PD-Type Iterative Learning Control With Adaptive Learning Gains for High-Performance Load Torque Tracking of Electric Dynamic Load Simulator

To realize the high-performance load torque tracking of an electric dynamic load simulator system with random measurement noises and strong position disturbances, a PD-type iterative learning control (ILC) algorithm with adaptive learning gains is proposed in this paper. With the principle of system...

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Main Authors: Mingguang Dai, Rong Qi, Yiyun Zhao, Yang Li
Format: Article
Language:English
Published: MDPI AG 2021-03-01
Series:Electronics
Subjects:
Online Access:https://www.mdpi.com/2079-9292/10/7/811
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spelling doaj-195bb7073b5a490e8365b0d838fc02c32021-03-29T23:05:22ZengMDPI AGElectronics2079-92922021-03-011081181110.3390/electronics10070811PD-Type Iterative Learning Control With Adaptive Learning Gains for High-Performance Load Torque Tracking of Electric Dynamic Load SimulatorMingguang Dai0Rong Qi1Yiyun Zhao2Yang Li3School of Automation, Northwestern Polytechnical University, Xi’an 710129, ChinaSchool of Automation, Northwestern Polytechnical University, Xi’an 710129, ChinaSchool of Automation, Northwestern Polytechnical University, Xi’an 710129, ChinaSchool of Automation, Northwestern Polytechnical University, Xi’an 710129, ChinaTo realize the high-performance load torque tracking of an electric dynamic load simulator system with random measurement noises and strong position disturbances, a PD-type iterative learning control (ILC) algorithm with adaptive learning gains is proposed in this paper. With the principle of system analyzing, a nonlinear discrete state-space model is established. The adaptive learning gains is used to suppress the effects of periodic disturbances and random measurement noises on the load torque tracking performance. A traditional PD feedback controller in parallel with the proposed ILC is designed to stabilize the system and render the ILC converge quickly. The convergence analysis of the proposed control method ensures the stability of the system. Compared with the fixed learning gains, the experiment results show that the proposed control method has better load torque tracking performance and can effectively suppress the adverse effects of periodic and aperiodic disturbances on tracking accuracy.https://www.mdpi.com/2079-9292/10/7/811electrical dynamic load simulatoriterative learning controladaptive learning gainsPD-typerandom measurement noisesperiodic disturbances
collection DOAJ
language English
format Article
sources DOAJ
author Mingguang Dai
Rong Qi
Yiyun Zhao
Yang Li
spellingShingle Mingguang Dai
Rong Qi
Yiyun Zhao
Yang Li
PD-Type Iterative Learning Control With Adaptive Learning Gains for High-Performance Load Torque Tracking of Electric Dynamic Load Simulator
Electronics
electrical dynamic load simulator
iterative learning control
adaptive learning gains
PD-type
random measurement noises
periodic disturbances
author_facet Mingguang Dai
Rong Qi
Yiyun Zhao
Yang Li
author_sort Mingguang Dai
title PD-Type Iterative Learning Control With Adaptive Learning Gains for High-Performance Load Torque Tracking of Electric Dynamic Load Simulator
title_short PD-Type Iterative Learning Control With Adaptive Learning Gains for High-Performance Load Torque Tracking of Electric Dynamic Load Simulator
title_full PD-Type Iterative Learning Control With Adaptive Learning Gains for High-Performance Load Torque Tracking of Electric Dynamic Load Simulator
title_fullStr PD-Type Iterative Learning Control With Adaptive Learning Gains for High-Performance Load Torque Tracking of Electric Dynamic Load Simulator
title_full_unstemmed PD-Type Iterative Learning Control With Adaptive Learning Gains for High-Performance Load Torque Tracking of Electric Dynamic Load Simulator
title_sort pd-type iterative learning control with adaptive learning gains for high-performance load torque tracking of electric dynamic load simulator
publisher MDPI AG
series Electronics
issn 2079-9292
publishDate 2021-03-01
description To realize the high-performance load torque tracking of an electric dynamic load simulator system with random measurement noises and strong position disturbances, a PD-type iterative learning control (ILC) algorithm with adaptive learning gains is proposed in this paper. With the principle of system analyzing, a nonlinear discrete state-space model is established. The adaptive learning gains is used to suppress the effects of periodic disturbances and random measurement noises on the load torque tracking performance. A traditional PD feedback controller in parallel with the proposed ILC is designed to stabilize the system and render the ILC converge quickly. The convergence analysis of the proposed control method ensures the stability of the system. Compared with the fixed learning gains, the experiment results show that the proposed control method has better load torque tracking performance and can effectively suppress the adverse effects of periodic and aperiodic disturbances on tracking accuracy.
topic electrical dynamic load simulator
iterative learning control
adaptive learning gains
PD-type
random measurement noises
periodic disturbances
url https://www.mdpi.com/2079-9292/10/7/811
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AT rongqi pdtypeiterativelearningcontrolwithadaptivelearninggainsforhighperformanceloadtorquetrackingofelectricdynamicloadsimulator
AT yiyunzhao pdtypeiterativelearningcontrolwithadaptivelearninggainsforhighperformanceloadtorquetrackingofelectricdynamicloadsimulator
AT yangli pdtypeiterativelearningcontrolwithadaptivelearninggainsforhighperformanceloadtorquetrackingofelectricdynamicloadsimulator
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