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Extended Kalman Filter for Oversampled Dynamical Phase Offset Estimation

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Academic year: 2021

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Fig. 2. EKF and BCRB versus the SNR for three different oversampling factors S = 1,2 and 4, with a phase-noise variance σ 2 w = 0.001 rad 2 .
Fig. 3. EKF and BCRB versus the SNR for three different oversampling factors S = 1, 2 and 4, with a phase-noise variance σ 2 w = 0.01 rad 2 .

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