Litcius/Paper detail

Radial basis function neural network vibration control of a flexible planar parallel manipulator based on acceleration feedback

Longhuan Yu, Zhi-cheng Qiu, Xianmin Zhang

2020Journal of Vibration and Control15 citationsDOI

Abstract

The self-excited vibration of flexible planar 3-RRR parallel manipulators is converted from the residual vibration after high-speed motion and is a resonance of the strongly coupled and nonlinear electromechanical system. This makes the active vibration control quite a challenging task. In this study, we attempt to adopt the radial basis function neural network control algorithm based on acceleration feedback for suppressing the self-excited vibration and guarantee its position accuracy. The stability of the controlled system is proved by the Lyapunov concept. Self-excited vibration control experiments are conducted near the singular region. Experimental results demonstrate the effectiveness of our adopted controller.

Topics & Concepts

Control theory (sociology)VibrationAccelerationArtificial neural networkLyapunov functionParallel manipulatorVibration controlNonlinear systemController (irrigation)Position (finance)PlanarComputer sciencePhysicsRobotAcousticsControl (management)Artificial intelligenceClassical mechanicsFinanceBiologyComputer graphics (images)AgronomyEconomicsQuantum mechanicsDynamics and Control of Mechanical SystemsIterative Learning Control SystemsRobotic Mechanisms and Dynamics