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Very fast motion planning for highly dexterous-articulated robotsDue to the inherent danger of space exploration, the need for greater use of teleoperated and autonomous robotic systems in space-based applications has long been apparent. Autonomous and semi-autonomous robotic devices have been proposed for carrying out routine functions associated with scientific experiments aboard the shuttle and space station. Finally, research into the use of such devices for planetary exploration continues. To accomplish their assigned tasks, all such autonomous and semi-autonomous devices will require the ability to move themselves through space without hitting themselves or the objects which surround them. In space it is important to execute the necessary motions correctly when they are first attempted because repositioning is expensive in terms of both time and resources (e.g., fuel). Finally, such devices will have to function in a variety of different environments. Given these constraints, a means for fast motion planning to insure the correct movement of robotic devices would be ideal. Unfortunately, motion planning algorithms are rarely used in practice because of their computational complexity. Fast methods have been developed for detecting imminent collisions, but the more general problem of motion planning remains computationally intractable. However, in this paper we show how the use of multicomputers and appropriate parallel algorithms can substantially reduce the time required to synthesize paths for dexterous articulated robots with a large number of joints. We have developed a parallel formulation of the Randomized Path Planner proposed by Barraquand and Latombe. We have shown that our parallel formulation is capable of formulating plans in a few seconds or less on various parallel architectures including: the nCUBE2 multicomputer with up to 1024 processors (nCUBE2 is a registered trademark of the nCUBE corporation), and a network of workstations.
Document ID
19950017271
Acquisition Source
Legacy CDMS
Document Type
Conference Paper
Authors
Challou, Daniel J.
(Minnesota Univ. Minneapolis, MN, United States)
Gini, Maria
(Minnesota Univ. Minneapolis, MN, United States)
Kumar, Vipin
(Minnesota Univ. Minneapolis, MN, United States)
Date Acquired
September 6, 2013
Publication Date
October 1, 1994
Publication Information
Publication: JPL, Third International Symposium on Artificial Intelligence, Robotics, and Automation for Space 1994
Subject Category
Cybernetics
Accession Number
95N23691
Funding Number(s)
CONTRACT_GRANT: DAAH04-96-G-0800
CONTRACT_GRANT: DAAL03-89-C-0038
CONTRACT_GRANT: NSF CDA-90-22509
CONTRACT_GRANT: NSF IRI-92-16941
Distribution Limits
Public
Copyright
Work of the US Gov. Public Use Permitted.
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