Estimation and detection theory in visible light communication systems: a perspective on realistic receivers
Abstract
Visible light communications (VLC) has been proposed as a promising way for nextgeneration
wireless communication networks to mitigate the scarcity of the radio
frequency (RF) spectrum, and has consequently attracted much attention. Accordingly,
this thesis investigates single-input single-output (SISO) VLC when subject to signaldependent
shot noise (SDSN). Firstly, we consider the case of fixed-location user located in
an indoor environment. For instance, in a classroom setting, a teacher may utilize VLC to
transmit lecture notes and supplementary materials to students’ tablets or laptops, ensuring
a seamless exchange of information without the need for traditional wireless networks.
The topics of discussion include channel estimation and data transmission, where in the
former, we introduce both least square (LS) and maximum likelihood (ML) estimators.
The Cramér–Rao lower bound (CRLB) of the channel estimation error is also derived.
In terms of data transmission, we propose optimal and sub-optimal receiver designs and
present their bit error rate (BER) performances. In specific, we derive a closed-form
expression of the BER for the sub-optimal receiver and an approximated version for the
optimal one. Our analysis indicates that the performance of the CRLB demonstrates no
linear relationship with the SDSN, thermal noise, or fading channel gain. On the other
hand, SDSN has quite a severe effect on the channel estimation error bound, and as such,
it can dramatically degrade the BER performance. Heightened performance degradation
can also be explained by the joint effects of the channel estimation error and SDSN.
Secondly, we consider the case of random location of the user located in an indoor
environment, such as a conference room within a corporate office where the user may
move around freely during a meeting or presentation. In particular, the second part of
this research estimates the channel of the considered system using ML, LS, linear minimum
mean square error (LMMSE), maximum posteriori probability (MAP) and minimum mean square error (MMSE) estimators. Furthermore, a Bayesian Cramér-Rao lower bound
(BCRLB) is derived for the proposed system and it is compared to the mean square error
(MSE) of the proposed estimators. The problem of the unknown SDSN factor at the receiver
side is discussed and two solutions are investigated. The receiver of a VLC system
under SDSN and random channel gain is designed and its BER is studied. Monte Carlo
simulation results of the proposed estimators, which show the dramatic effect of the SDSN
on the considered system, are provided. In particular, the presence of noise variance, as
well as the SDSN factor, causes an increase in the MSE of the system, while increasing the
power reinforces the system performance.
Moreover, the third part of this research explores the interplay between SDSN and
another inherent noise in the light source called relative intensity noise (RIN), revealing
their combined adverse effect on channel estimation accuracy in a VLC system. Towards
this direction, we first derive CRLB in the presence of the SDSN and the RIN, which
gives a lower estimate for the variance of an unbiased estimator. Then, we present the
derivation of LS and ML channel estimators. Furthermore, we present the optimal receiver
in ML sense and compare it with a simple threshold detector as a sub-optimal solution,
quantifying the impact of channel estimation accuracy on both receivers. The findings
presented in this part reveal that the RIN and the SDSN jointly have a significant adverse
effect on the VLC channel estimation, consequently leading to a pronounced degradation in
BER performance of the VLC system. In addition, we proposed optimal and sub-optimal
receiver designs and present their BER. The Monte Carlo simulation results of the BER
for the two presented receivers show that the optimal receiver performance excels beyond
the performance of the sub-optimal receiver.
In other words, our study focuses on investigating the effects of signal-dependent noise in
VLC systems. Initially, we explored how SDSN impacts VLC systems serving fixed-location users. Subsequently, we delved into the influence of SDSN in scenarios where channel
gain variability arises from the randomness of user locations. Following, we analyzed
the combined impact of SDSN and RIN on the performance of VLC systems catering to
fixed-location users in indoor environments. Our investigation involved the use of various
channel estimation techniques, which were compared against a derived lower bound to
evaluate their performance. Additionally, we designed different receivers to demonstrate
how such noise affects the BER of the considered VLC systems.