Litcius/Paper detail

Sampled-Data Model-Free Adaptive Control for Nonlinear Continuous-Time Systems

Ronghu Chi, Wenzhi Cui, Na Lin, Zhongsheng Hou, Biao Huang

2023IEEE Transactions on Cybernetics17 citationsDOI

Abstract

This work aims at presenting a new sampled-data model-free adaptive control (SDMFAC) for continuous-time systems with the explicit use of sampling period and past input and output (I/O) data to enhance control performance. A sampled-data-based dynamical linearization model (SDDLM) is established to address the unknown nonlinearities and nonaffine structure of the continuous-time system, which all the complex uncertainties are compressed into a parameter gradient vector that is further estimated by designing a parameter updating law. By virtue of the SDDLM, we propose a new SDMFAC that not only can use both additional control information and sampling period information to improve control performance but also can restrain uncertainties by including a parameter adaptation mechanism. The proposed SDMFAC is data-driven and thus overcomes the problems caused by model-dependence as in the traditional control design methods. The simulation study is performed to demonstrate the validity of the results.

Topics & Concepts

Control theory (sociology)LinearizationComputer scienceSampling (signal processing)Nonlinear systemSampled data systemsAdaptive controlControl (management)Adaptation (eye)Control systemControl engineeringArtificial intelligenceEngineeringOpticsPhysicsFilter (signal processing)Computer visionElectrical engineeringQuantum mechanicsControl Systems and IdentificationAdaptive Control of Nonlinear SystemsIterative Learning Control Systems