Pattern recognition with superconducting wirelet neurons
Khalil Harrabi, Leonardo Cadorim, Milorad Milosevic

TL;DR
This paper introduces a superconducting wirelet neuron for neuromorphic computing, demonstrating its potential for scalable, energy-efficient pattern recognition in cryogenic AI hardware.
Contribution
The authors present a minimal superconducting neuron design with tunable spiking behavior and show its application in pattern recognition, advancing superconducting neuromorphic hardware.
Findings
Neuron exhibits controllable spiking behavior
Pattern recognition achieved with superconducting neurons
Scalable, energy-efficient cryogenic AI hardware potential
Abstract
Neuromorphic computing aims to reproduce the energy efficiency and adaptability of biological intelligence in hardware. Superconducting devices are an attractive platform due to their ultra-low dissipation and fast switching dynamics. Here we introduce a shunted superconducting wirelet as an artificial neuron, representing the simplest possible superconducting neuron implementation. This minimal design, a single superconducting channel with a resistive shunt, enables straightforward fabrication, electronic control, and high scalability. The neuron exhibits spiking voltage behavior driven by the interplay of resistive switching and relaxation, with key properties such as threshold, firing frequency, and refractory time tunable via applied current, temperature, and shunt resistance. We further show that the resulting temporal voltage signals can be incorporated into a training algorithm…
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Taxonomy
TopicsAdvanced Memory and Neural Computing · Neural Networks and Reservoir Computing · Ferroelectric and Negative Capacitance Devices
