Joint Channel Estimation and Prediction for OFDM Systems
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Joint Channel Estimation and Prediction for OFDM Systems. Ian C. Wong and Brian L. Evans {iwong,bevans}@ece.utexas.edu Embedded Signal Processing Laboratory Wireless Networking and Communications Group The University of Texas at Austin IEEE Global Telecommunications Conference Nov. 30, 2005.
Joint Channel Estimation and Prediction for OFDM Systems
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Joint Channel Estimation and Prediction for OFDM Systems Ian C. Wong and Brian L. Evans {iwong,bevans}@ece.utexas.edu Embedded Signal Processing Laboratory Wireless Networking and Communications Group The University of Texas at Austin IEEE Global Telecommunications Conference Nov. 30, 2005 1
Adjust transmission based on channel information Maximize data rates and/or improve link quality Problems Feedback delay - significant performance loss Volume of feedback - power and bandwidth overhead Time-varying Wideband Channel Back haul Internet Mobile Base Station Feedback channel information Adaptive Orthogonal Frequency Division Multiplexing (OFDM) 2
h(n-p) h(n-) h(n+) ? h(n) … Prediction of Wireless Channels • Use current and previous channel estimates to predict future channel response • Overcome feedback delay • Adaptation based on predicted channel response • Lessen amount of feedback • Predicted channel response may replace direct channel feedback 3
Pilot Subcarriers IFFT … … Data Subcarriers Time-domain channel taps Related Work • Prediction on each subcarrier [Forenza & Heath, 2002] • Each subcarrier treated as a narrowband autoregressive process[Duel-Hallen et al., 2000] • Prediction using pilot subcarriers [Sternad & Aronsson, 2003] • Used unbiased power prediction [Ekman, 2002] • Prediction on time-domain channel taps [Schafhuber & Matz, 2005] • Used adaptive prediction filters 4
Comparison of OFDM channel prediction approaches[Wong, Forenza, Heath, & Evans, 2004] • Compared three approaches in a unified framework • Complexity comparison 5
Summary of Main Contributions • Formulated OFDM channel prediction problem as a 2-dimensional frequency estimation problem • Proposed a 2-step 1-dimensional prediction approach • Lower complexity with minimal performance loss • Rich literature of 1-D sinusoidal parameter estimation • Allows decoupling of computations between receiver and transmitter 6
System Model • OFDM baseband received signal • Perfect timing and carrier synchronization and inter-symbol interference elimination by the cyclic prefix • Flat passband for transmit and receiver filters over used subcarriers 7
Deterministic Channel Model • Outdoor mobile macrocell scenario • Far-field scatterer (plane wave assumption) • Linear motion with constant velocity • Small time window (a few wavelengths) • Used in modeling and simulation of wireless channels [Jakes 74], ray-tracing channel characterization [Rappaport 02] 8
… f Df t Dt Pilot-based Transmission • Comb pilot pattern • Least-squares channel estimates 9
Prediction via 2-D Frequency Estimation • If we accurately estimate parameters in our channel model, we could effectively extrapolate the fading process • Estimation and extrapolation period should be within time window where model parameters are stationary • A two-dimensional complex sinusoids in noise estimation • Well studied in radar, sonar, and other array signal processing applications [Kay, 1988] • A lot of algorithms available, but are computationally prohibitive 10
Two-step One-dimensional Frequency Estimation • Typically, a lot of propagation paths share the same resolvable time delay • We can thus break down the problem into two steps • Time-delay estimation • Doppler-frequency estimation 11
Step 1 – Time-delay estimation • Estimate autocorrelation function using the modified covariance averaging method [Stoica & Moses, 1997] • Estimate the number of paths L using minimum description length rule [Xu, Roy, & Kailath, 1994] • Estimate the time delays using Estimation of Signal Parameters via Rotational Invariance Techniques (ESPRIT) [Roy & Kailath, 1989] • Estimate the amplitudes cp(l) using least-squares • Discrete Fourier Transform of these amplitudes could be used to estimate channel • More accurate than conventional approaches, and similar to parametric channel estimation method in [Yang, et al., 2001] 12
Step 2 – Doppler freq. estimation • Using complex amplitudes cp(l) estimated from Step 1 as the left hand side for (2), we determine the rest of the parameters • Similar steps as Step 1 can be applied for the parameter estimation for each path p • Using the estimated parameters, predict channel as 13
Prediction Snapshot Predicted channel 1/5 ahead, SNR = 10 dB Predicted channel trace, SNR = 10 dB 15
Summary L - No. of paths M - No. of rays per path 17