Artículo
Learning obstacle avoidance with an operant behavioral model
Fecha de publicación:
2004
Editorial:
Massachusetts Institute of Technology
Revista:
Artificial Life
ISSN:
1064-5462
e-ISSN:
1530-9185
Idioma:
Inglés
Tipo de recurso:
Artículo publicado
Clasificación temática:
Resumen
Artificial intelligence researchers have been attracted by the idea of having robots learn how to accomplish a task, rather than being told explicitly. Reinforcement learning has been proposed as an appealing framework to be used in controlling mobile agents. Robot learning research, as well as research in biological systems, face many similar problems in order to display high flexibility in performing a variety of tasks. In this work, the controlling of a vehicle in an avoidance task by a previously developed operant learning model (a form of animal learning) is studied. An environment in which a mobile robot with proximity sensors has to minimize the punishment for colliding against obstacles is simulated. The results were compared with the Q-Learning algorithm, and the proposed model had better performance. In this way a new artificial intelligence agent inspired by neurobiology, psychology, and ethology research is proposed.
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Articulos(IBYME)
Articulos de INST.DE BIOLOGIA Y MEDICINA EXPERIMENTAL (I)
Articulos de INST.DE BIOLOGIA Y MEDICINA EXPERIMENTAL (I)
Citación
Gutnisky, D. A.; Zanutto, Bonifacio Silvano; Learning obstacle avoidance with an operant behavioral model; Massachusetts Institute of Technology; Artificial Life; 10; 1; -1-2004; 65-81
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