English

Controllability Test for Nonlinear Datatic Systems

Systems and Control 2024-05-16 v1 Systems and Control

Abstract

Controllability is a fundamental property of control systems, serving as the prerequisite for controller design. While controllability test is well established in modelic (i.e., model-driven) control systems, extending it to datatic (i.e., data-driven) control systems is still a challenging task due to the absence of system models. In this study, we propose a general controllability test method for nonlinear systems with datatic description, where the system behaviors are merely described by data. In this situation, the state transition information of a dynamic system is available only at a limited number of data points, leaving the behaviors beyond these points unknown. Different from traditional exact controllability, we introduce a new concept called ϵ\epsilon-controllability, which extends the definition from point-to-point form to point-to-region form. Accordingly, our focus shifts to checking whether the system state can be steered to a closed state ball centered on the target state, rather than exactly at that target state. On its basis, we propose a tree search algorithm called maximum expansion of controllable subset (MECS) to identify controllable states in the dataset. Starting with a specific target state, our algorithm can iteratively propagate controllability from a known state ball to a new one. This iterative process gradually enlarges the ϵ\epsilon-controllable subset by incorporating new controllable balls until all ϵ\epsilon-controllable states are searched. Besides, a simplified version of MECS is proposed by solving a special shortest path problem, called Floyd expansion with radius fixed (FERF). FERF maintains a fixed radius of all controllable balls based on a mutual controllability assumption of neighboring states. The effectiveness of our method is validated in three datatic control systems whose dynamic behaviors are described by sampled data.

Keywords

Cite

@article{arxiv.2405.09317,
  title  = {Controllability Test for Nonlinear Datatic Systems},
  author = {Yujie Yang and Letian Tao and Likun Wang and Shengbo Eben Li},
  journal= {arXiv preprint arXiv:2405.09317},
  year   = {2024}
}
R2 v1 2026-06-28T16:28:09.047Z