TY - JOUR
T1 - Van der Waals Antiferroelectric CuCrP2S6-Based Artificial Synapse for High-Precision Neuromorphic Computation
AU - Yu, Zhipeng
AU - Wang, Qinan
AU - Zeng, Tianle
AU - Ye, Kun
AU - Zhou, Houjian
AU - Han, Zishuo
AU - Zeng, Yuxuan
AU - Fang, Bin
AU - Lv, Weiming
AU - Geng, Lin
AU - Zhao, Chun
AU - Liu, Zhongyuan
AU - Zeng, Zhongming
N1 - Publisher Copyright:
© 2025 Wiley-VCH GmbH.
PY - 2025
Y1 - 2025
N2 - 2D van der Waals heterostructure-based artificial synapses have emerged as a compelling platform for next-generation neuromorphic systems, owing to their tunable electrical conductivity and layer-engineered functionality through controlled stacking of 2D materials. In this work, an engineered SnS₂/h-BN/CuCrP₂S₆ van der Waals antiferroelectric field-effect transistor (AFe-FET) is presented that implements synaptic weight modulation through the synergistic interplay of charge trapping dynamics and electric-field-controlled ferroelectric polarization switching. The AFe-FET architecture successfully emulates essential neuroplasticity features, including paired-pulse facilitation, short-term plasticity, and long-term plasticity. The device exhibits exceptional long-term potentiation (LTP) and long-term depression (LTD), with an ultralow nonlinearity coefficient of 1.1 for both LTP and LTD operations, high symmetricity (30), and broad dynamic range (Gmax/Gmin = 10). The AFe-FET-based neuromorphic system demonstrates an outstanding computational efficacy, i.e. a classification accuracy of 97.7% on the MNIST benchmark. Furthermore, implementing reservoir computing architectures enables cognitive process emulation, attaining 94.7% task recognition accuracy in brain-inspired decision-making simulations. This investigation establishes new design paradigms for high-fidelity synaptic devices, providing a strategy for energy-efficient neuromorphic computing systems with biological plausibility.
AB - 2D van der Waals heterostructure-based artificial synapses have emerged as a compelling platform for next-generation neuromorphic systems, owing to their tunable electrical conductivity and layer-engineered functionality through controlled stacking of 2D materials. In this work, an engineered SnS₂/h-BN/CuCrP₂S₆ van der Waals antiferroelectric field-effect transistor (AFe-FET) is presented that implements synaptic weight modulation through the synergistic interplay of charge trapping dynamics and electric-field-controlled ferroelectric polarization switching. The AFe-FET architecture successfully emulates essential neuroplasticity features, including paired-pulse facilitation, short-term plasticity, and long-term plasticity. The device exhibits exceptional long-term potentiation (LTP) and long-term depression (LTD), with an ultralow nonlinearity coefficient of 1.1 for both LTP and LTD operations, high symmetricity (30), and broad dynamic range (Gmax/Gmin = 10). The AFe-FET-based neuromorphic system demonstrates an outstanding computational efficacy, i.e. a classification accuracy of 97.7% on the MNIST benchmark. Furthermore, implementing reservoir computing architectures enables cognitive process emulation, attaining 94.7% task recognition accuracy in brain-inspired decision-making simulations. This investigation establishes new design paradigms for high-fidelity synaptic devices, providing a strategy for energy-efficient neuromorphic computing systems with biological plausibility.
KW - antiferroelectric field-effect transisstor
KW - artificial synapse
KW - charge trapping dynamics
KW - ferroelectric polarization
KW - neucromorphic computation
UR - http://www.scopus.com/inward/record.url?scp=105004764033&partnerID=8YFLogxK
U2 - 10.1002/smll.202502676
DO - 10.1002/smll.202502676
M3 - Article
AN - SCOPUS:105004764033
SN - 1613-6810
JO - Small
JF - Small
ER -