학술논문

Toward eXplainabile Data-Driven Control (XDDC): The Property-Preserving Framework
Document Type
Periodical
Source
IEEE Control Systems Letters IEEE Control Syst. Lett. Control Systems Letters, IEEE. 8:478-483 2024
Subject
Robotics and Control Systems
Computing and Processing
Components, Circuits, Devices and Systems
Batteries
Mathematical models
Explainable AI
Training
Data models
Hybrid power systems
Closed box
Data driven control
machine learning
identification for control
Language
ISSN
2475-1456
Abstract
As Artificial Intelligence (AI) techniques continue to advance, the need for explainability becomes increasingly crucial, especially in sensitive or safety-critical domains. eXplainable AI (XAI) has emerged to address this need, aiming to enhance transparency in complex models. While XAI has gained traction in mainstream machine learning, its application in data-driven control systems remains relatively unexplored. This letter introduces a novel concept of explainability tailored for data-driven control, allowing one to design feedback loops from data incorporating prior knowledge and preserving important system properties. Through two case studies, we demonstrate the efficacy of this property-preserving framework in direct and indirect data-driven control system design. This letter lays the foundation for further research at the intersection of AI and data-driven control, offering insights into enhancing transparency in complex control systems.