Litcius/Paper detail

Guaranteeing Global Stability for Neuro-Adaptive Control of Unknown Pure-Feedback Nonaffine Systems via Barrier Functions

Yonghua Liu, Yufa Liu, Chun‐Yi Su, Yang Liu, Qi Zhou, Renquan Lu

2021IEEE Transactions on Neural Networks and Learning Systems15 citationsDOI

Abstract

Most existing approximation-based adaptive control (AAC) approaches for unknown pure-feedback nonaffine systems retain a dilemma that all closed-loop signals are semiglobally uniformly bounded (SGUB) rather than globally uniformly bounded (GUB). To achieve the GUB stability result, this article presents a neuro-adaptive backstepping control approach by blending the mean value theorem (MVT), the barrier Lyapunov functions (BLFs), and the technique of neural approximation. Specifically, we first resort the MVT to acquire the intermediate and actual control inputs from the nonaffine structures directly. Then, neural networks (NNs) are adopted to approximate the unknown nonlinear functions, in which the compact sets for maintaining the approximation capabilities of NNs are predetermined actively through the BLFs. It is shown that, with the developed neuro-adaptive control scheme, global stability of the resulting closed-loop system is ensured. Simulations are conducted to verify and clarify the developed approach.

Topics & Concepts

BacksteppingControl theory (sociology)Bounded functionArtificial neural networkLyapunov stabilityAdaptive controlNonlinear systemStability (learning theory)Lyapunov functionComputer scienceUniform boundednessAdaptive systemMathematicsControl (management)Artificial intelligencePhysicsMathematical analysisQuantum mechanicsMachine learningAdaptive Control of Nonlinear SystemsAdaptive Dynamic Programming ControlIterative Learning Control Systems