Home /Research /Virus-Evolutionary Genetic Algorithm for Fuzzy Spiking Neural Network of A Mobile Robot in A Dynamic Environment
LEARNING

Virus-Evolutionary Genetic Algorithm for Fuzzy Spiking Neural Network of A Mobile Robot in A Dynamic Environment

Hironobu Sasaki, Naoyuki Kubota

Year
2006
Citations
5

Abstract

Recently, embodied cognition for robotics has been discussed, and various types of artificial neural networks are applied for behavior learning of mobile robots in unknown and dynamic environments. In this research, the behavioral learning based on a spiking neural network to realize high adaptability of a mobile robot is proposed. The robot learn the forward relationship from sensory inputs to motor outputs as well as the predictive relationship from motor outputs to the sensory inputs. However, the behavioral leaning capability of the robot depends strongly on the network structure. Therefore, a VEGA to acquire the network structure suitable to the changing environment is applied. Finally, the effectiveness of the proposed method through experimental results on behavioral learning for collision avoidance and target tracing behavior is discussed

Keywords

Computer scienceMobile robotRobotArtificial intelligenceArtificial neural networkAdaptabilityTracingFuzzy logicEvolutionary roboticsSpiking neural network

Related papers

Browse all LEARNING papers