Many robot manipulator tasks are difficult to model explicitly and it is difficult to design and program automatic control algorithms for them. The development, improvement, and application of learning techniques taking advantage of sensory information would enable the acquisition of new robot skills and avoid some of the difficulties of explicit programming. In this paper we use a reinforcement learning approach for on-line generation of skills for control of robot manipulator systems. Instead of generating skills by explicit programming of a perception to action mapping they are generated by trial and error learning, guided by a performance evaluation feedback function. The resulting system may be seen as an anticipatory system that constructs an internal representation model of itself and of its environment. This enables it to identify its current situation and to generate corresponding appropriate commands to the system in order to perform the required skill. The method was applied to the problem of learning a force control skill in which the tool-tip of a robot manipulator must be moved from a free space situation, to a contact state with a compliant surface and having a constant interaction force.
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9 July 1998
The first international conference on computing anticipatory systems
11-15 Aug 1997
Liege (Belgium)
Research Article|
July 09 1998
Connectionist reinforcement learning of robot control skills Available to Purchase
Rui Araújo;
Rui Araújo
Institute of Systems and Robotics (ISR)
Electrical Engineering Department, University of Coimbra; Pólo II; Pinhal de Marrocos; 3030 Coimbra-Portugal
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Urbano Nunes;
Urbano Nunes
Institute of Systems and Robotics (ISR)
Electrical Engineering Department, University of Coimbra; Pólo II; Pinhal de Marrocos; 3030 Coimbra-Portugal
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A. T. de Almeida
A. T. de Almeida
Institute of Systems and Robotics (ISR)
Electrical Engineering Department, University of Coimbra; Pólo II; Pinhal de Marrocos; 3030 Coimbra-Portugal
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Rui Araújo
,
Urbano Nunes
,
A. T. de Almeida
,
Institute of Systems and Robotics (ISR)
AIP Conf. Proc. 437, 364–374 (1998)
Citation
Rui Araújo, Urbano Nunes, A. T. de Almeida; Connectionist reinforcement learning of robot control skills. AIP Conf. Proc. 9 July 1998; 437 (1): 364–374. https://doi.org/10.1063/1.56336
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