Data-driven Control of T-Product-based Dynamical Systems
Abstract
Data-driven control is a powerful tool that enables the design and implementation of control strategies directly from data without explicitly identifying the underlying system dynamics. While various data-driven control techniques, such as stabilization, linear quadratic regulation, and model predictive control, have been extensively developed, these methods are not inherently suited for multi-linear dynamical systems, where the states are represented as higher-order tensors. In this article, we propose a novel framework for data-driven control of T-product-based dynamical systems (TPDSs), where the system evolution is governed by the T-product between a third-order dynamic tensor and a third-order state tensor. In particular, we offer necessary and sufficient conditions to determine the data informativity for system identification, stabilization by state feedback, and T-product quadratic regulation of TPDSs with detailed complexity analyses. Finally, we validate our framework through numerical examples.
Cite
@article{arxiv.2502.14591,
title = {Data-driven Control of T-Product-based Dynamical Systems},
author = {Ziqin He and Yidan Mei and Shenghan Mei and Xin Mao and Anqi Dong and Ren Wang and Can Chen},
journal= {arXiv preprint arXiv:2502.14591},
year = {2025}
}
Comments
8 pages, 2 tables