Learning locomotion reflexes: A self-supervised neural system for a mobile robot
Abstract
This article is concerned with an artificial neural system for a mobile robot reactive navigation in an unknown, cluttered environment. Reactive navigation is a process of immediately choosing locomotion actions in response to measured spatial situations, while no planning occurs. A task of a presented system is to provide a steering angle signal letting a robot reach a goal while avoiding collisions with obstacles. Basic reactive navigation methods are briefly characterized, special attention is paid to a neural approach to the considered problem. The authors describe the system's architecture and important details of the algorithm. The main parts of the system are: the Fuzzy ART neural self-organizing classifier, performing a perceptual space partitioning, and a neural associative memory, memorizing the system's experience and superposing influences of different behaviors. Tests show that the learning process, starting from zero , is efficient, despite some initial fluctuations of its effectiveness.
A preliminary version of this work has been previously published at the International Workshop on Intelligent Robotic Systems IRS’93, Zakopane, Poland, July 1993.
BibTeX
@article{Dubrawski-1994-121670,author = {Artur Dubrawski and James L. Crowley},
title = {Learning locomotion reflexes: A self-supervised neural system for a mobile robot},
journal = {Robotics and Autonomous Systems},
year = {1994},
month = {April},
volume = {12},
number = {3},
pages = {133 - 142},
}