DocumentCode :
3319738
Title :
Energy-efficient neuromorphic computation based on compound spin synapse with stochastic learning
Author :
Deming Zhang ; Lang Zeng ; Yuanzhuo Qu ; Youguang ; Zhang Mengxing Wang ; Weisheng Zhao ; Tianqi Tang ; Yu Wang
Author_Institution :
Spintronics Interdiscipl. Center, Beihang Univ., Beijing, China
fYear :
2015
fDate :
24-27 May 2015
Firstpage :
1538
Lastpage :
1541
Abstract :
Recently, magnetic tunnel junction with in-plane magnetization (i-MTJ) has been exploited to behave as a binary stochastic synapse. However, it suffers from its limited level of synaptic weight, resulting in an inaccurate learning. In this work, a compound synapse that employs multiple perpendicular MTJs (p-MTJs) in series is proposed. It possesses an analog-like synaptic weight under weak programming conditions, which leads to a stochastic learning rule and low power consumption per synaptic event. By performing system-level simulations on the MNIST database, it has been demonstrated that such compound spin synapses can realize stochastic neuromorphic computation with high accuracy and low energy consumption.
Keywords :
energy conservation; learning (artificial intelligence); low-power electronics; magnetic tunnelling; neural nets; power consumption; stochastic processes; MNIST database; analog-like synaptic weight; binary stochastic synapse; compound spin synapse; energy consumption; energy-efficient neuromorphic computation; i-MTJ; in-plane magnetization; magnetic tunnel junction; p-MTJ; perpendicular MTJ; power consumption; stochastic learning rule; stochastic neuromorphic computation; Compounds; Error analysis; Magnetic tunneling; Neuromorphics; Neurons; Programming; Switches; STT; binary synaptic device; neuromorphic computation; p-MTJ; stochastic learning rule; winner-takes-all network;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Circuits and Systems (ISCAS), 2015 IEEE International Symposium on
Conference_Location :
Lisbon
Type :
conf
DOI :
10.1109/ISCAS.2015.7168939
Filename :
7168939
Link To Document :
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