|  | Channel Estimation and Prediction for MIMO OFDM Systems: Key design and performance aspects of Kalman-based algorithms.
 
 
Daniel Aronsson
 
PhD Thesis, Uppsala University, 
ISBN 978-91-506-2194-5,
February 2011, 245 pp.
 
Dissertation in Electrical Engineering with specialization
in Signal Processing,  publicly examined
in Polhemssalen, Ångström Laboratory,
Uppsala on Friday March 25, 2011 at 13.15.  
 
Thesis Opponent: Prof. Ove Edfors, Lunds universitet, Lund, Sweden.
 
 
The thesis available
 in Pdf. 
 
Abstract in DIVA database 
  Paper copies of the thesis
can be obtained from Ylva Johansson,
Signals and Systems Group, Uppsala University, 
Box 534, SE-75121 Uppsala, Sweden.
 
 
 
  
Abstract:
Wireless broadband systems based on Orthogonal Frequency Division 
Multiplexing (OFDM) are being introduced to meet demands for high data 
transfer rates.
In multiple users systems, the available bandwidth has to be shared 
efficiently by several users. The radio channel quality will fluctuate, 
or fade, as users move.
Fading complicates the resource allocation, but channel prediction may 
alleviate this problem. A flexible and computationally inexpensive state 
space representation of fading channels is here used in conjunction with 
a Kalman filter, operating on special-purpose reference signals, to 
track and predict fading OFDM channels.
 
The thesis investigates key design and performance aspects of such 
estimators.
 
Taking a probabilistic approach, we interpret the output of the Kalman 
filter as a full representation of a state of knowledge about the fading 
channels, given whatever information is at hand. 
For systems analysis, 
this permits conclusions to be drawn about channel estimation and 
prediction performance based on only vague information about the fading 
characteristics of the channel rather than on actual channel 
measurements. This is an alternative to conducting classic simulation 
studies. 
 
Various reference signal designs are studied and good design 
choices are recommended. Superimposed reference signal schemes are also 
proposed for and evaluated in cases where multiple signals are received, 
e.g. in multi-user (MU), multi-input multi-output (MIMO), or coordinated 
multi-point (CoMP) settings. By using time-varying reference signals, 
channel estimation and prediction performance is shown to be improved 
considerably in crowded frequency bands. 
 
The variation of prediction 
performance with prediction range and Doppler spectrum characteristics 
is investigated. 
 
For link adaptation, we derive the appropriate metric 
on which adaptation decisions should be based. The probability density 
function for this metric is derived for general MIMO channels. Link 
adaptation is studied for a single link system when channel prediction 
and estimation errors are present, both for uncoded systems and systems 
using large block codes with soft decoders.
 
Various aspects of channel model acquisition are addressed by conducting 
studies on measured channels. Owing to the use of special matrix 
structures and fast convergence to time-invariant or periodic solutions, 
we find the Kalman filter complexity to be reasonable for future 
implementation. 
 
Finally, expressions for the impact of modelling errors 
are derived and used to study the impact of modelling errors on channel 
prediction performance in some example cases.
  
Keywords:
Channel estimation, channel prediction, OFDM, Kalman filtering.
  
Table of Contents:
  
     IntroductionWireless communications Linear filtering and inference theoryModelling MIMO-OFDMA systems A channel estimation case studyThe OFDMA uplink designLink adaptation for uncertain channel state informationStudies on measured channelsModelling errors 
References on prediction of mobile radio channels:
PhD Thesis by Rikke Apelfröjd, May 2014 
on channel estimation and prediction for 5G applications.
Technical Report by Rikke Apelfröjd 2018
on Kalman prediction of multipoint downlinks.
Proceedings of the IEEE paper (2007, Invited Paper),
giving an overview of adaptive transmission in OFDMA systems,
also using channel prediction.
Licenciate Thesis
by Daniel Aronsson, 2007.
IEEE PIMRC 2007 paper on
Kalman predictor design for frequency-adaptive scheduling
of FDD OFDMA uplinks.
EUSIPCO 2007 paper
on OFDMA uplink channel prediction.
IEEE ICASSP 2005 paper
on channel estimation and prediction for adaptive
OFDMA/TDMA uplinks based on overlapping pilots.
IST-Summit-2005 paper 
on adaptive TDMA/OFDMA for wide-area coverage and
vehicular velocities.
VTC 2003-paper on
Channel estimation and prediction for adaptive OFDM downlinks.
PhD Thesis
by Torbjörn Ekman, 2002.
 
VTC 2002-Fall
Conference Paper on unbiased power prediction of
broadband radio channels.
VTC 2001-Spring
Conference Paper on long-term prediction of
broadband radio channels.
Licenciate Thesis 
by Torbjörn Ekman, summarizing our results up to november 2000.
VTC 1999Fall 
Conference Paper on
linear and quadratic predictors.
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Research on channel prediction
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Wireless IP and WINNER projects
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Entry in publ.  list
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