Parametric identification of output error model for sampled systems with integer‐type time delay subject to load disturbance with unknown dynamics

Abstract In this paper, a bias‐eliminated output error (OE) model identification method is proposed for single‐input‐single‐output sampled systems with integer‐type time delay subject to load disturbance with unknown dynamics. By viewing the load disturbance response as a time‐variant parameter, an...

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Main Authors: Saurabh Pandey, Tao Liu, Qing‐Guo Wang
Format: Article
Language:English
Published: Wiley 2021-10-01
Series:IET Control Theory & Applications
Online Access:https://doi.org/10.1049/cth2.12170
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spelling doaj-fdccbe6dda1e4e4f81f3738370c9920b2021-09-01T12:33:44ZengWileyIET Control Theory & Applications1751-86441751-86522021-10-0115151942195510.1049/cth2.12170Parametric identification of output error model for sampled systems with integer‐type time delay subject to load disturbance with unknown dynamicsSaurabh Pandey0Tao Liu1Qing‐Guo Wang2Key Laboratory of Intelligent Control and Optimization for Industrial Equipment of Ministry of Education Dalian ChinaKey Laboratory of Intelligent Control and Optimization for Industrial Equipment of Ministry of Education Dalian ChinaInstitute of Artificial Intelligence and Future Networks Beijing Normal University at Zhuhai Zhuhai ChinaAbstract In this paper, a bias‐eliminated output error (OE) model identification method is proposed for single‐input‐single‐output sampled systems with integer‐type time delay subject to load disturbance with unknown dynamics. By viewing the load disturbance response as a time‐variant parameter, an iterative least‐squares identification algorithm is established to estimate the rational model parameters together with an integer‐type delay parameter, while the disturbance response could be simultaneously estimated. To overcome the adverse effect of stochastic noise involved with output measurement, an auxiliary model is constructed to predict the noise‐free system response. Moreover, a set of adaptive forgetting factors is introduced to expedite the convergence rate of model parameter estimation and the tracking performance of load disturbance response, respectively. In addition, a monotonically rising profile for evaluating the delay parameter is proposed for implementing the above iterative least‐squares algorithm, in order to avoid the occurrence of multiple local minima of the loss function for model fitting. The asymptotic convergence on estimating the rational model parameters together with the delay parameter is analysed with a proof. An illustrative example is given to demonstrate the effectiveness and advantage of the proposed method.https://doi.org/10.1049/cth2.12170
collection DOAJ
language English
format Article
sources DOAJ
author Saurabh Pandey
Tao Liu
Qing‐Guo Wang
spellingShingle Saurabh Pandey
Tao Liu
Qing‐Guo Wang
Parametric identification of output error model for sampled systems with integer‐type time delay subject to load disturbance with unknown dynamics
IET Control Theory & Applications
author_facet Saurabh Pandey
Tao Liu
Qing‐Guo Wang
author_sort Saurabh Pandey
title Parametric identification of output error model for sampled systems with integer‐type time delay subject to load disturbance with unknown dynamics
title_short Parametric identification of output error model for sampled systems with integer‐type time delay subject to load disturbance with unknown dynamics
title_full Parametric identification of output error model for sampled systems with integer‐type time delay subject to load disturbance with unknown dynamics
title_fullStr Parametric identification of output error model for sampled systems with integer‐type time delay subject to load disturbance with unknown dynamics
title_full_unstemmed Parametric identification of output error model for sampled systems with integer‐type time delay subject to load disturbance with unknown dynamics
title_sort parametric identification of output error model for sampled systems with integer‐type time delay subject to load disturbance with unknown dynamics
publisher Wiley
series IET Control Theory & Applications
issn 1751-8644
1751-8652
publishDate 2021-10-01
description Abstract In this paper, a bias‐eliminated output error (OE) model identification method is proposed for single‐input‐single‐output sampled systems with integer‐type time delay subject to load disturbance with unknown dynamics. By viewing the load disturbance response as a time‐variant parameter, an iterative least‐squares identification algorithm is established to estimate the rational model parameters together with an integer‐type delay parameter, while the disturbance response could be simultaneously estimated. To overcome the adverse effect of stochastic noise involved with output measurement, an auxiliary model is constructed to predict the noise‐free system response. Moreover, a set of adaptive forgetting factors is introduced to expedite the convergence rate of model parameter estimation and the tracking performance of load disturbance response, respectively. In addition, a monotonically rising profile for evaluating the delay parameter is proposed for implementing the above iterative least‐squares algorithm, in order to avoid the occurrence of multiple local minima of the loss function for model fitting. The asymptotic convergence on estimating the rational model parameters together with the delay parameter is analysed with a proof. An illustrative example is given to demonstrate the effectiveness and advantage of the proposed method.
url https://doi.org/10.1049/cth2.12170
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