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Channel Estimation and Prediction for 5G Applications
Rikke Apelfröjd
PhD Thesis, Uppsala University,
ISBN 978-91-513-0263-8,
Digital Comprehensive Summaries of Uppsala Dissertations from the Factulty of Science and Technology,
April 2018, 116 pp.
Dissertation in Electrical Engineering with specialization
in Signal Processing, publicly examined
in Häggsalen, Ångström Laboratory,
Uppsala on Friday April 27, 2018 at 10.00.
Thesis Opponent: Docent Emil Björnson, Linköping University, Linköping, Sweden.
Comprehensive Summary (116 pages) available
in Pdf.
Comprehensive Summary in DIVA database
Paper copies of the complete thesis, including papers,
can be obtained from
Signals and Systems Group, Uppsala University,
Box 534, SE-75121 Uppsala, Sweden.
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Abstract:
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Accurate channel state information (CSI) is important for many candidate techniques of
future wireless communication systems. However, acquiring CSI can sometimes be difficult,
especially if the user equipment is mobile in which case the future channel realisations must
be estimated/predicted. In realistic settings the predictability of radio channels is limited due to
measurement noise, limited model orders and since the fading statistics must be modelled based
on a set of limited and noisy training data.
In this thesis, the limits of predictability for the radio channel are investigated. Results show
that the predictability is limited primarily due to limitations in the training data, while the model
order provides a second order limitation effect and the measurement noise comes in as a third
order effect.
Then, a Kalman-based linear filter is studied for potential 5G technologies:
Coherent coordinated multipoint joint transmission, where channel predictions and the
covariance matrix of the prediction error are used to design a robust linear precoder, evaluated
in a three base station system. Results show that prediction improves the CSI for the pedestrian
users such that system delays of 10 ms are acceptable. The use of the covariance matrix is
important for difficult user groups, but of less importance with a simple user grouping system
proposed.
Massive multiple-input multiple-output (MIMO) in frequency division duplex (FDD) systems
were a reduced, suboptimal, Kalman filter is suggested to estimate channels based on nonorthogonal
pilots. By introducing a fixed grid of beams, the system generates sparsity in the
channel vectors seen by each user, which then estimates its most relevant channels based on
unique pilot codes for each beam. Results show that there is a 5 dB loss compared to orthogonal
pilots.
Downlink time division duplex (TDD) channels are estimated based on uplink pilots. By using
a predictor antenna, which scouts the channel in advance, the desired downlink channel can
be estimated using pilot-based estimates of the channels before and after it (in space). Results
indicate that, with the help of Kalman smoothing, predictor antennas can enable accurate CSI
for TDD downlinks at vehicular velocities of 80 km/h.
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Keywords:
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Channel estimation, Channel prediction, Channel smoothing, Linear estimation,
Kalman filter, Massive MIMO, Coordinated Multipoint transmission, Robust precoding,
Predictor antennas, Limits of predictability, Long range predictions.
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Included Papers:
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- Paper I:
Kalman predictions for multipoint OFDM downlink channels.
- Paper II:
Design and measurement based evaluations of coherent
JT CoMP: A study of precoding, user grouping and
resource allocation using predicted CSI.
- Paper III:
Robust linear precoder for coordinated multipoint
joint transmission under limited backhaul with
imperfect CSI.
- Paper IV:
Joint reference signal design and Kalman/Wiener
channel estimation for FDD massive MIMO.
Corresponding Paper
in IEEE Trans. on Communications, 2019.
- Paper V:
Kalman smoothing for irregular pilot patterns;
A case study for predictor antennas in TDD systems.
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References on prediction of mobile radio channels:
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Licentiate thesis by Rikke Apelfröjd, May 2014
on robust coordinated multipoint transmission based
on channel prediction.
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PhD Thesis on channel prediction
by Torbjörn Ekman, 2002.
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PhD Thesis
on MIMO OFDM channel prediction
by Daniel Aronsson, 2011.
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The role of small cells, coordinated multipoint and massive MIMO in 5G,
IEEE Communications Magazine, 2014
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Proposal of predictor antennas
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at IEEE WCNC 2012, with preliminary measurements.
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Predictor antennas with compensation of mutual antenna coupling
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EuCAP 2014.
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Extensive measurements of long-range prediction with prediction antennas
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IEEE ICC 2017.
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Performance evaluation of coordinated multi-point transmission schemes with predicted CSI, at
IEEE PIMRC 2012.
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IEEE PIMRC 2007 paper on
Kalman predictor design for frequency-adaptive scheduling
of FDD OFDMA uplinks.
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EUSIPCO 2007 paper
on OFDMA uplink channel prediction.
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IEEE ICASSP 2005 paper
on channel estimation and prediction for adaptive
OFDMA/TDMA uplinks based on overlapping pilots.
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IST-Summit-2005 paper
on adaptive TDMA/OFDMA for wide-area coverage and
vehicular velocities, for short assumed latencies.
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VTC 2003-paper on
Channel estimation and prediction for adaptive OFDM downlinks.
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IEEE TCOM 2004 on
adaptive modulation for predicted wireless channels
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VTC 2002-Fall
Conference Paper on unbiased power prediction of
broadband radio channels.
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VTC 1999Fall
Conference Paper on
linear and quadratic predictors.
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Research on channel prediction
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4G and 5G Wireless Research
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Entry in publ. list
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