellular base station. Drone BS are also attractive solutions
for providing reliable, broadband and wide-area temporary wireless connectivity during
special events or harsh scenarios, namely natural disasters [12], smart farming [13], sporting
events, and many more scenarios where the permanent installment of cellular infrastructure
is unnecessary and comes with considerable monetary overhead.
The authors in [14] stated that, in addition to the above, drone BSs at high altitudes
are expected to provide long-term and cost-effective connectivity for rural areas. The
integration of drone BSs with other physical layer techniques such as mmW and massive
MIMO as well as cognitive radios is a promising solution for providing data-intensive
services and is expected to create new challenges for next-generation flying. The optimal
positioning of drone BSs is one of the critical challenges to be overcome in dense deployment
scenarios. For that purpose, the optimal positioning of the drone BSs is an issue in need of
tackling. Optimal positioning is one of the most critical challenges and must be addressed
in dense B5G/6G deployment scenarios.
The utilization of drones as airborne base stations enables a service provider to offer
enhancements of connectivity and capacity of already existing terrestrial wireless networks,
with cellular ones being the main areas of interest. Compared to conventional terrestrial
base stations, the advantage of using UAVs as flying base stations is their ability to dynamically readjust their altitude, and their comparative ease in terms of establishing direct LOS
links to terrestrial gNBs or UE instances. Due to their inherent characteristics in terms of
mobility and flexible altitude adaptation, cellular-enabled drone base stations can effectively support existing cellular systems by providing additional communication capacity to
areas and ensuring network coverage in difficult-to-reach rural areas, as such deployments
are naturally three-dimensional and offer unrestricted mobility. There exist numerous types
of UAVs to facilitate connectivity and undertake the role of a base station, with each having
its advantages and disadvantages in terms of mobility, autonomy, maneuverability and
maximum payload. Table 3 compares the main types of available UAVs.
Table 3. Comparison of UAV types.
UAV Type
Stationary Flight Typical Battery Life Typical Velocity Typical Payload
(Yes/No)
(mins)
(m/s)
(kg)
Multi-rotor yes
=<15
=<11
=<2.5
Fixed-wing no
=<60
=<22
=<14
Baloon
=<60
=<2.5
=<4.5
yes
3.1. Use Cases
The researchers in [15] noted that mobile 5G is a key driver of network services in different industries, and therefore accelerates the digital transformation of the respective services.
5G provides more advanced and enhanced capabilities compared to 4G, and following the
same pattern, 6G will introduce the entire industry to a new era. New industry-specific
standards for next-generation cellular networks are already being incorporated in 3GPP
Releases, with 3GPP Release 15 defining new radio (NR) and Packet Core evolution as a
means of establishing fully interoperable deployments. The next 3GPP Release (Release 16)
aspires to support gigahertz cellular communications as prescribed by IMT-2020, whilst
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also incorporating new communication standards for smart cars and Industry 4.0 factories.
Considering the aforementioned remarks, airborne BSs will mostly be used for relaying
information and facilitating range extension where cellular infrastructure fails to deliver.
The most prominent use-cases for drones functioning as base stations are:
•
•
•
The extension of terrestrial network coverage and capacity;
The assistance of mobile ad hoc networks (MANETs);
Beamforming applications.
3.1.1. Terrestrial Network Coverage and Capacity Enhancements
The first drone-enabled base station scenario revolves around terrestrial cellular network enhancements. In this scenario, it is assumed that cellular-enabled drones function
as service providers; aerial nodes functioning as cellular base stations can provide pivotal
improvements to ultra-dense small cell networks, which are highlighted in B5G/6G nextgeneration communications. Regarding next-generation mmW communications, droneenabled flying base stations find great applicability in establishing short-term line-of-sight
(LOS) links among gNBs and UEs. Thus, the coverage and capacity of wireless networks
can be effectively enhanced, whilst next-generation communications can be supported in a
more effective manner, especially in dense cells. Additionally, as mentioned in Section 3,
MIMO-based techniques have the potential to formulate an entirely new and dynamically
reconfigurable enhanced cellular network, capable of providing never-seen-before high
capacity services. A great example of on-demand terrestrial network coverage and capacity
enhancements is the establishment of high-throughput links in first-response and emergency scenarios, in which the existing infrastructure is either damaged or inadequate; in
this case, aerial base stations can be used to alleviate the load on the terrestrial cellular
grid, or provide broadband connectivity where no infrastructure was available in the first
place. Figure 3 showcases a possible application of on-demand terrestrial network coverage
enhancement in the case of a wildfire. In this scenario, the line-of-sight between the radio
antenna (gNB) and the corresponding UEs associated with the end user in need (firefighter)
is blocked. Temporarily deploying a drone BS helps alleviate this issue by introducing a
new path, thereby establishing a temporary yet direct and reliable link between the end
user and cellular infrastructure.
Figure 3. Terrestrial network coverage enhancement: a drone BS-supported firefighting scenario.
Moreover, network enhancements find substantial applicability in the formation of
reliable communication links in rural and/or remote areas, with little-to-no existing infrastructure; this scenario supports the rejuvenation of rural areas as well as smart farming, and
can assist in endeavors to close the digital gap. The use of aerial base stations is a promising
solution to a number of challenges associated with terrestrial IoT networks as well, namely
wireless sensor networks (e.g., ad hoc WSNs). Drone BSs can be deployed to provide reliable and energy-efficient uplink and downlink for device-to-device IoT communications,
due to drones being effectively deployed in a manner aimed at reducing the shadowing and
blockage effects, which constitute major causes of signal attenuation and losses in wireless
links. Connectivity enhancements and terrestrial network capacity increases cannot be
achieved without sufficiently optimizing the positioning of all communicating nodes in the
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3D space. The efficient positioning of drones is thus of the utmost significance in terms of
connecting immobile UEs throughout the course of the connectivity-supporting process.
This is particularly true in the case of low-power IoT devices, which require their respective
gateways to be placed on locations such that the aforementioned devices can successfully
establish a connection to the cellular network using the minimum required transmission
power [16]. In this manner, drone BSs can support massive B5G/6G IoT diverse networks
by constantly updating their relative positions to ensure optimal connectivity and reduce
the need for permanent cellular infrastructure installations.
3.1.2. Flying BS-Assisted Mobile Ad Hoc Networks
Given their mobility and LOS-establishing capabilities, UAVs can support mobile ad
hoc networks (MANETs) on the terrestrial plane, and more specifically vehicular ad hoc
networks (VANETs). With the advent of smart and self-driving cars, the requirement for
constant, uninterrupted and real-time communication is more pressing than ever. FANETs
and singular UAVs have repeatedly proven their usability in terms of supporting deviceto-device communications, and given the increased support for high mobility in B5G/6G
networks (see Table 1), they are excellent candidates for facilitating real-time information
exchange and message broadcasting among mobile networked peers. A good example of
this type of communications is UAV-enabled safety-related information broadcasting across
numerous vehicles without a direct LOS or sufficient network coverage [17]. Aerial BSs can
also enhance the reliability of device-to-device and inter-vehicular links by mitigating issues
caused by interferences, which are a result of an increased number of re-transmissions.
Figure 4 demonstrates an inter-vehicular communication scenario supported by drone-BSs.
Figure 4. Drone-BS-assisted vehicular communications scenario.
Furthermore, airborne BSs offer a new non-terrestrially confined spectrum of diverse
networking opportunities to boost reliability and last-mile connectivity in the networks
at hand. An intelligent approach to accommodating mobile ad hoc networking is the
clustering of ground UE instances into mobile swarms. This can be implemented to
enable drone BSs to potentially communicate with a singular networked UE instance
functioning as a “representative” (cluster head) of the mobile terrestrial cluster; the cluster
head is responsible for distributing messages via broadcasting, and respectively, providing
gateway services to the rest of the cluster nodes. Following this approach, the connectivity
of mobile terrestrial ad hoc networks can be significantly improved by adopting clusterbased approaches and leveraging the unique mobility characteristics of drones. To that
end, as is the case with the terrestrial network enhancement use-case scenario, drones will
significantly increase the quality and reliability of their offered services by considering
efficient placement and swarm nodes’ relative positioning, where applicable. The matter of
optimal positioning and path planning are discussed in detail in Section 3.2.3.
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3.1.3. Flying BS-Assisted Beamforming
In this scenario, drones can be viewed as airborne antenna elements, that can be
conjointly utilized for performing massive MIMO, 3D MIMO and mmW communications.
Beamforming using aerial elements can be pivotal in reducing intercell interference by
forming distinct beams to simultaneously cover desired grid elements.
Research in recent years has been focused on full-dimension MIMO communications,
where the horizontal and vertical dimensions of a cellular network alike, are utilized for
beamforming. This supports the formulation of distinct beams in the cellular network, and
can be resorted to as a means of minimizing intercell interference, which is projected to be a
major issue in 6G communications. Three-dimensional beamforming solutions show great
potential in offering significantly higher system throughput, all whilst supporting a greater
number of UE instances, effectively tackling issues associated with high network density in,
e.g., urban or industrial environments, which are key targeted use-cases for next-generation
cellular networks. The aforementioned improvements render the evolution of MIMO
communications from 2D to 3D not only beneficial but potentially mandatory for the wide
applicability of B5G/6G communications. As highlighted in [18], cellular-enabled aerial BSs
can be key enablers of high-density cellular networks by supporting intercell interference
mitigation and management by beamforming the horizontal and vertical channel planes.
Figure 5 showcases the potential for intercell interference mitigation for leveraging drone
BSs, thus paving the path towards high-density next-generation cellular networks.
Figure 5. Beamforming: a drone BS-supported intercell interference mitigation scenario.
Drone-supported 3D MIMO is more suitable for high-density scenarios, and even
more so in cases in which UE instances are distributed across a three-dimensional grid with
different elevation angles (assuming a direct LOS with the respective cellular base station).
As aerial base stations are typically significantly elevated in comparison to terrestrial
UE, their respective altitude and elevation angles’ differences can be relatively easily
distinguished and considered as routing, relaying and dynamic antenna re-positioning
metrics. Additionally, as elevation differences easily support direct LOS conditions, aerial
base stations enable efficient and effective beamforming in a three-dimensional grid. When
compared to conventional (terrestrially deployed and static) antenna array systems, a
drone-based antenna array has the following advantages:
•
•
•
The number of antenna elements is not limited by spatial constraints;
Beamforming gain can be increased on-demand by adjusting array element (drone)
spacing;
Drones’ mobility allows for effective beam-steering in virtually any 3D direction;
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•
•
Utilization of drone swarms within an array formation can provide the capability to
form a massive antenna array which can virtually accommodate any arbitrary shape
and perform beamforming;
Energy optimization or tethering (discussed in Section 3.2.1) can increase reliability to
near terrestrial-node levels.
The authors in [19] engaged in a thorough analysis of the potential usage of drone
swarm-based scattering for adaptive beamforming to efficiently relay data streams to
locations normally not inside the transmitting node’s range of communication or LOS.
The proposed swarm-based beamforming methodology revolves around a ground-based
transmitter radiating towards a swarm of drones, where each “antenna element” (individual
drone) carries a half-wavelength resonant wire functioning as a scattering object, which
in turn works as a reflector antenna radiating the BS’s transmitted signal. The researchers
investigated potential methods for optimizing the process of adjusting the altitude of
drones, and as such, the phase of the scattered field from each array element to enable
support for the formulation of desired radiation patterns. A strong argument for the usage
of quadcopters as beamforming elements is the fact that because all signal phase shifting
is implemented by adjusting the drone locations, no excessive, computationally intense
or additional phase-shifting circuitry is required on-board. The researchers’ optimization
algorithm was able to form a beam composed of two main lobes, with a low level of
side-lobes, which could be steered in the desired direction for different patterns.
Similarly, the researchers in [20] attempted to produce a directional beam to increase a
network’s quality of service, more specifically concerning cellular downlink. The novelty
of their approach stems from the fact that the authors aimed to maximize coverage whilst
considering human body-induced losses and model respective optimization procedures.
The researchers used a uniform linear array of antennas at the transmitter and designed the
optimized beam direction to maximize the number of covered users while considering the
QoS constraint in the network. The significance of the authors’ work stems from the fact that
their developments are centered around the usage of mmW communication frameworks
while considering the channel blockage effects of medium-to-large bodies; this enables the
facilitation of optimizations aware of the environmental parameters and characterizing the
respective link.
3.2. Challenges
This subsection is dedicated to the detailed analysis of the main identified challenges
hindering the wider adoption of aerially enabled cellular base stations. The identified
challenges can be narrowed down two five main issues, namely energy availability, mobility
and path planning, positioning of nodes, security and privacy issues, and the offered
quality of service. As the nature of the interfaces among the relaying equipment and the
next-generation cellular network core is highly compartmentalized (assuming an ETSI
TS 123 501 V15.2.0-compliant 5G architecture), drone BSs belong to the RAN layer as UE
instances, as highlighted in Section 3. All challenges, especially security and quality of
service, are affected by this compartmentalized, “blackbox” approach, as the 5G core has
no authoritative access to the radio-layer.
3.2.1. Energy Availability
An important issue with drone-based BSs is energy availability. As relays in B5G and
6G cellular networks are expected to relay greater volumes of information and provide
reliable and sufficient QoS, throughput and minimal latency, the energy expenditure of
relays rises exponentially. The energy expenditure of UAVs functioning as relays is mainly
associated with:
•
•
Energy consumed for the purpose of flying and hovering above a desired location;
Energy consumed for communication and on-board processing;
A substantial amount of research has gone into designing energy-efficient routing and
communication schemes to prolong battery lifespan via the usage of, e.g., received signal
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strength indication (RSSI) and the drone position data [21]. However, since the propulsion
energy is significantly more than the payload energy, energy-efficient communication will
not highly affect the flight time, which is of utmost importance for establishing a network of
aerial cellular base stations. It can be safely assumed that for the purpose of enabling long
flight times, battery technology has to keep up with the newly introduced requirements set
by B5G/6G communications.
In all cases, the goal of energy-aware optimizations in regard to BS communication
and mobility metrics is to minimize transmission power, whilst considering a predefined
constraint for the minimum data rate which UEs require in all cases [22]. This type of
optimization balances energy availability and the offered QoS. Energy consumption is in
turn constrained by either maintaining at the same coverage area, or maximizing; in turn,
QoS is constrained by either maintaining its current value or maximizing it.
In that spirit, the authors in [2] proposed a tether-based UAV setup for the deployment
of drones as aerial base stations in 6G networks and engaged in an analysis of the mobilityendurance trade-off. The methodology proposed in the context of tethering 5G/6G enabled
quadcopters solves the inherent limitations of the short flight time and reliable backhaul
links. The ground station supplies the airborne BS with energy whilst also providing the
data link via a psychical tether. It is safely concluded that the most important defining
factor for the offered QoS and overall functionality is the placement of individual drone
relays. This is especially true for tethered UAVs, as they have substantial limitations in
terms of horizontal mobility, thus reducing reachable positions in the 3D space. The authors
in [23] analyzed hybrid drone-specific power supply systems that combine batteries with
other types of energy sources, namely fuel cells, solar cells, supercapacitors, tethering
and laser-enabled in-flight recharging. The aforementioned technologies are envisaged to
help alleviate performance and autonomy issues, thus bringing about a drone-supported
next-generation cellular landscape.
In the context of eliminating unnecessary energy expenditure, the authors in [22]
proposed a solution for the elimination of the redundant movement of aerial BSs. The
energy-saving framework they proposed relies on deriving new positions for the base
stations considering the overall mobility and movement patterns of UEs. The authors
considered that there exist UE mobility scenarios, in which it is not necessary to reposition
the base station, mainly due to slight QoS variations falling within an acceptable spectrum.
This multi-objective optimization problem can be summarized as “reducing globally-spent
BS hovering energy, whilst maintaining networking capacity approximating the one associated with optimal node positions”. It is suggested, that for maximizing energy availability
of non-tethered (free-flying drone BSs), it is suggested that the aerial nodes do not precisely
follow the best QoS-enabling position, but rather stay in a pre-computed distance from the
optimum. Following this non-QoS-centric approach, the energy consumed for the purpose
of flying can be kept to a minimum; this is implemented without sacrificing mobility, but
establishing a threshold of acceptability for the loss of QoS.
As mentioned earlier, tethering techniques can be resorted to in order to remove
battery-life constraints. The researchers in [24] proposed a new drone-based mobile relaying
system, in which a laser beacon is employed to wirelessly charge the energy-constrained
UAV relay. This approach of preserving energy and increasing flight time is of great interest,
as it can potentially help solve the dilemma of choosing between mobility and energy
availability. The authors aimed to conjointly maintain a global optimum, considering both
required transmission power and mobility-specific parameters. The authors proposed
two algorithms to solve this optimization problem, and showed that the laser beacon
wavelength and environmental parameters such as weather conditions greatly impact both
data and power transmission efficiency.
3.2.2. Mobility and Path Planning
In light of the aforementioned remarks, it can be assumed that node mobility capabilities and swarm-wide path planning is of utmost importance for the effective relaying of
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cellular communications for all three examined scenarios (terrestrial and mobile network
coverage and capacity enhancements and beamforming applications) in Section 3.1. The
mobility-awareness and optimal positioning of aerial base stations is an intricate and rather
convoluted problem [25], with its complexity being a direct function of an entire spectrum
of highly volatile parameters, namely:
•
•
•
•
•
The number of aerial BSs participating in the relaying;
The type of interfaces among these participating nodes (inter-drone relaying, conjoint
formation of array antennas);
The elevation, angle, position and velocity of each node relative to the respective gNB;
Energy availability, expected energy expenditure and estimated uptime for new links;
The topology of the terrain and potential blockages in LOS.
The researchers in [26] developed “SEDMAG”, a 6G-specific path-planning algorithm
for usage with aerial IoT nodes in both single-node and swarm deployments, mainly
revolving around monitoring and extensible to cellular-relaying and WSN data harvesting
scenarios. The authors’ work was envisioned to reduce localization latency as well as energy
overhead, by trading off precision in localization; this renders the SEDMAG algorithm
useful for non-beamforming-related scenarios, where accuracy and localization precision
are of utmost importance for phase shifting. Using a smart search algorithm and graph
reduction, the researchers managed to provide better positioning efficiency when compared
to non-dynamic path planning algorithms, namely Zcurve, but also dynamic path planning
algorithms such as DREAMS in terms of errors and energy consumption. In line with
resource-aware orchestration in next-generation cellular networks, the authors proposed a
smart load-balancing approach capable of balancing drones load in swarm deployment
scenarios and resulting in the reduction in localization delay. The method of function for
SEDMAG and its respective derivatives is dividing the area of interest into equal smaller
areas and assigning an aerial node to each said smaller area. The SEDMAG algorithm is
tasked with positioning the drone(s) so that all areas of interest are adequately covered; it
then computes the shortest path for the drone to visit all areas required to be covered by the
network and decides on the order in which they are to be visited. The SSEDMAG algorithm
(a derivative of SEDMAG) utilizes an intelligent searching approach to shorten the drone’s
flight path. Similarly, SSEDMAG-reduced aims to further reduce the drone’s trajectory by
re-applying SSEDMAG on the reduced flight path. Lastly, the SSEDMAG-reduced-balanced
algorithm is the one finding the greatest applicability in swarm deployment scenarios, as
it is tasked with balancing the tasks and overall load among drones, aiming to achieve a
global localization optimum for sufficient coverage given a minimum number of trajectory
shifting and path alterations.
3.2.3. Optimal Positioning
Researchers in [27] analyzed the optimal positioning of UAV BSs in conjunction with
transmission power allocation, user clustering and next-generation NOMA networks. The
authors attempted to elicit a means of optimally clustering UEs and positioning drone
BSs so that only a minimum required transmission power is utilized for successful link
establishment, whilst ensuring that QoS is above a given minimum threshold at all times.
The proposed multi-objective optimization method allows for a significant increase in the
duration of aerial coverage of a given terrestrial area. Overall, the proposed solution can be
divided into three distinct sub-tasks:
•
•
•
Task 1: Select the optimal clusters of a given number of UEs to be simultaneously
served by a NOMA network;
Task 2: Allocating the optimal transmission power to each node;
Task 3: Determining the position of the flying BS in the 3D space.
Correspondingly, the identified constraints are:
•
•
The available propulsion energy;
The guaranteed minimum capacity for each mobile user.
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Finally, the direct optimization goal is to increase the duration of communication
coverage in NOMA. The authors measured an increase in the order of 67–270% when
compared to existing solutions, assuming a constant propulsion power.
The authors in [28] considered the scenario of connectivity enhancement in the case of
on-demand ad hoc deployments of cellular networks. To that end, the researchers considered the optimal positioning of drones in swarm deployments so that they can mitigate
interferences and offer on-demand communication-extending services to a substantial
amount of UEs. It is important to note the highly dynamic and volatile nature of the
networking requirements of end-users in such ad hoc deployments. The authors of [28]
focused on the issue of maximizing the offered QoS (and consequently user satisfaction),
by proposing an algorithm capable of:
•
•
Associating UEs with the best-suited aerial BS;
Finding optimal positions of all aerial BSs.
Additionally, the authors considered the performance of the genetic and particle
swarm optimization algorithms, which are evaluated in terms of performance, accuracy and
offered QoS (calculated as available data rates). The authors showed that the particle swarm
optimization algorithm is substantially less complex compared to the genetic algorithm,
while the latter one is more efficient in its utilization of nodes. The tradeoff seems to be:
time complexity vs. efficacy.
The researchers in [29] considered the usage of multiple drone-mounted radio heads as
a means of providing on-demand connectivity and dynamic cloud radio access networking
capabilities. To facilitate this, the authors realized an optimal drone positioning mechanism
to address the requirement for transmission power minimization. The researchers divided
the multi-objective optimization problem into two distinct ones, one per each axis of
movement:
•
•
Horizontal positioning of drones (minimization of distance sum);
Vertical positioning of drones (maximization of coverage).
For the first problem (horizontal positioning optimization), the authors resorted to the
Weiszfeld algorithm to compute and output the point that minimizes the total distance to
be covered by the sum of (re)transmissions [30]. Similarly, the second problem (vertical
positioning optimization) was approached with the goal of calculating the optimal elevation
angle and the terrestrially projected radius of the coverage area per drone. The resulting
algorithm proved to be capable of offering the minimum required transmission power
while maintaining a pre-defined acceptable performance threshold in terms of end-user
connectivity.
3.2.4. Security and QoS
NG communications inevitably give rise to various security concerns. As a substantially greater and ever-increasing amount of data is being relayed per unit of time, the
infiltration of a NG network is automatically rendered more rewarding. Furthermore,
the advent of novel time-sensitive use cases are exponentially increasing reliance on lowlatency and near real-time communications; this implies that network stability becomes
mandatory, and QoS must be kept above a certain threshold at all times. Should a network
service be interrupted, various negative cascading events would take place, especially
considering smart vehicles and generally VANET-supporting NG services, as shown in
Section 3.1.2.
Security and QoS in next-generation cellular networks are closely correlated, as they
are associated with the interfaces established between relaying nodes and the cellular core
(namely the 5G core). The usage of drones as means of connectivity extension poses a
considerable security threat. As such devices constitute 5G/B5G user equipment instances,
they belong to the RAN layer of the 5G architecture. This means that security features
implemented on a 5G-core level have little to no authority with regard to handling UE
authorization, security and QoS provision. Drones such as UEs are directly exposed
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(both physically and from a networking point of view) to end users. A potential security
breach in the RAN-exposed NFs is a serious security rise, as it can escalate rather quickly.
Authentication among the networked drone BSs is even more challenging to implement
in a reliable manner [31]. More specifically, the following 5G components and network
functions are exposed to the UE:
•
•
gNB, the terrestrial cellular base station (RAN);
AMF, the mobility management function of (core network).
It becomes evident that the creation of an abstraction layer to secure QoS and security
is mandatory for a sustainable and reliable transition to aerially supported high-density
cellular networks. This abstraction layer comprises additional security functions and orchestration mechanisms that improve the architecture of cellular communications[32]. In this
domain, the 5G-INDUCE project aims to facilitate the incorporation of additional features
for security, and cognitive capabilities that cannot be supported by existing environments
to ensure QoS above an end-user-defined threshold. Special focus is given to QoS assurance in conjunction with security, by leveraging the smart exposure of application-specific
interfaces to end-users. With throughput reaching the scales of dozens of Gbps, end-to-end
latency being reduced to the scale of a few milliseconds, and network availability being
stretched to its limit, monitoring link- and network-layer metrics to accommodate a targeted QoS is extremely challenging to do while preserving privacy, security and keeping
computational overhead to a minimum.
4. Discussion
In the presented work, we discussed matters of 5G and B5G/6G communications in a
spectrum of scenarios, resource utilization, various types of optimizations and the elicitation
of efficient, energy-aware and QoS-preserving methods of providing high-quality services
to a set of UEs. We identified the three main scenarios which are expected to significantly
benefit from drones in next-generation cellular networks functioning as flying base stations.
To this end, the 5G-INDUCE project is envisaged to offer a variety of services and
components as add-ons to the 5G core architecture presented in Section 2 and described
on a high-level (considering interfaces among the management and network orchestration
(MANO) and the virtual/physical infrastructure and the NFVO) in Figure 6. 5G-INDUCE
offers a full-stack NetApp management platform to orchestrate services and functionalities,
mainly in the industrial domain. Orchestration enhancement can support data confidentiality, securely encrypt critical infrastructure management and monitoring, and reliable
operator–drone communication interfaces. The scenarios described in Sections 3.1.1 and
3.1.2 and (to a lesser degree) Section 3.1.3, strongly relate to the targeted NetApps of the
5G-INDUCE project and are aligned with its goal of establishing easily extensible yet secure
and QoS-aware next-generation cellular connectivity in critical scenarios. All aforementioned use-cases rely on novel orchestration algorithms for the deployment of services over
containerized realms.
The challenges currently faced by the entire research and industrial landscape range
from security and privacy, to licensing and AI-related issues, namely explainability and
legislative/ethical concerns in regard to automated piloting, no-fly-zones and potential
collisions; all these areas require more research in the near future, as little to no work
has targeted the aforementioned parameters in a networking context. It can be easily
deduced that the complexity of said issues will increase, even more so with the increase in
network heterogeneity and the additional requirements entailed. Low-earth orbit satellites
(and constellations thereof) also seem to be a rather promising technology in terms of
supporting ubiquitous connectivity for NR networks. With this in mind, future protocols,
frameworks, and even hardware modulators and demodulators shall be designed to
support satellite-to-drone connectivity where applicable. Consequently, standardization
for all developments targeting the aforementioned challenges is going to be a direct focus
of all relative standardization groups and institutes in the coming years.
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Said challenges are to be addressed through the upcoming cellular networks’ services’
ability to compartmentalize all their components and to only expose the desired entrypoints to the end-users. This can be managed by combining application orchestration with
network services orchestration mechanisms, so as to allow the higher layer to manage the
deployment and lifecycle of the services at hand, and the lower orchestration layer to optimally interact with the network and computational resources of the nodes. The upcoming
compartmentalized orchestration mechanisms will thus have to build on existing knowledge and go beyond the ETSI NFV MANO, following the respective 3GPP specifications,
while being aligned to the expected 3GPP Release 16 standards, as mentioned in Section 3.1.
Overall, the extension of connectivity and the provision of services on-demand seems to
be pivotal in the formulation of novel core orchestrator architectures. All the scenarios
described in this paper strongly rely on the establishment of good-quality and secure links
between gNBs and UE instances for effectively relaying and seamless coordination among
them, especially in the case of beamforming. Thus, future research must be as focused on
service-provision optimizations as it must be focused on improving the existing 5G core
service-based architecture.
DN
(R)AN
Network
Function
Network
Function
UE
Network Slice
Network
Function
Network
Function
SDN
MANO
NFV
Virtual Infrastructure
Physical Infrastructure
Figure 6. High-level overview of the virtual-physical infrastructure compartmentalization and key
component interfaces.
5. Conclusions and Future Work
This paper discussed a number of potential use-cases for drone base stations in
B5G/6G networks and the implications of their usage in various environments. Matters of resource allocation, optimal positioning and channel provision are discussed in
detail, in order to establish a common discussion ground for future developments in regard
to cellular connectivity enhancements. Moreover, this paper has discussed improvements
in 5G orchestration mechanisms as a means of achieving substantial improvements in terms
of throughput, task allocation optimization mechanisms and swarm positioning optimizations. Given ongoing developments in cross-layer metric utilization for task and resource
orchestration, future developments can potentially revolve around the environment-aware
predictive deployment of drone base stations using machine learning, as has been already
proposed in [33]. On a technical level, the formulation of multi-objective optimization problems in the near future will be capable of accommodating and considering various weights
and newly introduced realistic constraints to deduce the optimal solution in a machine
learning-enabled manner; this will significantly boost developments in the domain of path
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planning and optimal positioning, as discussed in Section 3.2.3. Advances in orchestration
and network function compartmentalization will support efforts in complementing the
terrestrial cellular system in the face of adverse events to offload excess traffic or increase
cellular range.
Most of the developments in the context of the usage of B5G/6G-enabled drones
as base-stations can be expressed as direct functions of localization and optimal relative
positioning efficacy. As routing algorithms increase in efficiency, aerial ad hoc deployments
will be capable of formulating three-dimensional grids capable of offering more efficient
relaying services. This use case scenario is discussed in detail by the authors in [34].
More specifically, the authors discussed how an efficient drone base-station 3D placement
algorithm will support efforts to maximize the total number of UE instances whilst utilizing
the minimum required power. Resource-aware routing is an ongoing development in the
research community, with a relative study of resource-aware cross-layer routing for FANETs
performed by the authors of the present paper in [35]. Cross-layering (the utilization of,
e.g., physical/MAC-layer parameters in the context of network-layer routing) has the
potential to increase performance for the physical and link-layer processing, which will, in
turn, enable lower costs for operators in terms of extremely dense deployments namely in
Industry 4.0 use-cases [36] or emergency applications [37]. Finally, the seamless mobility
and integration of heterogeneous links for collaboration in the same ad hoc cellular network,
will be supported by multi-connectivity and a cell-less architecture envisaged in [38] and
enabled the utilization of novel scheduling algorithms and a new core network design.
Regarding the optimization of the resource allocation and positioning of aerial nodes, in
future work, the problem of optimal bandwidth allocation should be considered, along
with the issue of accommodating highly mobile UEs, as well as the effective mitigation of
interference among BS nodes and securing the underlying cellular infrastructure by means
of high degrees of compartmentalization and the strategic exposure of network resources
to UEs.
Author Contributions: Conceptualization, T.L., P.S., G.K. and G.A.; methodology, G.A., T.L. and
I.M.; software, G.A. and T.L.; validation, T.L., G.A. and P.S.; formal analysis, G.A., T.L. and P.S.;
investigation, G.A., T.L. M.Z., G.K., T.X., I.M., P.S.; resources, T.L., P.S. and T.X.; data curation, T.L.,
I.M. and G.K.; writing—original draft preparation, G.A. and T.L.; writing—review and editing, T.L.,
G.A. and M.Z.; visualization, G.A.; supervision, T.L. and P.S.; project administration, T.L. and P.S. All
authors have read and agreed to the published version of the manuscript.
Funding: The project leading to this application has received funding from the European Union’s
Horizon 2020 research and innovation programme under grant agreement No 101016941.
Institutional Review Board Statement: Not applicable.
Informed Consent Statement: Not applicable.
Data Availability Statement: No new data were created or analyzed in this study. Data sharing is
not applicable to this article.
Conflicts of Interest: The authors declare no conflict of interest.
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