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  Time-variant channel prediction using timeconcentrated and band-limited sequences (2006) [2 citations — 2 self]

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by Thomas Zemen, Christoph F. Mecklenbräuker, Forschungszentrum Telekommunikation Wien
in Proc. 5th Vienna Symposium in Mathematical Modelling (MATHMOD
http://userver.ftw.at/~zemen/papers/Zemen06-ICC-paper.pdf
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Abstract:

Abstract — We present the basic methodology for minimumenergy bandlimited prediction of time-variant flat Rayleighfading channels. This predictor is based on a subspace spanned by time-concentrated and bandlimited sequences. The concept of time-variant channel estimation using time-concentrated and band-limited sequences was introduced recently by Zemen et al. We extend this concept to the problem of time-variant channel prediction. Slepian showed that discrete prolate spheroidal (DPS) sequences can be used to calculate the minimum-energy bandlimited continuation of a finite sequence. DPS sequences are optimal for a time-variant channel with flat Doppler spectrum. We generalize the concept of time-concentrated and band-limited sequences to arbitrary Doppler spectra approaching closely the lower prediction error limit defined by the Wiener filter. In practical systems detailed channel covariance information is not available. We design a set of subspaces spanned by DPS sequences with fixed time-concentration but growing bandwidth. The best DPS subspace is selected dynamically for each observation interval using a Doppler bandwidth estimate allowing for low complexity channel prediction. The performance of the new predictor is compared to that of the Wiener filter by means of Monte Carlo simulations. I.

Citations

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