9783319783833-3319783831-Reinforcement Learning for Optimal Feedback Control: A Lyapunov-Based Approach (Communications and Control Engineering)

Reinforcement Learning for Optimal Feedback Control: A Lyapunov-Based Approach (Communications and Control Engineering)

ISBN-13: 9783319783833
ISBN-10: 3319783831
Edition: 1st ed. 2018
Author: Patrick Walters, Joel Rosenfeld, Rushikesh Kamalapurkar, Warren Dixon
Publication date: 2018
Publisher: Springer
Format: Hardcover 309 pages
FREE US shipping
Buy

From $47.70

Book details

ISBN-13: 9783319783833
ISBN-10: 3319783831
Edition: 1st ed. 2018
Author: Patrick Walters, Joel Rosenfeld, Rushikesh Kamalapurkar, Warren Dixon
Publication date: 2018
Publisher: Springer
Format: Hardcover 309 pages

Summary

Reinforcement Learning for Optimal Feedback Control: A Lyapunov-Based Approach (Communications and Control Engineering) (ISBN-13: 9783319783833 and ISBN-10: 3319783831), written by authors Patrick Walters, Joel Rosenfeld, Rushikesh Kamalapurkar, Warren Dixon, was published by Springer in 2018. With an overall rating of 4.5 stars, it's a notable title among other books. You can easily purchase or rent Reinforcement Learning for Optimal Feedback Control: A Lyapunov-Based Approach (Communications and Control Engineering) (Hardcover) from BooksRun, along with many other new and used books and textbooks. And, if you're looking to sell your copy, our current buyback offer is $0.3.

Description

Reinforcement Learning for Optimal Feedback Control develops model-based and data-driven reinforcement learning methods for solving optimal control problems in nonlinear deterministic dynamical systems. In order to achieve learning under uncertainty, data-driven methods for identifying system models in real-time are also developed. The book illustrates the advantages gained from the use of a model and the use of previous experience in the form of recorded data through simulations and experiments. The book’s focus on deterministic systems allows for an in-depth Lyapunov-based analysis of the performance of the methods described during the learning phase and during execution.

To yield an approximate optimal controller, the authors focus on theories and methods that fall under the umbrella of actor–critic methods for machine learning. They concentrate on establishing stability during the learning phase and the execution phase, and adaptive model-based and data-driven reinforcement learning, to assist readers in the learning process, which typically relies on instantaneous input-output measurements.

This monograph provides academic researchers with backgrounds in diverse disciplines from aerospace engineering to computer science, who are interested in optimal reinforcement learning functional analysis and functional approximation theory, with a good introduction to the use of model-based methods. The thorough treatment of an advanced treatment to control will also interest practitioners working in the chemical-process and power-supply industry.

Rate this book Rate this book

We would LOVE it if you could help us and other readers by reviewing the book