Uncertainty of transfer function modelling using prior estimated noise models
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Publication:1413930
DOI10.1016/S0005-1098(03)00185-7zbMath1030.93003MaRDI QIDQ1413930
Johan Schoukens, Yves Rolain, Rik Pintelon
Publication date: 17 November 2003
Published in: Automatica (Search for Journal in Brave)
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Related Items (6)
Non-parametric estimate of the system function of a time-varying system ⋮ Uncertainty of transfer function modelling using prior estimated noise models ⋮ Frequency domain sample maximum likelihood estimation for spatially dependent parameter estimation in PDEs ⋮ On the accuracy in errors-in-variables identification compared to prediction-error identification ⋮ Large signal-to-noise ratio quantification in MLE for ARARMAX models ⋮ Quadrature-Based Vector Fitting for Discretized $\mathcal{H}_2$ Approximation
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