Optimal fractional-order predictive PI controllers : for process control applications with additional filtering / Arun Mozhi Devan Panneer Selvam, Fawnizu Azmadi Hussin, Rosdiazli Ibrahim, Kishore Bingi, Nagarajapandian M.
2022
QA402.7
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Title
Optimal fractional-order predictive PI controllers : for process control applications with additional filtering / Arun Mozhi Devan Panneer Selvam, Fawnizu Azmadi Hussin, Rosdiazli Ibrahim, Kishore Bingi, Nagarajapandian M.
ISBN
9789811965173 (electronic bk.)
981196517X (electronic bk.)
9789811965166
981196517X (electronic bk.)
9789811965166
Published
Singapore : Springer, 2022.
Language
English
Description
1 online resource (xviii, 146 pages) : illustrations (some color).
Item Number
10.1007/978-981-19-6517-3 doi
Call Number
QA402.7
Dewey Decimal Classification
515/.83
Summary
This book presents the study to design, develop, and implement improved PI control techniques using dead-time compensation, structure enhancements, learning functions and fractional ordering parameters. Two fractional-order PI controllers are proposed and designed: fractional-order predictive PI and hybrid iterative learning based fractional-order predictive PI controller. Furthermore, the proposed fractional-order control strategies and filters are simulated over first- and second-order benchmark process models and further validated using the real-time experimentation of the pilot pressure process plant. In this book, five chapters are structured with a proper sequential flow of details to provide a better understanding for the readers. A general introduction to the controllers, filters and optimization techniques is presented in Chapter 1. Reviews of the PI controllers family and their modifications are shown in the initial part of Chapter 2, followed by the development of the proposed fractional-order predictive PI (FOPPI) controller with dead-time compensation ability. In the first part of chapter 3, a review of the PI based iterative learning controllers, modified structures of the ILC and their modifications are presented. Then, the design of the proposed hybrid iterative learning controller-based fractional-order predictive PI controller based on the current cyclic feedback structure is presented. Lastly, the results and discussion of the proposed controller on benchmark process models and the real-time experimentation of the pilot pressure process plant are given. Chapter 4 presents the development of the proposed filtering techniques and their performance comparison with the conventional methods. Chapter 5 proposes the improvement of the existing sine cosine algorithm (SCA) and arithmetic optimization algorithm (AOA) to form a novel arithmetic-trigonometric optimization algorithm (ATOA) to accelerate the rate of convergence in lesser iterations with mitigation towards getting caught in the same local position. The performance analysis of the optimization algorithm will be carried out on benchmark test functions and the real-time pressure process plant.
Bibliography, etc. Note
Includes bibliographical references and index.
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Source of Description
Online resource; title from PDF title page (SpringerLink, viewed November 9, 2022).
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Studies in infrastructure and control.
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Table of Contents
Introduction
Fractional-order Predictive PI Controller for Dead-time Process Plants
Hybrid Iterative Learning Controller Based Fractional-order Predictive PI Controller
Development of Proposed Fractional-order Filtering Techniques
Development of the Proposed Arithmetic-Trigonometric Optimization Algorithm
Appendix.
Fractional-order Predictive PI Controller for Dead-time Process Plants
Hybrid Iterative Learning Controller Based Fractional-order Predictive PI Controller
Development of Proposed Fractional-order Filtering Techniques
Development of the Proposed Arithmetic-Trigonometric Optimization Algorithm
Appendix.