Paper
22 April 2008 Adaptive collaborative control of highly redundant robots
Author Affiliations +
Abstract
The agility and adaptability of biological systems are worthwhile goals for next-generation unmanned ground vehicles. Management of the requisite number of degrees of freedom, however, remains a challenge, as does the ability of an operator to transfer behavioral intent from human to robot. This paper reviews American Android research funded by NASA, DARPA, and the U.S. Army that attempts to address these issues. Limb coordination technology, an iterative form of inverse kinematics, provides a fundamental ability to control balance and posture independently in highly redundant systems. Goal positions and orientations of distal points of the robot skeleton, such as the hands and feet of a humanoid robot, become variable constraints, as does center-of-gravity position. Behaviors utilize these goals to synthesize full-body motion. Biped walking, crawling and grasping are illustrated, and behavior parameterization, layering and portability are discussed. Robotic skill acquisition enables a show-and-tell approach to behavior modification. Declarative rules built verbally by an operator in the field define nominal task plans, and neural networks trained with verbal, manual and visual signals provide additional behavior shaping. Anticipated benefits of the resultant adaptive collaborative controller for unmanned ground vehicles include increased robot autonomy, reduced operator workload and reduced operator training and skill requirements.
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David A. Handelman "Adaptive collaborative control of highly redundant robots", Proc. SPIE 6962, Unmanned Systems Technology X, 69620Y (22 April 2008); https://doi.org/10.1117/12.782298
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Cited by 1 scholarly publication.
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KEYWORDS
Robots

Neural networks

Control systems

Kinematics

Prototyping

Robotics

Unmanned ground vehicles

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