Title :
Evolving a modular neural network-based behavioral fusion using extended VFF and environment classification for mobile robot navigation
Author :
Im, Kwang-Young ; Oh, Se-young ; Han, Seong-Joo
Author_Institution :
Inst. of Intelligent Syst., Samsung Electron. Ltd., Suwon, South Korea
fDate :
8/1/2002 12:00:00 AM
Abstract :
A local navigation algorithm for mobile robots is proposed that combines rule-based and neural network approaches. First, the extended virtual force field (EVFF), an extension of the conventional virtual force field (VFF), implements a rule base under the potential field concept. Second, the neural network performs fusion of the three primitive behaviors generated by EVFF. Finally, evolutionary programming is used to optimize the weights of the neural network with an arbitrary form of objective function. Furthermore, a multinetwork version of the fusion neural network has been proposed that lends itself to not only an efficient architecture but also a greatly enhanced generalization capability. Herein, the global path environment has been classified into a number of basic local path environments to which each module has been optimized with higher resolution and better generalization. These techniques have been verified through computer simulation under a collection of complex and varying environments
Keywords :
evolutionary computation; mobile robots; navigation; neural nets; virtual reality; basic local path environments; computer simulation; environment classification; evolutionary learning; evolutionary programming; extended VFF; extended virtual force field; fusion neural network; generalization capability; global path environment; local navigation algorithm; mobile robot navigation; modular neural network-based behavioral fusion; modular neural networks; multinetwork version; neural network approaches; potential field concept; primitive behaviors; rule-based approaches; varying environments; Computer architecture; Computer simulation; Educational technology; Functional programming; Fusion power generation; Genetic programming; Intelligent robots; Mobile robots; Navigation; Neural networks;
Journal_Title :
Evolutionary Computation, IEEE Transactions on
DOI :
10.1109/TEVC.2002.802440