• V. A. Demin
  • V. V. Erokhin
  • A. V. Emelyanov
  • S. Battistoni
  • G. Baldi
  • S. Iannotta
  • P. K. Kashkarov
  • M. V. Kovalchuk

Abstract Elementary perceptron is an artificial neural network with a single layer of adaptive links and one output neuron that can solve simple linearly separable tasks such as invariant pattern recognition, linear approximation, prediction and others. We report on the hardware realization of the elementary perceptron with the use of polyaniline-based memristive devices as the analog link weights. An error correction algorithm was used to get the perceptron to learn the implementation of the NAND and NOR logic functions as examples of linearly separable tasks. The physical realization of an elementary perceptron demonstrates the ability to form the hardware-based neuromorphic networks with the use of organic memristive devices. The results provide a great promise toward new approaches for very compact, low-volatile and high-performance neurochips that could be made for a huge number of intellectual products and applications.

Original languageEnglish
Article number3127
Pages (from-to)16-20
Number of pages5
JournalOrganic Electronics
Volume25
DOIs
StatePublished - 14 Jun 2015

    Scopus subject areas

  • Electronic, Optical and Magnetic Materials
  • Chemistry(all)
  • Biomaterials
  • Condensed Matter Physics
  • Electrical and Electronic Engineering
  • Materials Chemistry

    Research areas

  • Machine learning, Memristor, Neuromorphic computing, Pattern classification, Perceptron, Polyaniline

ID: 88206478