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CASE STUDY ON A SELF-ORGANIZING SPIKING NEURAL NETWORK FOR ROBOT NAVIGATION

Eric Nichols, Liam McDaid, Nazmul Siddique

发表年份
2010
引用次数
45

摘要

This paper presents a Spiking Neural Network (SNN) architecture for mobile robot navigation. The SNN contains 4 layers where dynamic synapses route information to the appropriate neurons in each layer and the neurons are modeled using the Leaky Integrate and Fire (LIF) model. The SNN learns by self-organizing its connectivity as new environmental conditions are experienced and consequently knowledge about its environment is stored in the connectivity. Also a novel feature of the proposed SNN architecture is that it uses working memory, where present and previous sensor states are stored. Results are presented for a wall following application.

关键词

Spiking neural networkComputer scienceRobotFeature (linguistics)Mobile robotArtificial neural networkLayer (electronics)Artificial intelligenceArchitecture

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