Litcius/Paper detail

Global Prescribed Performance Control for Strict Feedback Systems Pursuing Uncertain Target

Zhuwu Shao, Yujuan Wang, Xiang Chen

2022IEEE Transactions on Neural Networks and Learning Systems27 citationsDOI

Abstract

In this work, an online solution for reconstructing and predicting the uncertain target trajectory in real-time is proposed based on general regression neural network (GRNN). On this basis, an adaptive tracking control scheme guaranteeing prescribed performance is suggested for a class of strict-feedback systems with unknown control directions. In contrast to existing trajectory reconstruction methods, the one presented in this note does not require prior modeling of the uncertain target or offline training. Contrary to most current state-of-the-art prescribed performance control (PPC) technology, a novel time-varying scaling function and its corresponding translation function are introduced such that no strict constraints on initial conditions are needed, that is, global stability is achieved. The proposed control scheme allows the output of the system to chase the predicted value of the uncertain target, and the tracking error converges to a prescribed small set within a preassigned time, despite unmatched uncertainties and unknown control directions. The benefits of the proposed control scheme are confirmed by numerical simulations.

Topics & Concepts

Control theory (sociology)TrajectoryComputer scienceStability (learning theory)Scheme (mathematics)Tracking errorAdaptive controlControl (management)Function (biology)Set (abstract data type)Artificial neural networkTracking (education)Mathematical optimizationMathematicsArtificial intelligenceMachine learningBiologyProgramming languagePsychologyPedagogyAstronomyPhysicsMathematical analysisEvolutionary biologyAdaptive Control of Nonlinear SystemsAdvanced Control Systems OptimizationIterative Learning Control Systems
Global Prescribed Performance Control for Strict Feedback Systems Pursuing Uncertain Target | Litcius