Controllability Test for Nonlinear Datatic Systems
Yujie Yang, Letian Tao, Likun Wang, Shengbo Eben Li

TL;DR
This paper introduces a novel data-driven controllability test for nonlinear systems using a new concept called epsilon-controllability, along with algorithms to identify controllable states from limited data points.
Contribution
It proposes a general controllability testing method for nonlinear data-driven systems and introduces algorithms to expand controllable regions based on data samples.
Findings
Validated on three datatic control systems
Demonstrated effectiveness of the MECS algorithm
Showed feasibility of epsilon-controllability concept
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 -controllability, which extends the definition from point-to-point form to point-to-region form. Accordingly, our focus…
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Taxonomy
TopicsAdvanced Control Systems Optimization · Control Systems and Identification · Fault Detection and Control Systems
MethodsFocus
