DocumentCode :
1209265
Title :
Using sensor habituation in mobile robots to reduce oscillatory movements in narrow corridors
Author :
Chang, Carolina
Author_Institution :
Artificial Intelligence Group, Univ. Simon Bolivar, Venezuela
Volume :
16
Issue :
6
fYear :
2005
Firstpage :
1582
Lastpage :
1589
Abstract :
Habituation is a form of nonassociative learning observed in a variety of species of animals. Arguably, it is the simplest form of learning. Nonetheless, the ability to habituate to certain stimuli implies plastic neural systems and adaptive behaviors. This paper describes how computational models of habituation can be applied to real robots. In particular, we discuss the problem of the oscillatory movements observed when a Khepera robot navigates through narrow hallways using a biologically inspired neurocontroller. Results show that habituation to the proximity of the walls can lead to smoother navigation. Habituation to sensory stimulation to the sides of the robot does not interfere with the robot´s ability to turn at dead ends and to avoid obstacles outside the hallway. This paper shows that simple biological mechanisms of learning can be adapted to achieve better performance in real mobile robots.
Keywords :
adaptive control; collision avoidance; mobile robots; navigation; neurocontrollers; optical sensors; unsupervised learning; Khepera robot; Neurocontroller; adaptive behavior; biological mechanism; computational model; mobile robot; neural system; non-associative learning; obstacle avoidance; oscillatory movement; sensor habituation; sensory stimulation; Adaptive systems; Animals; Biological system modeling; Biology computing; Computational modeling; Mobile robots; Navigation; Neurocontrollers; Plastics; Robot sensing systems; Habituation; mobile robots; robot learning; unsupervised neural networks; Algorithms; Animals; Artificial Intelligence; Biomimetics; Habituation, Psychophysiologic; Movement; Oscillometry; Pattern Recognition, Automated; Robotics; Transducers;
fLanguage :
English
Journal_Title :
Neural Networks, IEEE Transactions on
Publisher :
ieee
ISSN :
1045-9227
Type :
jour
DOI :
10.1109/TNN.2005.853714
Filename :
1528534
Link To Document :
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