TY - GEN
T1 - Dynamic preisach model and inverse compensation for hysteresis of piezoceramic actuator based on neural networks
AU - Geng, Jie
AU - Liu, Xiangdong
AU - Liao, Xiaozhong
AU - Li, Li
PY - 2010
Y1 - 2010
N2 - The hysteresis nonlinear characteristic of the nanometer positioning system based on piezoceramic actuator decreases the accuracy of the nanometer positioning stage seriously. To compensate the hysteresis nonlinearity and improve the precision of system with hysteresis, the modeling of hysteresis and the corresponding inverse compensation is studied in this paper. First, the dynamic Preisach model for hysteresis is built. Based on the original commom dynamic Preisach model, the information of historical input voltage is introduced into the Preisach function. Then a neural network is used for identification of the model. Secondly, a dynamic inverse Preisach model of hysteresis is built by introducing information of historical displacement to Preisach function and is identified using a neural network. Finally, the dynamic inverse Preisach model based on neural networks is used to compensate the hysteresis nonlinearity. The model is shown through experiments to offer high accuracy under voltage excitations with different frequency. Through the experimental results, the maximum of the absolute error predicted by the new model and inverse model is reduced to 0.1μm and 1V. The nonlinear characteristic is reduced effectively by the inverse compensation with neural networks, with the error below 0.7μm.
AB - The hysteresis nonlinear characteristic of the nanometer positioning system based on piezoceramic actuator decreases the accuracy of the nanometer positioning stage seriously. To compensate the hysteresis nonlinearity and improve the precision of system with hysteresis, the modeling of hysteresis and the corresponding inverse compensation is studied in this paper. First, the dynamic Preisach model for hysteresis is built. Based on the original commom dynamic Preisach model, the information of historical input voltage is introduced into the Preisach function. Then a neural network is used for identification of the model. Secondly, a dynamic inverse Preisach model of hysteresis is built by introducing information of historical displacement to Preisach function and is identified using a neural network. Finally, the dynamic inverse Preisach model based on neural networks is used to compensate the hysteresis nonlinearity. The model is shown through experiments to offer high accuracy under voltage excitations with different frequency. Through the experimental results, the maximum of the absolute error predicted by the new model and inverse model is reduced to 0.1μm and 1V. The nonlinear characteristic is reduced effectively by the inverse compensation with neural networks, with the error below 0.7μm.
KW - Dynamic hysteresis model
KW - Dynamic inverse model
KW - Inverse compensation
KW - Neuron network
UR - http://www.scopus.com/inward/record.url?scp=78650245879&partnerID=8YFLogxK
M3 - Conference contribution
AN - SCOPUS:78650245879
SN - 9787894631046
T3 - Proceedings of the 29th Chinese Control Conference, CCC'10
SP - 446
EP - 451
BT - Proceedings of the 29th Chinese Control Conference, CCC'10
T2 - 29th Chinese Control Conference, CCC'10
Y2 - 29 July 2010 through 31 July 2010
ER -