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Model Predictive Control

Model Predictive Control Fundamentals and Practice

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Model Predictive Control

Fundamentals and Practice

Jay H. Lee | Niket S. Kaisare | Carlos E. García

Technology & Engineering / Quality Control

Master advanced control methods bridging academic theory and industrial practice

Model Predictive Control: Fundamentals and Practice walks engineers through the transition from academic study to industrial application of advanced process control. This comprehensive text connects current model predictive control (MPC) theory to its industrial origins and classical linear control methods, providing the foundations necessary for effective real-world application.

This book’s three-part structure guides readers from basic industrial algorithms through linear systems fundamentals to advanced MPC topics. It clarifies equivalences between MPC and Linear-Quadratic optimal control, and between Moving Horizon Estimation and Kalman filtering. It also includes practical coverage of system identification. The book balances up-to-date theory with hands-on applications and maintains accessibility without sacrificing mathematical rigor.

Readers will learn to:

  • Effectively transition theoretical knowledge into practical control applications for complex processes
  • Understand connections between MPC and classical optimal control methods through clear detailed explanations
  • Master system identification techniques essential for developing accurate process models
  • Explore nonlinear MPC and the innovative Repetitive MPC for advanced real-world control challenges
  • Apply concepts through curated sample problems designed to enhance practical understanding and implementation skills

This is an ideal graduate-level textbook and essential reference for practicing engineers seeking to master advanced control strategies. It balances authoritative theoretical explanation with practical application, preparing readers to solve real-world control problems.

JAY H. LEE, PhD, is the Choon Hoon Cho Chair and Professor of Chemical and Materials Science, Aerospace and Mechanical Engineering, Electrical and Computer Engineering, and Industrial and Systems Engineering at the University of Southern California. He has been an authoritative researcher on model predictive control, optimization, and AI applications.

NIKET S. KAISARE, PhD, is a Professor in the Department of Chemical Engineering at the Indian Institute of Technology - Madras. He specializes in advanced process control, catalytic micro-reactors, and energy systems, and is an expert in model-based advanced process control.

CARLOS E. GARCÍA, PhD, has retired as the Global Discipline Head for Process Control at Shell Oil Company following a 36-year career. He is widely recognized as one of the pioneers of model predictive control and is a member of the Control Process Automation Hall of Fame.


Publication Date: 08 July 2026
Publisher: Wiley
Imprint: Wiley
ISBN-13: 9781394333295
Format: Hardback
Page Count: 560

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