Robust Iterative Learning Control of Industrial Batch Systems Robust Iterative Learning Control of Industrial Batch Systems
Intelligent Control and Learning Systems

Robust Iterative Learning Control of Industrial Batch Systems

Tao Liu and Others
    • €139.99
    • €139.99

Publisher Description

This book offers advanced iterative learning control (ILC) and optimization methods for industrial batch systems, facilitating engineering applications subject to time- and batch-varying process uncertainties that could not be effectively addressed by the existing ILC methods. In particular, advanced ILC designs based on the classical proportional-integral-derivative (PID) control loop are presented for the convenience of application, which could not only realize perfect tracking of the desired output trajectory under repetitive process uncertainties and disturbance, but also maintain robust tracking against time-varying uncertainties and disturbance. Moreover, optimization-based ILC designs are provided to deal with the input and/or output constraints of batch process operation, based on the mode predictive control (MPC) principle for process optimization. Furthermore, predictor-based ILC designs are given to deal with time delay in the process input, state or output as often encountered in practice, which could obtain evidently improved control performance compared to the developed ILC methods mainly devoted to delay-free batch processes. In addition, data-driven ILC methods are also presented for application to batch operation systems with unknown dynamics and time-varying uncertainties. Benchmark examples from the existing literature are used to demonstrate the advantages of the proposed ILC methods, along with real applications to industrial injection molding machines, 6-degree-of-freedom robotic manipulator, and refrigerated/heating circulators of pharmaceutical crystallizers. This book will be a valuable source of information for control engineers and researchers in industrial process control theory and engineering field. It can also be used as an advanced textbook for undergraduate and graduate students in control engineering, process system engineering, chemical engineering, mechanical engineering, electrical engineering, biomedical engineering and industrial automation engineering.

GENRE
Professional & Technical
RELEASED
2025
25 September
LANGUAGE
EN
English
LENGTH
297
Pages
PUBLISHER
Springer Nature Singapore
PROVIDER INFO
Springer Science & Business Media LLC
SIZE
66.7
MB
Customized Bus: User Travel Behavior and Demand Evolution Customized Bus: User Travel Behavior and Demand Evolution
2025
Globale Wissensdiffusion in der Politik sozialer Sicherung Globale Wissensdiffusion in der Politik sozialer Sicherung
2015
Guidance, Navigation, and Control for Spacecraft Rendezvous and Docking: Theory and Methods Guidance, Navigation, and Control for Spacecraft Rendezvous and Docking: Theory and Methods
2021
China’s Urban Construction Land Development China’s Urban Construction Land Development
2019
Smart Energy Smart Energy
2017
Industrial Process Identification and Control Design Industrial Process Identification and Control Design
2011
Discrete-Time Adaptive Iterative Learning Control Discrete-Time Adaptive Iterative Learning Control
2022
Data-Driven Iterative Learning Control for Discrete-Time Systems Data-Driven Iterative Learning Control for Discrete-Time Systems
2022
Data-Driven Fault Detection and Reasoning for Industrial Monitoring Data-Driven Fault Detection and Reasoning for Industrial Monitoring
2022
Complex-Valued Neural Networks Systems with Time Delay Complex-Valued Neural Networks Systems with Time Delay
2022
Disagreement Behavior Analysis of Signed Networks Disagreement Behavior Analysis of Signed Networks
2022
Advanced Optimal Control and Applications Involving Critic Intelligence Advanced Optimal Control and Applications Involving Critic Intelligence
2023