High-Confidence Data-Driven Ambiguity Sets for Time-Varying Linear Systems

Journal Article (2024)
Author(s)

Dimitris Boskos (TU Delft - Team Dimitris Boskos)

Jorge Cortés (University of California)

Sonia Martinez (University of California)

Research Group
Team Dimitris Boskos
Copyright
© 2024 D. Boskos, Jorge Cortes, Sonia Martinez
DOI related publication
https://doi.org/10.1109/TAC.2023.3273815
More Info
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Publication Year
2024
Language
English
Copyright
© 2024 D. Boskos, Jorge Cortes, Sonia Martinez
Research Group
Team Dimitris Boskos
Issue number
2
Volume number
69
Pages (from-to)
797-812
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Abstract

This paper builds Wasserstein ambiguity sets for the unknown probability distribution of dynamic random variables leveraging noisy partial-state observations. The constructed ambiguity sets contain the true distribution of the data with quantifiable probability and can be exploited to formulate robust stochastic optimization problems with out-of-sample guarantees. We assume the random variable evolves in discrete time under uncertain initial conditions and dynamics, and that noisy partial measurements are available. All random elements have unknown probability distributions and we make inferences about the distribution of the state vector using several output samples from multiple realizations of the process. To this end, we leverage an observer to estimate the state of each independent realization and exploit the outcome to construct the ambiguity sets. We illustrate our results in an economic dispatch problem involving distributed energy resources over which the scheduler has no direct control.

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