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Journal ArticleDOI

An Inversion-Free Predictive Controller for Piezoelectric Actuators Based on a Dynamic Linearized Neural Network Model

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TLDR
In this article, an inversion-free predictive controller based on a dynamic linearized multilayer feedforward neural network (MFNN) model is proposed to deal with the physical constraints of the input voltage of PEAs.
Abstract
Piezoelectric actuators (PEAs) are widely used in high-precision positioning applications. However, the inherent hysteresis nonlinearity seriously deteriorates the tracking performance of PEAs. To deal with it, the compensation of the hysteresis by using its inverse model (called inversion-based) is the popular method in the literature. One major disadvantage of this method is that the tracking performance of PEAs highly relies on its inverse model. Meanwhile, the computational burden of obtaining the inverse model is overwhelming. In addition, the physical constraints of the input voltage of PEAs is hardly handled by the inversion-based method. This paper proposes an inversion-free predictive controller, which is based on a dynamic linearized multilayer feedforward neural network (MFNN) model. By the proposed method, the inverse model of the inherent hysteresis is not required, and the control law can be obtained in an explicit form. By using the technique of constrained quadratic programming, the proposed method still works well when dealing with the physical constraints of PEAs. Moreover, an error compensation term is introduced to reduce the steady-state error if the dynamic linearized MFNN cannot approximate the PEA's dynamical model satisfactorily. To verify the effectiveness of the proposed method, experiments are conducted on a commercial PEA. The experiment results show that the proposed method has a satisfactory tracking performance even with high-frequency references. Comparisons demonstrate that the proposed method outperforms some existing results.

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Citations
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Journal ArticleDOI

Robot manipulator control using neural networks: A survey

TL;DR: The problem foundation of manipulator control and the theoretical ideas on using neural network to solve this problem are analyzed and then the latest progresses on this topic in recent years are described and reviewed in detail.
Journal ArticleDOI

Neural-Network-Based Nonlinear Model Predictive Control for Piezoelectric Actuators

TL;DR: Experimental results show that the proposed NMPC approach for the displacement tracking problem of PEAs has satisfactory modeling and control performance and avoids the inversion imprecision problem encountered in the widely used inversion-based control algorithms.
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Containment Maneuvering of Marine Surface Vehicles With Multiple Parameterized Paths via Spatial-Temporal Decoupling

TL;DR: In this article, an estimator module using a recurrent neural network is proposed to estimate the unknown kinetics induced by model uncertainty, unmodeled dynamics, and environmental disturbances, and a controller module is developed based on a distributed path maneuvering design and a linear tracking differentiator.
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Continuous Integral Terminal Third-Order Sliding Mode Motion Control for Piezoelectric Nanopositioning System

TL;DR: Wang et al. as mentioned in this paper proposed a continuous third-order integral terminal sliding mode control (3-ITSMC) strategy dedicated to motion tracking control of a piezoelectric-driven nanopositioning system.
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Design and Precision Position/Force Control of a Piezo-Driven Microinjection System

TL;DR: In this paper, a piezo-driven cell injection system with the fusion of force and position control is presented, where an adaptive sliding mode control with parameter estimation scheme is implemented to compensate for the hysteresis nonlinearity and disturbance of the piezoelectric actuator.
References
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Model predictive control: theory and practice—a survey

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TL;DR: This chapter discusses Neural-Network-based Control, a method for automating the design and execution of nonlinear control systems, and its application to Predictive Control.
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