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Sliding mode control of a piezoelectric actuator with neural network compensating rate-dependent hysteresis

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conference contribution
posted on 2024-11-14, 09:02 authored by Shuanghe Yu, Bijan Shirinzadeh, Gursel AliciGursel Alici, Julian Smith
Piezoelectric actuators (PEA) are the fundamental elements for high-precision high-speed positioning/tracking task in many nanotechnology applications. However, the intrinsic hysteresis observed in PEAs has impaired their potential, specially, the motion accuracy. In this paper, the complicated nonlinear dynamics of PEA including hysteresis, creep, drift and time-delay etc. are treated as a black-box system exhibited as rate-dependent hysteresis. The multi-valued hysteresis is analyzed as a single-valued function so that a neural network (NN) can be built to model the hysteresis and its inversion. A sliding mode controller (SMC) augmented with inverse hysteresis model is then developed to compensate the hysteretic behavior, modeling error and disturbance to improve the positioning/tracking stability and accuracy. The effectiveness of this algorithm experimentally verified through the actual tracking control of a PEA.

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Citation

Shirinzadeh, B., Smith, J., Alici, G. Yu, S. 2005, Sliding mode control of a piezoelectric actuator with neural network compensating rate-dependent hysteresis, IEEE International Conference on Robotics and Biomimetics, pp. 3652-3656, 5-9 July, IEEE, Shatin, China.

Parent title

Proceedings - IEEE International Conference on Robotics and Automation

Volume

2005

Pagination

3652-3656

Language

English

RIS ID

13846

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