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Prediction of Fading Broadband Wireless Channels Torbjörn Ekman UniK-University Graduate Center Oslo, Norway JOINT BEATS/Wireless IP seminar, Loen
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Contents Motivation Noise Reduction Linear Prediction of Channels Delay Spacing, Sub-sampling Results Power Prediction Results Recommendations
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With channels known in advance the problem with fast fading can be turned into an advantage Adaptive resource allocation Fast link adaptation The multi-user diversity can be exploited Why?
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Noise Reduction of Estimated Channels The same noise floor is seen in the power delay profile. The estimated Doppler spectrum is low pass and has a noise floor.
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IIR smoothers
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FIR or IIR Wiener-smoother? IIR smoothers 1.based on a low pass ARMA-model 2.can be numerically sensitive 3.need few parameters FIR smoothers 1.based on a model for the covariance 2.need many parameters Both have similar performance. Both use estimates of the variance of the estimation error and the Doppler frequency.
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Linear Prediction of Mobile Radio Channels Model for the tap The FIR-predictor The MSE-optimal coefficients A step towards power prediction Can produce prediction of the frequency response
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Linear prediction with noise reduction
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Model Based Prediction
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Delay Spacing
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The MSE optimal delay spacing for the Jakes model depends on the variance of the estimation error. The NMSE has many local minima.
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Sub-sampling and aliasing OSR 50 Sub-sampling rate 13 Jakes model SNR 10dB 16 predictor coefficients FIR Wiener smoother (128)
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Prediction performance on a Jakes model OSR 50 (100 samples per ) FIR predictor, 8 coefficients FIR Wiener smoother (128) Dashed lines: no smoother
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The Measurements Channel sounder measurements in urban and suburban Stockholm Carrier frequency 1880MHz Baseband sampling rate 6.4MHz Channel update rate 9.1kHz Vehicle speeds 30-90km/h 1430 consecutive impulse responses at each location Data from 41 measurement locations
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Prediction performance on the taps
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Channel prediction performance
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Power Prediction The power of a tap A biased quadratic predictor An unbiased quadratic predictor Rayleigh fading taps: the optimal for the complex tap prediction is optimal also for the power prediction.
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Biased and unbiased NMSE
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Observed power or complex regressors? AR2-process Approx. Jakes FIR predictor (2) Dash-dotted line for observed power in the regressors.
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Power prediction performance
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Median tap prediction performance
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Channel prediction
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Compare average predictor with unbiased predictor
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Predictor Design Estimate the channel with uttermost care. Noise reduction using Wiener smoothers. Estimate sub-sampled AR-models or use a direct FIR-predictor. Estimate as few parameters as possible. Design Kalman predictor using a noise model that compensates for estimation errors Power prediction: Squared magnitude of tap prediction with added bias compensation.
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