TY - JOUR
T1 - Dynamic Convolutional Neural Networks Based on Adaptive 2D Memristors
AU - Hong, Heemyoung
AU - Chen, Xi
AU - Cho, Woohyun
AU - Yoo, Ho Yeon
AU - Oh, Jaewhan
AU - Kim, Minseok
AU - Hwang, Geunwoo
AU - Yang, Yongsoo
AU - Sun, Linfeng
AU - Wang, Zhongrui
AU - Yang, Heejun
N1 - Publisher Copyright:
© 2024 Wiley-VCH GmbH.
PY - 2025/4/25
Y1 - 2025/4/25
N2 - Convolutional Neural Networks (CNNs) are pivotal in modern digital computing, particularly for tasks like image classification, inspired by the receptive fields of the human brain. Nevertheless, CNNs implemented on conventional digital computers face significant limitations due to inflexible kernels that cannot adjust to dynamic inputs, and the von Neumann architecture, which leads to inefficient data transfer between memory and processing units. This research presents a hardware-software co-designed solution, a Dynamic Convolutional Neural Network (dCNN), empowered by three-terminal adaptive two-dimensional (2D) memristors. These memristors consist of a vertical heterostructure integrating silver, an atomically thin insulator (CrPS4), and graphene as a semimetal. This configuration allows for the dynamic tuning of conductive filament properties, emulating the heterosynaptic plasticity observed in biological neural systems. The three-terminal memristor design permits the dCNN to actively adjust kernel weights in its attention layer according to the input stimuli. The empirical tests demonstrate that image classification accuracy using our adaptive 2D memristor-enhanced dVGG reaches up to 94% on the CIFAR-10 dataset, which exceeds the performance of static VGG. Furthermore, the energy efficiency of our dVGG significantly outperforms that of GPUs, aligning more closely with the energy dynamics of the human brain in terms of both consumption and classification accuracy.
AB - Convolutional Neural Networks (CNNs) are pivotal in modern digital computing, particularly for tasks like image classification, inspired by the receptive fields of the human brain. Nevertheless, CNNs implemented on conventional digital computers face significant limitations due to inflexible kernels that cannot adjust to dynamic inputs, and the von Neumann architecture, which leads to inefficient data transfer between memory and processing units. This research presents a hardware-software co-designed solution, a Dynamic Convolutional Neural Network (dCNN), empowered by three-terminal adaptive two-dimensional (2D) memristors. These memristors consist of a vertical heterostructure integrating silver, an atomically thin insulator (CrPS4), and graphene as a semimetal. This configuration allows for the dynamic tuning of conductive filament properties, emulating the heterosynaptic plasticity observed in biological neural systems. The three-terminal memristor design permits the dCNN to actively adjust kernel weights in its attention layer according to the input stimuli. The empirical tests demonstrate that image classification accuracy using our adaptive 2D memristor-enhanced dVGG reaches up to 94% on the CIFAR-10 dataset, which exceeds the performance of static VGG. Furthermore, the energy efficiency of our dVGG significantly outperforms that of GPUs, aligning more closely with the energy dynamics of the human brain in terms of both consumption and classification accuracy.
KW - adaptive 2D memristors
KW - CrPS
KW - dynamic convolutional neural networks
UR - http://www.scopus.com/inward/record.url?scp=105003809121&partnerID=8YFLogxK
U2 - 10.1002/adfm.202422321
DO - 10.1002/adfm.202422321
M3 - Article
AN - SCOPUS:105003809121
SN - 1616-301X
VL - 35
JO - Advanced Functional Materials
JF - Advanced Functional Materials
IS - 17
M1 - 2422321
ER -