Mathematics (Aug 2024)

Convergence Analysis for an Online Data-Driven Feedback Control Algorithm

  • Siming Liang,
  • Hui Sun,
  • Richard Archibald,
  • Feng Bao

DOI
https://doi.org/10.3390/math12162584
Journal volume & issue
Vol. 12, no. 16
p. 2584

Abstract

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This paper presents convergence analysis of a novel data-driven feedback control algorithm designed for generating online controls based on partial noisy observational data. The algorithm comprises a particle filter-enabled state estimation component, estimating the controlled system’s state via indirect observations, alongside an efficient stochastic maximum principle-type optimal control solver. By integrating weak convergence techniques for the particle filter with convergence analysis for the stochastic maximum principle control solver, we derive a weak convergence result for the optimization procedure in search of optimal data-driven feedback control. Numerical experiments are performed to validate the theoretical findings.

Keywords