Computed force control system using functional link radial basis function network with asymmetric membership function for piezo-flexural nanopositioning stage

被引:7
|
作者
Lin, Faa-Jeng [1 ]
Lee, Shih-Yang [1 ]
Chou, Po-Huan [2 ]
机构
[1] Natl Cent Univ, Dept Elect Engn, Chungli 320, Taiwan
[2] Ind Technol Res Inst, Dept Mechatron Control, Hsinchu 310, Taiwan
关键词
adaptive control; force control; fuzzy set theory; learning systems; Lyapunov methods; motion control; nanopositioning; neurocontrollers; nonlinear control systems; radial basis function networks; stability; time-varying systems; computed force control system; functional link radial basis function network; asymmetric membership function; piezo-flexural nanopositioning stage; FLRBFN-AMF; three-dimension motion control; PFNS mechanism; lumped uncertainty; equivalent hysteresis friction force; auxiliary control; reference contours; improved steady-state response; dynamic characteristics; nonlinear system; time varying system; reference trajectories; fuzzy rules; adaptive learning algorithms; Lyapunov stability theorem; SLIDING-MODE CONTROL; NEURAL-NETWORK; HYSTERESIS; IDENTIFICATION; COMPENSATION;
D O I
10.1049/iet-cta.2013.0086
中图分类号
TP [自动化技术、计算机技术];
学科分类号
0812 ;
摘要
A computed force control system using functional link radial basis function network with asymmetric membership function (FLRBFN-AMF) for three-dimension motion control of a piezo-flexural nanopositioning stage (PFNS) is proposed in this study. First, the dynamics of the PFNS mechanism with the introduction of a lumped uncertainty including the equivalent hysteresis friction force are derived. Then, a computed force control system with an auxiliary control is proposed for the tracking of the reference contours with improved steady-state response. Since the dynamic characteristics of the PFNS are non-linear and time varying, a computed force control system using FLRBFN-AMF is designed to improve the control performance for the tracking of various reference trajectories, where the FLRBFN-AMF is employed to estimate a non-linear function including the lumped uncertainty of the PFNS. Moreover, by using the asymmetric membership function, the learning capability of the networks can be upgraded and the number of fuzzy rules can be optimised for the functional link radial basis function network. Furthermore, the adaptive learning algorithms for the training of the parameters of the FLRBFN-AMF online are derived using the Lyapunov stability theorem. Finally, some experimental results for the tracking of various reference contours of the PFNS are given to demonstrate the validity of the proposed control system.
引用
收藏
页码:2128 / 2142
页数:15
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