Because an electric scooter driven by permanent magnet synchronous motor (PMSM) servo system has the unknown nonlinearity and the time-varying characteristics, its accurate dynamic model is difficult to establish for the design of the linear controller in whole system. In order to conquer this difficulty and raise robustness, a novel adaptive recurrent Legendre neural network (NN) control system, which has fast convergence and provide high accuracy, is proposed to control for PMSM servo-drive electric scooter under external torque disturbance in this study. The novel adaptive recurrent Legendre NN control system consists of a recurrent Legendre NN control with adaptation law and a remunerated control with estimation law. In addition, the online parameter tuning methodology of the recurrent Legendre NN control and the estimation law of the remunerated control can be derived by using the Lyapunov stability theorem. Finally, comparative studies are demonstrated by experimental results in order to show the effectiveness of the proposed control scheme.
Skip Nav Destination
Article navigation
January 2015
Research-Article
Novel Adaptive Recurrent Legendre Neural Network Control for PMSM Servo-Drive Electric Scooter
Chih-Hong Lin
Chih-Hong Lin
Department of Electrical Engineering,
e-mail: jhlin@nuu.edu.tw
National United University
,No. 1, Lienda, Kung-Jing Li
,Miaoli 36003
, Taiwan
e-mail: jhlin@nuu.edu.tw
Search for other works by this author on:
Chih-Hong Lin
Department of Electrical Engineering,
e-mail: jhlin@nuu.edu.tw
National United University
,No. 1, Lienda, Kung-Jing Li
,Miaoli 36003
, Taiwan
e-mail: jhlin@nuu.edu.tw
Contributed by the Dynamic Systems Division of ASME for publication in the JOURNAL OF DYNAMIC SYSTEMS, MEASUREMENT, AND CONTROL. Manuscript received October 24, 2013; final manuscript received April 21, 2014; published online August 28, 2014. Assoc. Editor: Jongeun Choi.
J. Dyn. Sys., Meas., Control. Jan 2015, 137(1): 011010 (12 pages)
Published Online: August 28, 2014
Article history
Received:
October 24, 2013
Revision Received:
April 21, 2014
Citation
Lin, C. (August 28, 2014). "Novel Adaptive Recurrent Legendre Neural Network Control for PMSM Servo-Drive Electric Scooter." ASME. J. Dyn. Sys., Meas., Control. January 2015; 137(1): 011010. https://doi.org/10.1115/1.4027507
Download citation file:
Get Email Alerts
Cited By
Design and Experiment of a Prescribed-Time Trajectory Tracking Controller for a 7-DOF Robot Manipulator
J. Dyn. Sys., Meas., Control (October 2022)
A Novel Gegenbauer Wavelet-Based Approach for Stability and Surface Location Error Analyses of Milling Process
J. Dyn. Sys., Meas., Control (October 2022)
LED-Based Optical Localization of a Robot in Continuous Motion Using Dynamic Prediction
J. Dyn. Sys., Meas., Control
An Analytic Solution to the Inverse Dynamics of an Energy Harvesting Tethered Kite
J. Dyn. Sys., Meas., Control
Related Articles
Improving Contouring Accuracy of NC/CNC Systems With Additional Velocity Feed Forward Loop
J. Eng. Ind (August,1986)
Comparative Dynamic Control of SynRM Servodrive Continuously Variable Transmission System Using Blend Amend Recurrent Gegenbauer-Functional-Expansions Neural Network Control and Altered Artificial Bee Colony Optimization
J. Dyn. Sys., Meas., Control (May,2017)
A Task-Space Tracking Control Approach for Duct Cleaning Robot Based on Fuzzy Wavelet Neural Network
J. Dyn. Sys., Meas., Control (November,2019)
Model-Independent Control of a Flexible-Joint Robot Manipulator
J. Dyn. Sys., Meas., Control (July,2009)
Related Proceedings Papers
Related Chapters
A Novel Approach for LFC and AVR of an Autonomous Power Generating System
International Conference on Mechanical Engineering and Technology (ICMET-London 2011)
A Semi-Adaptive Fractional Order PID Control Strategy for a Certain Gun Control Equipment
International Conference on Instrumentation, Measurement, Circuits and Systems (ICIMCS 2011)
Spiking Neural Networks on Self-Updating System-on-Chip for Autonomous Control
International Conference on Mechanical Engineering and Technology (ICMET-London 2011)