TY - JOUR
T1 - Controllable Reset Behavior in Domain Wall-Magnetic Tunnel Junction Artificial Neurons for Task-Adaptable Computation
AU - Liu, Samuel
AU - Bennett, Christopher
AU - Friedman, Joseph
AU - Marinella, Matthew
AU - Paydarfar, David
AU - Incorvia, Jean Anne
N1 - Publisher Copyright:
© 2010-2012 IEEE.
PY - 2021
Y1 - 2021
N2 - Neuromorphic computing with spintronic devices has been of interest due to the limitations of CMOS-driven von Neumann computing. Domain wall-magnetic tunnel junction (DW-MTJ) devices have been shown to be able to intrinsically capture biological neuron behavior. Edgy-relaxed behavior, where a frequently firing neuron experiences a lower action potential threshold, may provide additional artificial neuronal functionality when executing repeated tasks. In this letter, we demonstrate that this behavior can be implemented in DW-MTJ artificial neurons via three alternative mechanisms: shape anisotropy, magnetic field, and current-driven soft reset. Using micromagnetics and analytical device modeling to classify the Optdigits handwritten digit dataset, we show that edgy-relaxed behavior improves both classification accuracy and classification rate for ordered datasets while sacrificing little to no accuracy for a randomized dataset. This letter establishes methods by which artificial spintronic neurons can be flexibly adapted to datasets.
AB - Neuromorphic computing with spintronic devices has been of interest due to the limitations of CMOS-driven von Neumann computing. Domain wall-magnetic tunnel junction (DW-MTJ) devices have been shown to be able to intrinsically capture biological neuron behavior. Edgy-relaxed behavior, where a frequently firing neuron experiences a lower action potential threshold, may provide additional artificial neuronal functionality when executing repeated tasks. In this letter, we demonstrate that this behavior can be implemented in DW-MTJ artificial neurons via three alternative mechanisms: shape anisotropy, magnetic field, and current-driven soft reset. Using micromagnetics and analytical device modeling to classify the Optdigits handwritten digit dataset, we show that edgy-relaxed behavior improves both classification accuracy and classification rate for ordered datasets while sacrificing little to no accuracy for a randomized dataset. This letter establishes methods by which artificial spintronic neurons can be flexibly adapted to datasets.
KW - Spin electronics
KW - domain wall dynamics
KW - magnetic logic devices
KW - magnetic tunnel junctions
KW - neuromorphic computing
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U2 - 10.1109/LMAG.2021.3069666
DO - 10.1109/LMAG.2021.3069666
M3 - Article
AN - SCOPUS:85103790494
SN - 1949-307X
VL - 12
JO - IEEE Magnetics Letters
JF - IEEE Magnetics Letters
M1 - 9390198
ER -