English

DeePC-Hunt: Data-enabled Predictive Control Hyperparameter Tuning via Differentiable Optimization

Optimization and Control 2025-05-30 v2

Abstract

This paper introduces Data-enabled Predictive Control Hyperparameter Tuning via Differentiable Optimization (DeePC-Hunt), a backpropagation-based method for automatic hyperparameter tuning of the DeePC algorithm. The necessity for such a method arises from the importance of hyperparameter selection to achieve satisfactory closed-loop DeePC performance. The standard methods for hyperparameter selection are to either optimize the open-loop performance, or use manual guess-and-check. Optimizing the open-loop performance can result in unacceptable closed-loop behavior, while manual guess-and-check can pose safety challenges. DeePC-Hunt provides an alternative method for hyperparameter tuning which uses an approximate model of the system dynamics and backpropagation to directly optimize hyperparameters for the closed-loop DeePC performance. Numerical simulations demonstrate the effectiveness of DeePC in combination with DeePC-Hunt in a complex stabilization task for a nonlinear system and its superiority over model-based control strategies in terms of robustness to model misspecifications.

Keywords

Cite

@article{arxiv.2412.06481,
  title  = {DeePC-Hunt: Data-enabled Predictive Control Hyperparameter Tuning via Differentiable Optimization},
  author = {Michael Cummins and Alberto Padoan and Keith Moffat and Florian Dorfler and John Lygeros},
  journal= {arXiv preprint arXiv:2412.06481},
  year   = {2025}
}

Comments

L4DC 2025

R2 v1 2026-06-28T20:27:52.522Z