English

Safe Learning-based Observers for Unknown Nonlinear Systems using Bayesian Optimization

Systems and Control 2021-06-28 v2 Machine Learning Systems and Control Optimization and Control

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 components are estimated using Bayesian optimization and Gaussian processes; and, (iii) a re-design phase that leverages the learned dynamics to improve convergence rate of the state estimation error. The potential of our proposed learning-based observer is demonstrated on a benchmark nonlinear system. Additionally, certificates of guaranteed estimation performance are provided.

Keywords

Cite

@article{arxiv.2005.05888,
  title  = {Safe Learning-based Observers for Unknown Nonlinear Systems using Bayesian Optimization},
  author = {Ankush Chakrabarty and Mouhacine Benosman},
  journal= {arXiv preprint arXiv:2005.05888},
  year   = {2021}
}

Comments

23 pages, post-review draft