A clear, intuitive, and practical introduction to one of the most powerful control techniques in modern engineering.
Model Predictive Control (MPC) is everywhere—running chemical plants, stabilizing drones, optimizing HVAC systems, steering autonomous cars, and shaping the future of robotics and energy systems. Yet for many engineers, MPC still feels intimidating: too much math, too many assumptions, too many black‑box solvers.
This book fixes that.
Model Predictive Control Made Easy takes you from intuition to implementation with clarity rarely found in technical literature. Instead of drowning you in equations, it builds understanding step by step—starting with how you drive a car, and ending with how to design real‑time controllers that respect constraints, anticipate the future, and remain robust in the face of uncertainty.
You’ll learn:
- Why MPC works through simple, memorable analogies
- How to build prediction models using state‑space systems
- How horizons, costs, and constraints shape controller behavior
- How to tune Q, R, and terminal costs without guesswork
- How to handle actuator limits, rate limits, and safety constraints
- How to design offset‑free MPC using disturbance models
- How robust MPC and constraint tightening keep real systems safe
- Why MPC reduces to LQR when constraints disappear—and why that matters
Every chapter is written to be read by real engineers, not mathematicians. The explanations are crisp. The examples are practical. The insights come from real-world experience, not abstract theory.
Whether you’re working in robotics, automotive systems, process control, aerospace, or embedded systems, this book gives you the mental model and practical tools to design MPC controllers with confidence.
If you’ve ever wanted MPC explained simply, clearly, and correctly—this is the book.