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Title: A domain wall-magnetic tunnel junction artificial synapse with notched geometry for accurate and efficient training of deep neural networks

Journal Article · · Applied Physics Letters
DOI:https://doi.org/10.1063/5.0046032· OSTI ID:1784862

Inspired by the parallelism and efficiency of the brain, several candidates for artificial synapse devices have been developed for neuromorphic computing, yet a nonlinear and asymmetric synaptic response curve precludes their use for backpropagation, the foundation of modern supervised learning. Spintronic devices—which benefit from high endurance, low power consumption, low latency, and CMOS compatibility—are a promising technology for memory, and domain-wall magnetic tunnel junction (DW-MTJ) devices have been shown to implement synaptic functions such as long-term potentiation and spike-timing dependent plasticity. In this work, we propose a notched DW-MTJ synapse as a candidate for supervised learning. Using micromagnetic simulations at room temperature, we show that notched synapses ensure the non-volatility of the synaptic weight and allow for highly linear, symmetric, and reproducible weight updates using either spin transfer torque (STT) or spin–orbit torque (SOT) mechanisms of DW propagation. We use lookup tables constructed from micromagnetics simulations to model the training of neural networks built with DW-MTJ synapses on both the MNIST and Fashion-MNIST image classification tasks. Accounting for thermal noise and realistic process variations, the DW-MTJ devices achieve classification accuracy close to ideal floating-point updates using both STT and SOT devices at room temperature and at 400 K. Our work establishes the basis for a magnetic artificial synapse that can eventually lead to hardware neural networks with fully spintronic matrix operations implementing machine learning.

Research Organization:
Sandia National Lab. (SNL-NM), Albuquerque, NM (United States)
Sponsoring Organization:
USDOE National Nuclear Security Administration (NNSA)
Grant/Contract Number:
AC04-94AL85000
OSTI ID:
1784862
Alternate ID(s):
OSTI ID: 1784352
Report Number(s):
SAND-2021-6135J; 696352; TRN: US2210344
Journal Information:
Applied Physics Letters, Vol. 118, Issue 20; ISSN 0003-6951
Publisher:
American Institute of Physics (AIP)Copyright Statement
Country of Publication:
United States
Language:
English

References (28)

Recent progress in resistive random access memories: Materials, switching mechanisms, and performance journal September 2014
Scaling magnetic tunnel junction down to single-digit nanometers—Challenges and prospects journal April 2020
Low Energy Magnetic Domain Wall Logic in Short, Narrow, Ferromagnetic Wires journal January 2012
Integration of spintronic interface for nanomagnetic arrays journal December 2011
Hitting the memory wall: implications of the obvious journal March 1995
Phase change memory technology
  • Burr, Geoffrey W.; Breitwisch, Matthew J.; Franceschini, Michele
  • Journal of Vacuum Science & Technology B, Nanotechnology and Microelectronics: Materials, Processing, Measurement, and Phenomena, Vol. 28, Issue 2 https://doi.org/10.1116/1.3301579
journal March 2010
Synapse cell optimization and back-propagation algorithm implementation in a domain wall synapse based crossbar neural network for scalable on-chip learning journal June 2020
Magnetic Domain Wall Based Synaptic and Activation Function Generator for Neuromorphic Accelerators journal December 2019
Logic circuit prototypes for three-terminal magnetic tunnel junctions with mobile domain walls journal January 2016
The design and verification of MuMax3 journal October 2014
Analog architectures for neural network acceleration based on non-volatile memory journal September 2020
A brain-plausible neuromorphic on-the-fly learning system implemented with magnetic domain wall analog memristors journal April 2019
Neuromorphic Functions in PEDOT:PSS Organic Electrochemical Transistors journal October 2015
Resistive Random Access Memory (ReRAM) Based on Metal Oxides journal December 2010
In situ Parallel Training of Analog Neural Network Using Electrochemical Random-Access Memory journal April 2021
Impact of Non-Ideal Characteristics of Resistive Synaptic Devices on Implementing Convolutional Neural Networks journal September 2019
Matching domain-wall configuration and spin-orbit torques for efficient domain-wall motion journal January 2013
A non-volatile organic electrochemical device as a low-voltage artificial synapse for neuromorphic computing journal February 2017
Three-terminal magnetic tunnel junction synapse circuits showing spike-timing-dependent plasticity journal September 2019
Magnetic domain wall neuron with lateral inhibition journal October 2018
Spike time dependent plasticity (STDP) enabled learning in spiking neural networks using domain wall based synapses and neurons journal December 2019
Phase Change Memory journal December 2010
Multiscale Co-Design Analysis of Energy, Latency, Area, and Accuracy of a ReRAM Analog Neural Training Accelerator journal March 2018
Scalability of Magnetic Tunnel Junctions Patterned by a Novel Plasma Ribbon Beam Etching Process on 300 mm Wafers journal December 2015
Accurate deep neural network inference using computational phase-change memory journal May 2020
Proposal for an All-Spin Artificial Neural Network: Emulating Neural and Synaptic Functionalities Through Domain Wall Motion in Ferromagnets journal December 2016
Resistive memory device requirements for a neural algorithm accelerator conference July 2016
Current-induced domain wall motion journal April 2008