Abstract

In this paper, an adaptive neural command filtered backstepping scheme is proposed for the pneumatic active suspension with the vertical displacement constraint of sprung mass and actuator saturation. A quarter car model with a pneumatic spring is first fabricated on the basis of thermodynamic theory to describe the dynamic characteristics. To overcome the lumped unknown nonlinearities and enhance the requirement of modeling precision, the radial basis function neural networks (RBFNNs) are proposed to approximate unknown continuous functions caused by the uncertain body mass and other factors of pneumatic spring. To solve the explosion of complexity problem in the traditional backstepping designs, a proposed command filter control is applied by using the Levant differentiators which approach the derivative of the virtual control signals. Nussbaum gain technique is then incorporated into the controller to avoid the problem of the completely unknown control gain and control directions of a pneumatic actuator. In addition, the prescribed performance function (PPF) is suggested to guarantee that the tracking error of the sprung mass displacement does not violate the constraint boundaries. Based on the command filtered backstepping control with PPF, the Lyapunov theorem is then applied to indicate the system stability analysis. Finally, the comparative simulation examples for the pneumatic suspension are given to verify the effectiveness and reliability of the proposed control.

Highlights

  • The pneumatic suspension has been widely used in the automotive industry to improve passenger comfort and vehicle handling stability [1], [2]

  • Based on the aforementioned discussion, we propose a new active suspension system using a pneumatic spring in this research

  • SIMULATION DESCRIPTION the numerical simulation examples for pneumatic active suspension are provided to demonstrate the effectiveness of the proposed method compared with passive suspension, traditional backstepping, command filtered control (CFC), and prescribed performance function (PPF) controllers

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Summary

INTRODUCTION

The pneumatic suspension has been widely used in the automotive industry to improve passenger comfort and vehicle handling stability [1], [2]. Ho et al.: Adaptive Neural Command Filtered Control for Pneumatic Active Suspension disadvantage in the traditional backstepping design process is the explosion of complexity caused by its virtual controller derivatives, which increases computational complexity [15], [16]. Adaptive neural networks-based command filtered backstepping technique has been proposed to improve the performance of the pneumatic active suspension. Command filtered control combined with PPF is proposed to handle the explosion of complexity problem in the traditional backstepping techniques and to guarantee the tracking error of sprung mass displacement. 1. Adaptive neural command filtered backstepping control is proposed for the pneumatic active suspension which considers the problem of actuator saturation and unknown control direction.

PROBLEM FORMULATION
Handling stability
Road holding
ADAPTIVE NEURAL COMMAND FILTERED BACKSTEPPING CONTROL
HANDLING STABILITY AND ROAD HOLDING ANALYSIS
X T PPX γ2
CONCLUSION
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