Performance Analysis of Hopfield Network Associative Memory using Evolutionary Algorithm for Superimposed Images of Numerals

Abstract

This paper presents the implementation of a Hebbian learning rule and genetic algorithm to store and later, recall of superimposed images of numerals in Hopfield network associative memory. A set of ten objects (i.e. 0 to 9 numerals) has been considered as the pattern set. In the Hopfield network associative memory, the weighted code of input patterns provides an auto-associative function in the network. The storing of images is done by hebbian learning rule and recalling is done by using both hebbian rule and genetic algorithm. The simulated results shows that the genetic algorithm gives efficient results as compared to hebbian rule for superimposed images of numerals

Authors and Affiliations

Ruby Panwar

Keywords

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  • EP ID EP241085
  • DOI -
  • Views 84
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How To Cite

Ruby Panwar (2015). Performance Analysis of Hopfield Network Associative Memory using Evolutionary Algorithm for Superimposed Images of Numerals. International journal of Emerging Trends in Science and Technology, 2(7), 2931-2942. https://europub.co.uk/articles/-A-241085