Self-Learning Fuzzy Spiking Neural Network as a Nonlinear Pulse-Position Threshold Detection Dynamic System Based on Second-Order Critically Damped Response Units


Autoria(s): Bodyanskiy, Yevgeniy; Dolotov, Artem; Pliss, Iryna
Data(s)

18/04/2010

18/04/2010

2009

Resumo

Architecture and learning algorithm of self-learning spiking neural network in fuzzy clustering task are outlined. Fuzzy receptive neurons for pulse-position transformation of input data are considered. It is proposed to treat a spiking neural network in terms of classical automatic control theory apparatus based on the Laplace transform. It is shown that synapse functioning can be easily modeled by a second order damped response unit. Spiking neuron soma is presented as a threshold detection unit. Thus, the proposed fuzzy spiking neural network is an analog-digital nonlinear pulse-position dynamic system. It is demonstrated how fuzzy probabilistic and possibilistic clustering approaches can be implemented on the base of the presented spiking neural network.

Identificador

1313-0455

http://hdl.handle.net/10525/1211

Idioma(s)

en

Publicador

Institute of Information Theories and Applications FOI ITHEA

Palavras-Chave #Computational Intelligence #Hybrid Intelligent System #Spiking Neural Network #Fuzzy Receptive Neuron #Fuzzy Clustering #Automatic Control Theory #Analog-Digital System #Second Order Damped Response System #Artificial Intelligence
Tipo

Article