9780262511575-0262511576-Model-Based Control of a Robot Manipulator (MIT press series in Artificial Intelligence)

Model-Based Control of a Robot Manipulator (MIT press series in Artificial Intelligence)

ISBN-13: 9780262511575
ISBN-10: 0262511576
Author: John Hollerbach, Christopher G. Atkeson, Chae H. H An
Publication date: 1988
Publisher: MIT Press
Format: Paperback 253 pages
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Book details

ISBN-13: 9780262511575
ISBN-10: 0262511576
Author: John Hollerbach, Christopher G. Atkeson, Chae H. H An
Publication date: 1988
Publisher: MIT Press
Format: Paperback 253 pages

Summary

Model-Based Control of a Robot Manipulator (MIT press series in Artificial Intelligence) (ISBN-13: 9780262511575 and ISBN-10: 0262511576), written by authors John Hollerbach, Christopher G. Atkeson, Chae H. H An, was published by MIT Press in 1988. With an overall rating of 4.3 stars, it's a notable title among other books. You can easily purchase or rent Model-Based Control of a Robot Manipulator (MIT press series in Artificial Intelligence) (Paperback) 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 $0.37.

Description

Model-Based Control of a Robot Manipulator presents the first integrated treatment of many of the most important recent developments in using detailed dynamic models of robots to improve their control. The authors' work on automatic identification of kinematic and dynamic parameters, feedforward position control, stability in force control, and trajectory learning has significant implications for improving performance in future robot systems. All of the main ideas discussed in this book have been validated by experiments on a direct-drive robot arm. The book addresses the issues of building accurate robot models and of applying them for high performance control. It first describes how three sets of models - the kinematic model of the links and the inertial models of the links and of rigid-body loads - can be obtained automatically using experimental data. These models are then incorporated into position control, single trajectory learning, and force control. The MIT Serial Link Direct Drive Arm, on which these models were developed and applied to control, is one of the few manipulators currently suitable for testing such concepts.

Contents
Introduction • Direct Drive Arms • Kinematic Calibration • Estimation of Load Inertial Parameters • Estimation of Link Inertial Parameters • Feedforward and Computed Torque Control • Model-Based Robot Learning • Dynamic Stability Issues in Force Control • Kinematic Stability Issues in Force Control • Conclusion

Model-Based Control of a Robot Manipulator is included in the Artificial Intelligence Series edited by Patrick Winston and Michael Brady.

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