4.6 Article

A novel memristive Hopfield neural network with application in associative memory

Journal

NEUROCOMPUTING
Volume 227, Issue -, Pages 142-148

Publisher

ELSEVIER SCIENCE BV
DOI: 10.1016/j.neucom.2016.07.065

Keywords

Memristor; Neural network; Associative memory; Memristor bridge circuit; Synaptic weight

Funding

  1. Program for New Century Excellent Talents in university
  2. National Natural Science Foundation of China [61372139, 61571372]
  3. Spring Sunshine Plan Research Project of Ministry of Education of China [z2011148]
  4. Technology Foundation for Selected Overseas Chinese Scholars, Ministry of Personnel in China [2012-186]
  5. University Excellent Talents Supporting Foundations of Chongqing [2011-65]
  6. University Key Teacher Supporting Foundations of Chongqing [2011-65]
  7. Fundamental Research Funds for the Central Universities [XDJK2014A009, XDJK2016A001]

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Memristor is a nanoscale electronic device that exhibits the synaptic characteristics in artificial neural network. Some valuable memristor-based synaptic circuits have been presented. However, the circuitry implementations of some simple neural network are still rarely involved before. This paper contributes to construct a novel memristive Hopfield neural network circuit. On one hand, an improved memristor bridge circuit is employed to realize synaptic operation which better performs zero, positive and negative synaptic weights without requiring any switches and inverters, and Pspice implementation scheme is also considered. On the other hand, the proposed bridge circuit greatly simplifies the structure of neural network, and reduces the conversion process between current and voltage signal. Furthermore, the associative memory in binary and color images is demonstrated ori the basis of the proposed memristive network. A series of numerical simulations are designed to verify associative memory capability, and experimental results demonstrate the effectiveness of the proposed neural network via the cases of single-associative memory and multi-associative memory.

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