TY - JOUR
T1 - Volatile and Nonvolatile Memristive Devices for Neuromorphic Computing
AU - Zhou, Guangdong
AU - Wang, Zhongrui
AU - Sun, Bai
AU - Zhou, Feichi
AU - Sun, Linfeng
AU - Zhao, Hongbin
AU - Hu, Xiaofang
AU - Peng, Xiaoyan
AU - Yan, Jia
AU - Wang, Huamin
AU - Wang, Wenhua
AU - Li, Jie
AU - Yan, Bingtao
AU - Kuang, Dalong
AU - Wang, Yuchen
AU - Wang, Lidan
AU - Duan, Shukai
N1 - Publisher Copyright:
© 2022 Wiley-VCH GmbH.
PY - 2022/7
Y1 - 2022/7
N2 - Ion migration as well as electron transfer and coupling in resistive switching materials endow memristors with a physically tunable conductance to resemble synapses, neurons, and their networks. Four different types of volatile memristors and another four types of nonvolatile memristors are systemically surveyed in terms of the switching mechanisms and electrical properties that are the basis of different computing applications. The volatile memristor features spontaneous conductance decay after the cease of electrical/optical stimulations, which are closely related to the surface atom diffusion, metal–insulator–transition (including charge–density–wave), thermal spontaneous emission, and charge polarization. Such unique dynamic state evolution at the edge of chaos has enabled them to emulate certain synaptic and neural dynamics, leading to various applications ranging from spiking neural networks to combinatorial optimizations. Nonvolatile resistive switching behavior originated from the electron spins, ferroelectric polarization, crystalline-amorphous transitions or interplay between ions and electrons enables the memristor array to implement the vector–matrix multiplication, which is the key convolutional operation in artificial neural networks. The progress, challenges, and opportunities for both volatile and nonvolatile memristor in the level of materials, integration technology, algorithm, and system are highlighted in this review.
AB - Ion migration as well as electron transfer and coupling in resistive switching materials endow memristors with a physically tunable conductance to resemble synapses, neurons, and their networks. Four different types of volatile memristors and another four types of nonvolatile memristors are systemically surveyed in terms of the switching mechanisms and electrical properties that are the basis of different computing applications. The volatile memristor features spontaneous conductance decay after the cease of electrical/optical stimulations, which are closely related to the surface atom diffusion, metal–insulator–transition (including charge–density–wave), thermal spontaneous emission, and charge polarization. Such unique dynamic state evolution at the edge of chaos has enabled them to emulate certain synaptic and neural dynamics, leading to various applications ranging from spiking neural networks to combinatorial optimizations. Nonvolatile resistive switching behavior originated from the electron spins, ferroelectric polarization, crystalline-amorphous transitions or interplay between ions and electrons enables the memristor array to implement the vector–matrix multiplication, which is the key convolutional operation in artificial neural networks. The progress, challenges, and opportunities for both volatile and nonvolatile memristor in the level of materials, integration technology, algorithm, and system are highlighted in this review.
KW - neuromorphic computing
KW - nonvolatile memristor
KW - physical dynamic
KW - volatile memristor
UR - http://www.scopus.com/inward/record.url?scp=85124603836&partnerID=8YFLogxK
U2 - 10.1002/aelm.202101127
DO - 10.1002/aelm.202101127
M3 - Review article
AN - SCOPUS:85124603836
SN - 2199-160X
VL - 8
JO - Advanced Electronic Materials
JF - Advanced Electronic Materials
IS - 7
M1 - 2101127
ER -