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Using Predictor Antennas for the Prediction of Small-scale
Fading Provides and Order-of-Magnitude Improvement
of Prediction Horizons
Joachim Björsell
, Uppsala University,
Mikael Sternad
, Uppsala University, and
Michael Grieger , AIRRAYS - Wireless Solutions, Dresden, Germany
IEEE International Conference on Communications,
ICC,
Workshop WDN-5G ICC2017, Paris, May 2017.
In Pdf
Also: As Technical Report r161, Signals and Systems, Uppsala
University,
Version 2.1, February 2017.
Report, version 2.1, in Pdf
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Abstract:
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Our aim is to investigate long range predictions
(up to several wavelengths) of the small-scale fading of radio
channels. The purpose is to enable advanced 5G downlink transmission
schemes that require accurate channel state information
at transmitters, such as massive MIMO and coherent joint
transmission, for vehicular users.
We here presents a proof of concept for the recently introduced
predictor antenna scheme which promises a significant increase
in prediction horizon compared to conventional techniques.
Predictor antennas utilize the exterior of moving vehicles by
placing antenna arrays on their roofs. They are used to estimate
the fading radio channels that are encountered later by the
following antennas.
The level of predictability
is determined by the correlation between the channel measured
at the predictor antenna and the channel that is later encountered
by the following antennas when they move to that position.
That
correlation, and the resulting prediction errors, are assessed
on a large set of measurement data sampled at vehicular
velocities, at a carrier frequency of 2.53 GHz, from a multitude
of urban fading environments. These represent a wide variety
of propagation environments, including narrow and wide roads,
intersections, dense urban environments and residential areas.
Using low-pass filtered predictor antenna measurements, the
obtained average prediction Normalized Mean Square Error
(NMSE) is -11 dB for prediction horizons of 0.25 wavelengths and
-8.5 dB for horizons of 3 wavelengths. This represents an order
of magnitude increase of the prediction horizons as compared to
time-series prediction that typically, in practice,
fails to work for prediction
beyond 0.3 wavelengths in space.
As a result, we have a tool that
enables advanced 5G transmit schemes for vehicular users and
vehicle-to-infrastructure links.
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Related publications:
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Companion paper at IEEE PIMRC 2017, that describes
the actual prediction performance, on a data subset
with good SNR.
Paper at IEEE WCNC 2012 Original proposal for
using "Predictor antennas"
for long-range prediction of fast fading for moving relays.
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- WSA 2018 paper verifying
with measurements that predictor antennas enable precise
precoding for massive MIMO antennas in non-line-of sigth.
Conference paper at EUCAP 2014
presenting compensation of antenna coupling.
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IEEE Intelligent Transportation Systems Magazine 2015:
Making 5G adaptive antennas work for very fast moving vehicles.
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Paper at Globecom 2016 5G Workshop
on the gain by predictor antennas
in terms of spectral efficiency and power efficiency
when serving connected vehicles
by 5G Massive MIMO antennas.
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Channel Estimation and Prediction for 5G Applications.
PhD Thesis by Rikke Apelfröjd, Uppsala University 2018.
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Channel Estimation and Prediction for MIMO OFDM Systems.
PhD Thesis by Danel Aronsson, Uppsala University 2011.
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Prediction of Mobile Radio Channels.
PhD Thesis by Torbjörn Ekman, Uppsala University 2002.
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Main
entry in list of publications
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4G and 5G wireless research
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Channel prediction
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