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Evolutionary Fuzzy System for Architecture Control in a Constructive Neural Network

Rodrigo Calvo, Maurício Figueiredo, Eric Aislan Antonelo

Year
2005
Citations
2

Abstract

This work describes an evolutionary system to control the growth of a constructive neural network for autonomous navigation. A classifier system generates Takagi-Sugeno fuzzy rules and controls the architecture of a constructive neural network. The performance of the mobile robot guides the evolutionary learning mechanism. Experiments show the efficiency of the classifier fuzzy system for analyzing if it is worth inserting a new neuron into the architecture.

Keywords

ConstructiveComputer scienceArtificial intelligenceArtificial neural networkArchitectureFuzzy logicFuzzy control systemMobile robotNeuro-fuzzyIntelligent control

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