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A Case Study in Ensemble Optimal Control for Bayesian Input Design

MCML Authors

Abstract

We discuss the problem of input design for uncertainty reduction in a parameter estimation procedure. Assuming a linear continuous-time control system with noisy measurements, we formulate an objective of variance reduction in a Bayesian Gaussian setting as an optimal control problem and analyze it from a geometric control perspective. The resulting cost functional depends on the unknown parameter, we compare the optimal control approach with a non-standard alternative inspired by ensemble control, where the cost is averaged over the prior distribution after computation, rather than before. This requires the statement of a generalized Pontryagin's maximum principle adapted to Gaussian distributions.

misc SS25


Preprint

Nov. 2025

Authors

L. Sacchelli • A. Scagliotti

Links

arXiv

Research Area

 A2 | Mathematical Foundations

BibTeXKey: SS25

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