The Koopman Expectation: An Operator Theoretic Method for Efficient Analysis and Optimization of Uncertain Hybrid Dynamical Systems
For dynamical systems involving decision making, the success of the system greatly depends on its ability to make good decisions with incomplete and uncertain information. By leveraging the Koopman operator and its adjoint property, we introduce the Koopman Expectation, an efficient method for compu...
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Zusammenfassung: | For dynamical systems involving decision making, the success of the system
greatly depends on its ability to make good decisions with incomplete and
uncertain information. By leveraging the Koopman operator and its adjoint
property, we introduce the Koopman Expectation, an efficient method for
computing expectations as propagated through a dynamical system. Unlike other
Koopman operator-based approaches in the literature, this is possible without
an explicit representation of the Koopman operator. Furthermore, the
efficiencies enabled by the Koopman Expectation are leveraged for optimization
under uncertainty when expected losses and constraints are considered. We show
how the Koopman Expectation is applicable to discrete, continuous, and hybrid
non-linear systems driven by process noise with non-Gaussian initial condition
and parametric uncertainties. We finish by demonstrating a 1700x acceleration
for calculating probabilistic quantities of a hybrid dynamical system over the
naive Monte Carlo approach with many orders of magnitudes improvement in
accuracy. |
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DOI: | 10.48550/arxiv.2008.08737 |