English

Datamodel-Based Data Selection for Nonlinear Data-Enabled Predictive Control

Systems and Control 2026-03-26 v2 Systems and Control

Abstract

Data-Enabled Predictive Control (DeePC) has emerged as a powerful framework for controlling unknown systems directly from input-output data. For nonlinear systems, recent work has proposed selecting relevant subsets of data columns based on geometric proximity to the current operating point. However, such proximity-based selection ignores the control objective: different reference trajectories may benefit from different data even at the same operating point. In this paper, we propose a datamodel-based approach that learns a context-dependent influence function mapping the current initial trajectory and reference trajectory to column importance scores. Adapting the linear datamodel framework from machine learning, we model closed-loop cost as a linear function of column inclusion indicators, with coefficients that depend on the control context. Training on closed-loop simulations, our method captures which data columns actually improve tracking performance for specific control tasks. Experimental results demonstrate that task-aware selection substantially outperforms geometry-based heuristics, particularly when using small data subsets.

Keywords

Cite

@article{arxiv.2512.00276,
  title  = {Datamodel-Based Data Selection for Nonlinear Data-Enabled Predictive Control},
  author = {Jiachen Li and Shihao Li and Jiamin Xu and Soovadeep Bakshi and Dongmei Chen},
  journal= {arXiv preprint arXiv:2512.00276},
  year   = {2026}
}