Abstract:
There has been growing interest in millimeter-wave (mmWave) communication
due to the promising high speeds and immense amounts of unused bandwidth
available. However, mmWaves suffer from unusually high attenuation, through
free space, and especially through obstacles, which necessitates an obstacle free
line-of-sight (LOS) transmission path. This thesis deals with establishment of such
LOS paths, through obstacle detection and deployment of network infrastructure.
The usual approach to avoid static obstacles on transmission paths is to use
satellite imagery to detect the presence of static obstacles, an approach which
apart from raising proprietary concerns, is not able to capture smaller obstacles.
We propose a simple learning based approach to detect the presence of static as
well as dynamic obstacles, without having apriori access to any data regarding
their location from satellite imagery. We then use this knowledge to efficiently
select an appropriate transmission path for a user equipment (UE), lowering the
chance of allocating an obstacle prone link.
Dynamic obstacles are usually tracked by dedicated tracking hardware like
RGB-D cameras, which usually have small ranges, and hence lead to prohibitively
increased deployment costs to achieve complete camera coverage of the deployment
area. We propose an altogether different approach to track dynamic obstacles in an
mmWave network, solely based on short-term historical link failure information,
without resorting to any dedicated tracking hardware. Using the obtained trajectories,
we perform proactive handoffs for at-risk links. We compare our approach
with an RGB-D camera-based approach and show that our approach provides better
handoff performances when the camera coverage is low to moderate, which is
often the case in real deployment scenarios.
Stability of allocated transmission paths is an important problem in the domain
of mmWave communication. The quality of an allocated transmission path
depends not only upon the present time, but also upon the maintenance of the
said path in the near future; the fragile nature of mmWaves necessitates this.
Thus, allocating the base station (BS) which provides the highest received signal
strength (RSS) at the current time instant is not always the best idea, considering
UE mobility, and presence of obstacles. We propose a simple geometric approach to allocate stable transmission paths which are less likely to be broken in the near
future.
One way to deal with obstacle free strict LOS requirements of mmWaves is
to densely deploy small range mmWave BSs, to overcome outage due to obstacles.
Low cost reflectors have also been proposed to augment the transmission
environment, and reflect mmWaves in the desired direction, thereby bypassing the
obstacles. We argue that considering the placement of mmWave BSs and reflectors
independently may lead to suboptimal coverage. We consider an urban deployment
scenario, and attempt to maximally cover it by jointly placing the mmWave
BSs and reflectors. Given the hardness of the joint problem, we first develop a
set cover based greedy solution, and also provide a linear programming (LP) relaxation
based solution. With extensive simulations, we show that with a fixed
number of available mmWave BSs and reflectors to be placed, both our proposed
solutions achieve a larger coverage compared to an existing approach where BSs
and reflectors were placed sequentially.
Unmanned Aerial Vehicles (UAVs) are a potential platform for deployingmmWave
BSs. One challenge that has to be addressed is the limited power onboard a UAV,
which is used to hover and move the device, and of course, to transmit data. We
deal with the deployment of UAVs with an aim to minimise their displacement in
subsequent time instances. We take into consideration UE mobility, and propose
LazyUAV, a set cover based geometric approach to minimise UAV displacement,
while maintaining maximal coverage.