Candidate:
Amr
Salah
Matar
Date:
November
15,
2022
Time:
9:00
AM
Place:
REMOTE
ATTENDANCE
Supervisor:
Shen,
Sherman
Abstract:
The
future
Sixth-Generation
(6G)
network
is
anticipated
to
extend
connectivity
for
millions
of
Unmanned
Aerial
Vehicles
(UAVs)
worldwide
and
support
various
innovative
use
cases,
such
as
cargo
transport,
inspection,
and
intelligent
agriculture.
The
terrestrial
cellular
networks
provide
real-time
information
exchange
between
UAVs
and
Ground
Control
Stations
(GCS),
which
facilitates
the
evolution
of
UAV
communication
systems
while
bringing
promising
economic
benefits
to
cellular
network
operators.
However,
the
tremendous
growth
in
the
UAV
data
traffic,
with
diverse
and
stringent
service
requirements,
would
add
another
pressure
on
the
already
congested
terrestrial
cellular
network
that
is
facing
a
rigorous
challenge
to
increase
network
capacity
with
the
limited
spectrum
resources.
Moreover,
since
Macro
Base
Station
(MBS)
antennas
are
typically
downtilt,
UAVs,
which
are
served
by
the
MBS
antenna’s
side
lobes,
suffer
from
sharp
signal
fluctuations
causing
throughput
reduction
and
coverage
drop.
Besides,
due
to
the
Line-of-Sight
(LoS)
between
UAVs
and
MBSs,
UAVs
experience
higher
uplink/downlink
interference
compared
to
ground
Cellular
Users
(CUs).
In
this
thesis,
we
propose
two
novel
aerial
network
architectures
in
which
we
design
efficient
interference
and
resource
management
strategies
to
support
the
UAV
Quality-of-Service
(QoS)
guarantee
while
considering
different
types
of
interference.
Firstly,
we
propose
a
novel
standalone
aerial
multi-cell
network
where
multiple
UAV
Base
Stations
(UAV-BSs)
provide
cellular
services
to
UAV
Users
by
reusing
the
licensed
and
unli[1]censed
spectrum.
Our
objective
is
to
jointly
optimize
the
subchannels
and
power
allocations
of
UAV-Users
in
the
licensed
and
unlicensed
spectrum
to
maximize
the
network
uplink
sum
rate,
considering
inter-cell
interference,
co-existence
with
terrestrial
cellular
and
WiFi
systems,
and
the
QoS
of
UAV-Users.
We
prove
mathematically
that
the
formulated
optimization
problem
is
an
NP-hard
problem.
Therefore,
the
original
problem
is
decomposed
into
three
subproblems
to
solve
it
efficiently.
We
first
use
convex
optimization
and
the
Hungarian
algorithm
to
obtain
the
global
optimal
of
power
and
subchannel
allocations
in
the
licensed
spectrum,
respectively.
Then,
we
design
a
matching
game
with
externalities
and
coalition
game
algorithms
to
obtain
the
Nash
stable
of
the
subchannel
allocation
in
the
unlicensed
band.
Local
optimal
power
assignment
in
the
unlicensed
spectrum
is
obtained
using
the
successive
convex
approximation
method.
Lastly,
we
develop
an
iterative
algorithm
to
solve
the
three
subproblems
sequentially
until
convergence
is
reached.
Simulation
results
demonstrate
that
the
proposed
algorithm
achieves
a
significantly
higher
uplink
sum
rate
compared
with
other
resource
allocation
schemes.
Moreover,
the
proposed
algorithm
improves
the
network
throughput
and
capacity
by
nearly
two
times
comparing
to
the
Long
Term
Evolution-Advanced
(LTE-A).
Secondly,
we
propose
a
novel
integrated
aerial-terrestrial
multi-operator
network.
In
the
network,
each
operator
deploys
a
number
of
UAV-BSs
besides
the
terrestrial
MBS,
where
each
BS
reuses
the
operator’s
licensed
spectrum
to
provide
downlink
connectivity
for
UAV-Users.
Moreover,
the
operators
allow
the
UAV-Users,
whose
demand
cannot
be
satisfied
by
the
licensed
band,
to
compete
with
others
to
obtain
bandwidth
from
the
unlicensed
spectrum.
Given
the
QoS
requirements
of
UAV-Users,
we
aim
to
maximize
the
total
sum
rate
by
jointly
optimizing
user
association,
BSs
transmit
power,
and
dynamic
spectrum
allocation
considering
inter-cell
interference
in
the
licensed
band
and
inter-operator
interference
in
the
unlicensed
spectrum.
In
particular,
we
divide
the
resulting
non-convex
Mixed-Integer
Non-Linear
Programming
(MINLP)
optimization
problem
into
two
sequential
subproblems:
user
association
and
power
control
in
the
licensed
spectrum;
and
dynamic
spectrum
allocation
and
user
association
in
the
unlicensed
spectrum.
Furthermore,
the
former
subproblem
is
decomposed
into
multiple
subproblems
for
distributed
and
parallel
problem-solving.
Since
the
resulting
former
subproblem
is
still
a
non-convex
MINLP
problem,
we
propose
a
distributed
iterative
algorithm
consisting
of
a
matching
game,
coalition
game,
and
successive
convex
approximation
technique
to
solve
it.
Afterwards,
in
the
latter
subproblem,
we
first
use
a
matching
game
to
associate
UAV-Users
with
the
UAV-BSs
for
each
operator
in
the
unlicensed
spectrum.
Then,
we
propose
a
three-layers
auction
algorithm
to
allocate
the
unlicensed
spectrum
among
operators
dynamically.
Extensive
simulation
results
demonstrate
that
the
proposed
algorithm
in
the
licensed
spectrum
significantly
improves
network
throughput
per
operator
than
the
conventional
terrestrial
network
alone.
Moreover,
the
achieved
system
throughput
of
the
proposed
algorithms
in
both
licensed
and
unlicensed
spectrum
is
86.8%
higher
compared
with
that
of
using
the
licensed
spectrum
only.
In
summary,
we
have
proposed
integrated
aerial-terrestrial
network
architectures
that
leverage
the
aerial
network
to
complete
the
terrestrial
network
to
serve
cellular-connected
UAVs
by
reusing
licensed
and
unlicensed
spectrum
considering
multi-cell
and
multi-operator
scenarios.
Under
the
proposed
network
architectures,
we
have
investigated
the
subchannel
allocation,
UAV-Users’
transmit
power,
user
association,
BSs’
transmit
power,
and
dynamic
spectrum
management
to
maximize
the
network
throughput
considering
the
QoS
of
UAV-User.
The
proposed
architectures
and
algorithms
should
provide
valuable
guidelines
for
future
research
in
designing
resource
and
interference
management
schemes,
improving
network
capacity,
and
enhancing
spectrum
utilization
for
complex
interference
environments
in
integrated
UAV-cellular
networks.
Tuesday, November 15, 2022 9:00 am
-
9:00 am
EST (GMT -05:00)