2020
DOI: 10.48550/arxiv.2005.05888
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Safe Learning-based Observers for Unknown Nonlinear Systems using Bayesian Optimization

Abstract: Data generated from dynamical systems with unknown dynamics enable the learning of state observers that are: robust to modeling error, computationally tractable to design, and capable of operating with guaranteed performance. In this paper, a modular design methodology is formulated, that consists of three design phases: (i) an initial robust observer design that enables one to learn the dynamics without allowing the state estimation error to diverge (hence, safe); (ii) a learning phase wherein the unmodeled c… Show more

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