神经形态工程学
MNIST数据库
记忆电阻器
人工神经网络
材料科学
人工智能
计算机科学
突触
电子工程
工程类
神经科学
生物
作者
Thomas M. Leonard,Samuel Liu,Mahshid Alamdar,Harrison Jin,Can Cui,Otitoaleke G. Akinola,Lin Xue,T. Patrick Xiao,Joseph S. Friedman,Matthew Marinella,Christopher H. Bennett,Jean Anne C. Incorvia
标识
DOI:10.1002/aelm.202200563
摘要
Abstract In neuromorphic computing, artificial synapses provide a multi‐weight (MW) conductance state that is set based on inputs from neurons, analogous to the brain. Herein, artificial synapses based on magnetic materials that use a magnetic tunnel junction (MTJ) and a magnetic domain wall (DW) are explored. By fabricating lithographic notches in a DW track underneath a single MTJ, 3–5 stable resistance states that can be repeatably controlled electrically using spin‐orbit torque are achieved. The effect of geometry on the synapse behavior is explored, showing that a trapezoidal device has asymmetric weight updates with high controllability, while a rectangular device has higher stochasticity, but with stable resistance levels. The device data is input into neuromorphic computing simulators to show the usefulness of application‐specific synaptic functions. Implementing an artificial neural network (NN) applied to streamed Fashion‐MNIST data, the trapezoidal magnetic synapse can be used as a metaplastic function for efficient online learning. Implementing a convolutional NN for CIFAR‐100 image recognition, the rectangular magnetic synapse achieves near‐ideal inference accuracy, due to the stability of its resistance levels. This work shows MW magnetic synapses are a feasible technology for neuromorphic computing and provides design guidelines for emerging artificial synapse technologies.
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