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    Fræser is a framework for estimating the parameters of static and dynamic errors-in-variables systems with the opportunity to compare various errors-in-variables parameter estimation algorithms via simulations. It features a graphical user interface and several examples for simultaneously estimating model and noise parameters. The framework incorporates the following linear and nonlinear estimation methods for static and dynamic systems: * model parameter estimation for static systems o Koopmans method * linear model and noise parameter estimation for dynamic systems o (extended) instrumental variables method (XIV) o bias-compensating least-squares method (BCLS) o Frisch scheme (FS) o generalized Koopmans-Levin method (GKL) * nonlinear model parameter estimation for static systems o nonlinear Koopmans method (NK) o approximated maximum likelihood method (AML) * nonlinear model and noise parameter estimation for dynamic systems o bias-compensated least squares method (BCLS) o nonlinear Koopmans-Levin method (NKL) o nonlinear extennonlinear extension to generalized Koopmans-Levin method (NGKL)
    14 years ago by @gresch
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