Hysteresis Compensation of Dynamic Systems Using Neural Networks

被引:0
|
作者
Jang, Jun Oh [1 ]
机构
[1] Uiduk Univ, Dept Software Engn, Gyeongju City 380004, South Korea
来源
关键词
Hysteresis compensation; neural networks; dynamic inversion; velocity control;
D O I
10.32604/iasc.2022.019848
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 neural networks(NN) hysteresis compensator is proposed for dynamic systems. The NN compensator uses the back-stepping scheme for inverting the hysteresis nonlinearity in the feed-forward path. This scheme provides a general step for using NN to determine the dynamic pre-inversion of the reversible dynamic system. A tuning algorithm is proposed for the NN hysteresis compensator which yields a stable closed-loop system. Nonlinear stability proofs are provided to reveal that the tracking error is small. By increasing the gain we can reduce the stability radius to some extent. PI control without hysteresis compensation requires much higher gains to achieve similar performance. It is not easy to guarantee the stability of such highly nonlinear dynamical system if only a PI controller is used. Initializing the NN weights is simple. The initial weights of hidden layer are randomly selected and initial weights of output layer are set to zero. A PI loop with integerted an unity gain feedforward path keeps the system stable until the NN starts learning. Simulation results show its efficacy of the NN hysteresis compensator on a system. This work is applicable to xy table-like precision control system and also shows neural network stability proofs. Moreover, the NN hysteresis compensation can be further extended and applied to dead-zone, backlash, and other actuator nonlinear compensation.
引用
收藏
页码:481 / 494
页数:14
相关论文
共 50 条
  • [41] Adaptive control of system with hysteresis using neural networks
    Li Chuntao1 & Tan Yonghong2 1. Coll. of Automation
    2. Lab of Intelligent Systems and Control Engineering
    Journal of Systems Engineering and Electronics, 2006, (01) : 163 - 167
  • [42] Modeling of hysteresis in piezoelectric actuators using neural networks
    Zhang, Xinliang
    Tan, Yonghong
    Su, Miyong
    MECHANICAL SYSTEMS AND SIGNAL PROCESSING, 2009, 23 (08) : 2699 - 2711
  • [43] Hysteresis Compensation Control for Reluctance Actuator Force Using Neural Network
    Liu, Yu-Ping
    Liu, Kang-Zhi
    Yang, Xiaofeng
    2013 32ND CHINESE CONTROL CONFERENCE (CCC), 2013, : 3354 - 3359
  • [44] Nonlinear Impairment Compensation Using Neural Networks
    Fujisawa, Shinsuke
    Yaman, Fatih
    Batshon, Hussam G.
    Tanio, Massaki
    Ishii, Naoto
    Huang, Chaoran
    de Lima, Thomas Ferreira
    Inada, Yoshihisa
    Prucnal, Paul R.
    Kamiya, Norifumi
    Wang, Ting
    2021 OPTICAL FIBER COMMUNICATIONS CONFERENCE AND EXPOSITION (OFC), 2021,
  • [45] Clipping Noise Compensation with Neural Networks in OFDM Systems
    Sang, Tzu-Hsien
    Xu, You-Cheng
    SIGNALS, 2020, 1 (01):
  • [46] Modeling Dynamic Hysteresis through Fully Connected Cascade Neural Networks
    Laudani, Antonino
    Lozito, Gabriele Maria
    Fulginei, Francesco Riganti
    Salvini, Alessandro
    2016 IEEE 2ND INTERNATIONAL FORUM ON RESEARCH AND TECHNOLOGIES FOR SOCIETY AND INDUSTRY LEVERAGING A BETTER TOMORROW (RTSI), 2016, : 387 - 391
  • [47] Identification of Mechatronic Systems with Dynamic Neural Networks using Prior Knowledge
    Endisch, C.
    Brache, M.
    Endisch, P.
    Schroeder, D.
    Kennel, R.
    WCECS 2009: WORLD CONGRESS ON ENGINEERING AND COMPUTER SCIENCE, VOLS I AND II, 2009, : 859 - 865
  • [48] Adaptive control of nonlinear dynamic systems using θ-adaptive neural networks
    Yu, SH
    Annaswamy, AM
    AUTOMATICA, 1997, 33 (11) : 1975 - 1995
  • [49] Identification and control of dynamic systems using recurrent fuzzy neural networks
    Lee, CH
    Teng, CC
    IEEE TRANSACTIONS ON FUZZY SYSTEMS, 2000, 8 (04) : 349 - 366
  • [50] On the modelling of nonlinear dynamic systems using support vector neural networks
    Chan, WC
    Chan, CW
    Cheung, KC
    Harris, CJ
    ENGINEERING APPLICATIONS OF ARTIFICIAL INTELLIGENCE, 2001, 14 (02) : 105 - 113