Národní úložiště šedé literatury Nalezeno 2 záznamů.  Hledání trvalo 0.01 vteřin. 
Hybrid Method for Modelling and State Estimation of Dynamic Systems
Brablc, Martin ; Blaha, Petr (oponent) ; Bugeja, Marvin (oponent) ; Grepl, Robert (vedoucí práce)
This Doctoral thesis deals with the development of a new hybrid method for the dual estimation of states and parameters of nonlinear dynamic systems based on the idea of local linear models, which uses the estimation of the uncertainty of the model parameters to automatically adjust the parameters of the Kalman filter (KF), thus greatly simplifying its deployment and adjustment in practical applications. In the first part, the dissertation summarises the current state of knowledge in the field of dynamic systems, simultaneous estimation, KF and modelling of nonlinear dynamic systems. Then, in two separate chapters, it discusses the modification of KF for situations where inaccurate model parameters are the dominant influence causing process noise, and the modification of the Receptive field weighted regression (RFWR) method so that it can be used for dual estimation. Finally, the paper describes the developed hybrid method composed of modified RFWR and KF algorithms called Receptive field dual estimation - (RFDE) and demonstrates its performance on simulation and real data.
Derivation And Practical Comparison Of Recursive Ls And Tls System Identification Methods
Friml, Dominik
The least squares (LS) type of methods are the most widely used methods in system identificationdespite their obvious imperfection. Such methods use a regressor, that is supposed not tocontain any error, notwithstanding that it is constructed from measured data. This can be solved byusing the total least squares (TLS) type of methods. Derivation of both batch and recursive methodsof LS and TLS for identification and their practical comparison is presented in this paper

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