Trajectory-based data-driven predictive control and the state-space predictor
Abstract
We define trajectory predictive control (TPC) as a family of output-feedback indirect data-driven predictive control (DDPC) methods that represent the output trajectory of a discrete-time system as a linear function of the recent input/output history and the planned input trajectory. This paper shows that for different choices of the trajectory predictor, TPC encompasses a wide variety of DDPC methods, including subspace predictive control (SPC), closed-loop SPC, -DDPC, causal--DDPC, transient predictive control, and others. This paper introduces a trajectory predictor that corresponds to a linear state-space model with the recent input/output history as the state. With this state-space predictor, TPC is a special case of linear model predictive control and therefore inherits its mature theory. In numerical experiments, TPC performance approaches the limit of oracle -optimal control with perfect knowledge of the underlying system model. For TPC with small training datasets, the state-space predictor outperforms other predictors because it has fewer parameters.
Cite
@article{arxiv.2602.10936,
title = {Trajectory-based data-driven predictive control and the state-space predictor},
author = {Levi D. Reyes Premer and Arash J. Khabbazi and Kevin J. Kircher},
journal= {arXiv preprint arXiv:2602.10936},
year = {2026}
}