Abstract

This paper proposes a novel passivity cascade technique (PCT)-based control for nonlinear inverted pendulum systems. Its main objective is to stabilize the pendulum’s upward states despite uncertainties and exogenous disturbances. The proposed framework combines the estimation properties of radial basis function neural networks (RBFNs) with the passivity attributes of the cascade control framework. The unknown terms of the nonlinear system are estimated using an RBFN approximator. The performance of the closed-loop system is further enhanced by using the integral of angular position as a virtual state variable. The lumped uncertainties (NN—Neural Network approximation, external disturbances and parametric uncertainty) are compensated for by adding a robustifying adaptive rule-based signal to the PCT-based control. The boundedness of the states is confirmed using the passivity theorem. The performance of the proposed approach was assessed using a nonlinear inverted pendulum system under both nominal and disturbed conditions.

Highlights

  • Inverted pendulums have long been considered to be interesting case studies for nonlinear control design

  • Various kinds of inverted pendulum systems can be found in the literature

  • Motivated by the above discussion, we propose a new robust passivity cascade technique, (PCT)-based control for a nonlinear inverted pendulum system subject to uncertainties

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Summary

Introduction

Inverted pendulums have long been considered to be interesting case studies for nonlinear control design. Various control techniques were proposed in the literature for the control and stabilization of inverted pendulum. Composition of passivity property and proposed controllers was reported in the literature in order to construct a robust passivity-based controller [18,19,20,21,22]. This control technique was seldom considered for the inverted pendulum [23]. Motivated by the above discussion, we propose a new robust passivity cascade technique, (PCT)-based control for a nonlinear inverted pendulum system subject to uncertainties.

RBFN Approximator
Passivity Theorem
Proposed PCT-Based Control Design
State-Space Model of the System
The PCT-Based Control
Results
Simulation Results
As shown in Figure
Figures the
Conclusion
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