considered as exterior users. Then the total number
of PRB is divided onto Q groups (GPRB) with an
equal size. For exterior users, all GPRB are sorted in
decreasing order of power. Next, the set of GPRBs
that will be allocated to exterior users, which is
calculated according to their number in the cell, are
those with the minimum power for all eNodeBs. The
rest of the GPRBs will be automatically allocated to
interior users. In Papathanasiou, 2013, authors
considered imperfect channel state information
(CSI) in the transmitter, which means that CSI is
estimated at the receiver then it is fed back to the
transmitter, and they take into account bit error rate,
rate requirement and delay requirement as QoS
constraints. They proposed a heuristic approach
including three steps. In the first one, the resource
allocation unit decides the number of subcarriers
needed by each user according to the QoS
requirements. Secondly, subcarriers are assigned to
users according to the corresponding power
allocation based on the outcomes of the first step and
power constraint. In the third step, they suggested
the reallocation of some subcarriers according to
user’s satisfaction.
The remainder of this paper is organized as
follows. We give an overview of the present
contribution in section 2. Then in section 3, we
describe the system model used in our study. The
proposed resources allocation scheme is discussed in
section 6 as well as the problem formulation. In
section 5 the simulation results are presented and
analyzed. Finally, section 6 concludes the paper.
2 MAIN CONTRIBUTION
In this paper, we attempt to present a dynamic and
cooperative solution to the problem in order to
satisfy the LTE-A network features. We considered
both network and mobile users constraints. As
presented in Figure 1, in the first step we classify
users to edge and central users, in both cases users
will be collected to M-UE teams according to their
localization, velocity and QoS requirements. On the
other side, PRBs are assigned by user’s M-UE team.
We estimate the required number of PRBs by each
M-UE team. Then the total available band will be
divided into sub-bands of the required estimated
value and one of them will be assigned to the
corresponding M-UE team of users. The sub-band
selection is based on the resolution of optimization
problem to maximize the capacity provided by the
sub-band for
the
M-UE team of users. We also study
the case when the M-UE team requirement risks
overloading the cell, in such case the cell will
collaborate with neighbors one to serve the group of
users.
Figure 1: Contribution overview.
When developing the proposed approach, we
focus on the selection of the best action by the radio
resources allocation scheme to assign the right sub-
band to the right M-UE team of users at the right
time. We also integrate the congestion control aspect
in order to maintain system stability and users
required QoS. In fact, when the cell becomes close
to overload state, the eNodeB selects a neighbor cell
or one of the existing RAT to collaborate with based
on information collected about different existed
technologies; thanks to MIH deployment (IEEE Std
for Local and metropolitan area networks Part 21,
2008).
3 SYSTEM MODEL
In this work, we investigate radio resource allocation
for multi-cell downlink OFDMA communication
scenario in LTE-A systems. With the OFDM
scheme, the total band is equally divided into P
physical resource blocks (PRBs) and each user can
allocate an integer number of PRBs according to its
requirements. Consider MIMO as key technology of
LTE-A, where each eNodeB is equipped with Me
transmit antennas and users devices are equipped
with M
r
receive antennas. Each eNodeB transmits a
single data stream to each user with zero forcing
beamforming. We mean by M
t ,
the total number of
transmit antennas which is equal to
1
E
i
i
Me
=
∑
where E denotes the total number of eNodeB. Figure
2 illustrates the downlink coordinated beamforming