Recursive identification of a nonlinear state space model |
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Authors: | Torbjörn Wigren |
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Affiliation: | Department of Information Technology, Uppsala University, Uppsala, Sweden |
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Abstract: | The convergence of a recursive prediction error method is analyzed. The algorithm identifies a nonlinear continuous time state space model, parameterized by one right-hand side component of the differential equation and an output equation with a fixed differential gain, to avoid over-parametrization. The method minimizes the criterion by simulation using an Euler discretization. A stability analysis of the associated differential equations results in conditions for (local) convergence to a minimum of the criterion function. Simulations verify the theoretical analysis and illustrate the performance in the presence of unmodeled dynamics, by identification of the nonlinear drum boiler dynamics of a power plant model. |
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Keywords: | averaging convergence nonlinear systems prediction error method state-space model |
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