2016
DOI: 10.48550/arxiv.1609.06959
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Iterative observer-based state and parameter estimation for linear systems

Abstract: We propose an iterative method for joint state and parameter estimation using measurements on a time interval [0, T ] for systems that are backward output stabilizable. Since this time interval is fixed, errors in initial state may have a big impact on the parameter estimate. We propose to use the back and forth nudging (BFN) method for estimating the system's initial state and a Gauss-Newton step between BFN iterations for estimating the system parameters. Taking advantage of results on the optimality of the … Show more

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