4.2 Article

Simulation of memristive synapses and neuromorphic computing on a quantum computer

Journal

PHYSICAL REVIEW RESEARCH
Volume 3, Issue 2, Pages -

Publisher

AMER PHYSICAL SOC
DOI: 10.1103/PhysRevResearch.3.023146

Keywords

-

Funding

  1. IBM Quantum services
  2. National Natural Science Foundation of China [11875050, 12088101]
  3. NSAF [U1930403]

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The research introduces a spike-based neuromorphic computing approach using memristors as analog synapses. Unitary quantum gates are proposed to exhibit memristive behaviors, with hysteresis dependent on quantum phase and long-term plasticity encoding quantum states observed. A three-layer neural network capable of universal quantum computing is also established, demonstrating quantum state classification on memristive neural network.
One of the major approaches to spike-based neuromorphic computing is using memristors as analog synapses. We propose unitary quantum gates that exhibit memristive behaviors, including Ohm's law, pinched hysteresis loop and synaptic plasticity. Hysteresis depending on the quantum phase and long-term plasticity that encodes the quantum state are observed. We also propose a three-layer neural network with the capability of universal quantum computing. Quantum state classification on the memristive neural network is demonstrated. These results pave the way towards quantum spiking neural network built on unitary processes. We obtain these results in numerical simulations and experiments on the superconducting quantum computer ibmq_vigo.

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