Localization and tracking in imperfect mmwave systems with lower bound benchmarks
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Tubail, Deeb Assad
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Abstract
Radio localization and tracking have enormously grown in the fifth generation (5G) of
cellular systems and are no longer limited to emergencies. Furthermore, the data obtained
from these processes proves highly beneficial for cellular networks, offering advantages
such as enhanced network control and more efficient resource management. Accordingly, this
thesis investigates localization and tracking in 5G and beyond. In particular, it targets realistic
circumstances where the theoretical assumptions of a perfect synchronous system and ideal
transceivers no longer exist. In this thesis, we undertake the task of localizing and tracking
objects in progressively challenging scenarios. Subsequent to each localization and tracking
process in these scenarios, we offer a performance analysis tool, accompanied by the derivation of
benchmark metrics. Notably, we establish the Cramer-Rao Bound (CRB) as the benchmark for
localization assessment and introduce the Bayesian Cramer-Rao Bound (BCRB) as the benchmark
for tracking evaluation.
In the context of localization, the initial scenario involves localizing a mobile station (MS)
equipped with a single antenna within a perfectly synchronized millimeter-wave (mmwave)
multiple-input single-output (MISO) system implementing the orthogonal frequency division
multiplexing (OFDM), taking into account hardware impairments (HWIs) occurring at both the
base station (BS) and the MS. Subsequently, the localization task advances to a more intricate
environment, where localization accuracy is compromised by non-line of sight (NLoS) effects
caused by unknown position scatterers, in addition to the presence of HWIs. Continuing the
exploration, the localization process is extended to an environment where it is implemented
within an asynchronous reconfigurable intelligent surface (RIS) aided mmwave MISO system.
Here, our focus shifts to achieving localization alongside synchronization in a RIS-aided mmwave
MISO system that is subject to HWIs. As for tracking, we also delve into this aspect within both
a perfectly synchronized mmwave MISO system and a RIS-enhanced mmwave MISO system. In
the first system, tracking performance is notably hampered by the presence of HWIs. Specifically,
we engage in range-direction tracking of the MS relative to the reference BS. Subsequently,
we proceed to track the MS’s position concerning the reference BS. However, in the second
RIS-aided mmwave MISO system, tracking accuracy experiences a decline owing to both HWIs
and synchronization errors, as we focus on monitoring the MS’s position in this particular
configuration.
From a technical standpoint, the process of localization, tracking, and even joint localization-synchronization
is carried out on the MS board. This is achieved by estimating the downlink
channel parameters using a maximum likelihood (ML) estimator. Subsequently, the localization
and the joint localization-synchronization tasks are finalized by inputting these estimated parameters
into specific geometric equations that establish a connection between the estimated values
and the MS’s position and clock drift relative to the reference BS. Regarding the tracking process,
the estimated parameters are subjected to processing using the Kalman filter (KF) when the relationships between the measurements and tracked elements exhibit linearity. Conversely, when
these connections display nonlinearity, the extended Kalman filter (EKF) is utilized to manage
these parameters. Both KF and EKF execute tracking by combining the estimated parameters,
which represent the measurements, with prior information pertaining to the transition model of
the MS.
During the evaluation phase, we determine the localization and synchronization boundaries
by calculating the position error bound (PEB) and synchronization error bound (SEB) using
the CRB as a reference. Therefore, the CRB serves as a mathematical benchmark for assessing
both the localization and the joint localization-synchronization procedures. This benchmark is
derived by mathematically inverting the Fisher information matrix (FIM) associated with these
processes. To initiate this procedure, we first construct a model for the received pilot signal, which
is utilized in the estimation of the downlink channel parameters. Subsequently, we compute the
FIM for the estimation of these downlink parameters and then transform it into the FIM for the
localization and joint localization-synchronization tasks. The assessment of tracking performance
involves a comparison with the BCRB, which results in tracking error limits. The BCRB takes
into account not only the valuable information obtained from received pilots but also the valuable
information derived from understanding the transition model of the MS. As a result, we follow
a similar series of steps as those outlined for localization to compute the FIM related to the
measurements. Subsequently, we calculate the FIM matrix associated with the MS’s transition
model. The combination of these two FIMs forms the Bayesian information matrix (BIM), which
is mathematically inverted to yield the BCRB benchmark.
In conclusion, we perform numerical experiments to assess our processes. The results obtained
from these computer simulations analyze the level of accuracy achieved in localization
and tracking across various suggested scenarios. This accuracy measured by simulation is juxtaposed
with the established benchmarks. The findings from both the simulation accuracy and the
benchmarks reveal the detrimental effects of HWIs on localization and tracking performance,
and this deterioration is inversely proportional to the transceiver quality. An analogous negative
effect is observed as a result of the reflected NLoS paths from scatterers with unknown positions.
Furthermore, the asynchronous scenarios demonstrate that assuming perfect synchronization
masks a portion of the degradation observed in localization and tracking accuracy. However, in
these numerical experiments, we achieve the theoretical accuracy presented by CRB for localization
and by BCRB for tracking when these processes are implemented with perfect transceivers
conditional to negligible NLoS reflections. On the other hand, with non-ideal conditions, the
numerical experiments show that applying the proposed Monte Carlo (MC) approach with KF and
EKF leads to a significant enhancement in accuracy. Furthermore, we leverage the capabilities
of the proposed machine learning techniques (MLT) to offer a streamlined and highly accurate
solution that does not rely on prior models and statistics around the MS.
