Journal of Applied Physics, volume 126, issue 4, pages 44902
Superconducting optoelectronic loop neurons
Jeffrey M. Shainline
1
,
Sonia M Buckley
1
,
Adam N. McCaughan
1
,
Jeffrey T Chiles
1
,
Amir Jafari Salim
2
,
Manuel Castellanos Beltran
1
,
Christine A. Donnelly
1
,
Michael L Schneider
1
,
Richard P Mirin
1
,
Sae Woo Nam
1
2
HYPRES, Inc. 2 , 175 Clearbrook Rd., Elmsford, New York 10523, USA
|
Publication type: Journal Article
Publication date: 2019-07-25
Journal:
Journal of Applied Physics
Q2
Q2
SJR: 0.649
CiteScore: 5.4
Impact factor: 2.7
ISSN: 00218979, 10897550
General Physics and Astronomy
Abstract
Superconducting optoelectronic hardware has been proposed for large-scale neural computing. In this work, we expand upon the circuit and network designs previously introduced. We investigate circuits using superconducting single-photon detectors and Josephson junctions to perform signal reception, synaptic weighting, and integration. Designs are presented for synapses and neurons that perform integration of rate-coded signals as well as detect coincidence events for temporal coding. A neuron with a single integration loop can receive input from thousands of synaptic connections, and many such loops can be employed for dendritic processing. We show that a synaptic weight can be modified via a superconducting flux-storage loop inductively coupled to the current bias of the synapse. Synapses with hundreds of stable states are designed. Spike-timing-dependent plasticity can be implemented using two photons to strengthen and two photons to weaken the synaptic weight via Hebbian-type learning rules. In addition to the synaptic receiver and plasticity circuits, we describe an amplifier chain that converts the current pulse generated when a neuron reaches threshold to a voltage pulse sufficient to produce light from a semiconductor diode. This light is the signal used to communicate between neurons in the network. We analyze the performance of the elements in the amplifier chain to calculate the energy consumption per photon created. The speed of the amplification sequence allows neuronal firing up to at least 20 MHz, independent of connectivity. We consider these neurons in network configurations to investigate near-term technological potential and long-term physical limitations. By modeling the physical size of superconducting optoelectronic neurons, we calculate the area of these networks. A system with 8100 neurons and 330 430 total synapses will fit on a 1 × 1 cm 2 die. Systems of millions of neurons with hundreds of millions of synapses will fit on a 300 mm wafer. For multiwafer assemblies, communication at light speed enables a neuronal pool the size of a large data center ( 10 5 m 2) comprised of trillions of neurons with coherent oscillations at 1 MHz.Superconducting optoelectronic hardware has been proposed for large-scale neural computing. In this work, we expand upon the circuit and network designs previously introduced. We investigate circuits using superconducting single-photon detectors and Josephson junctions to perform signal reception, synaptic weighting, and integration. Designs are presented for synapses and neurons that perform integration of rate-coded signals as well as detect coincidence events for temporal coding. A neuron with a single integration loop can receive input from thousands of synaptic connections, and many such loops can be employed for dendritic processing. We show that a synaptic weight can be modified via a superconducting flux-storage loop inductively coupled to the current bias of the synapse. Synapses with hundreds of stable states are designed. Spike-timing-dependent plasticity can be implemented using two photons to strengthen and two photons to weaken the synaptic weight via Hebbian-type learning rules. In addition...
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Shainline J. M. et al. Superconducting optoelectronic loop neurons // Journal of Applied Physics. 2019. Vol. 126. No. 4. p. 44902.
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Shainline J. M., Buckley S. M., McCaughan A. N., Chiles J. T., Jafari Salim A., Castellanos Beltran M., Donnelly C. A., Schneider M. L., Mirin R. P., Nam S. W. Superconducting optoelectronic loop neurons // Journal of Applied Physics. 2019. Vol. 126. No. 4. p. 44902.
Cite this
RIS
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TY - JOUR
DO - 10.1063/1.5096403
UR - https://doi.org/10.1063/1.5096403
TI - Superconducting optoelectronic loop neurons
T2 - Journal of Applied Physics
AU - Shainline, Jeffrey M.
AU - Buckley, Sonia M
AU - McCaughan, Adam N.
AU - Chiles, Jeffrey T
AU - Jafari Salim, Amir
AU - Castellanos Beltran, Manuel
AU - Donnelly, Christine A.
AU - Schneider, Michael L
AU - Mirin, Richard P
AU - Nam, Sae Woo
PY - 2019
DA - 2019/07/25
PB - AIP Publishing
SP - 44902
IS - 4
VL - 126
SN - 0021-8979
SN - 1089-7550
ER -
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@article{2019_Shainline,
author = {Jeffrey M. Shainline and Sonia M Buckley and Adam N. McCaughan and Jeffrey T Chiles and Amir Jafari Salim and Manuel Castellanos Beltran and Christine A. Donnelly and Michael L Schneider and Richard P Mirin and Sae Woo Nam},
title = {Superconducting optoelectronic loop neurons},
journal = {Journal of Applied Physics},
year = {2019},
volume = {126},
publisher = {AIP Publishing},
month = {jul},
url = {https://doi.org/10.1063/1.5096403},
number = {4},
pages = {44902},
doi = {10.1063/1.5096403}
}
Cite this
MLA
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Shainline, Jeffrey M., et al. “Superconducting optoelectronic loop neurons.” Journal of Applied Physics, vol. 126, no. 4, Jul. 2019, p. 44902. https://doi.org/10.1063/1.5096403.