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Design of Asymptotic Estimators: An Approach Based on Neural Networks and Nonlinear Programming
2007
IEEE Transactions on Neural Networks
A methodology to design state estimators for a class of nonlinear continuous-time dynamic systems that is based on neural networks and nonlinear programming is proposed. The estimator has the structure of a Luenberger observer with a linear gain and a parameterized (in general, nonlinear) function, whose argument is an innovation term representing the difference between the current measurement and its prediction. The problem of the estimator design consists in finding the values of the gain and
doi:10.1109/tnn.2006.883015
pmid:17278463
fatcat:jojyuevvqbck5oj6r5xegvjvl4