TY - JOUR
T1 - All-Optical Synapses Based on a Mechanoluminescent Material
AU - Peng, Danni
AU - Li, Haotian
AU - Sun, Junlu
AU - Deng, Yuan
AU - Jiao, Fuhang
AU - Han, Yuhong
AU - Zhang, Kaiying
AU - Meng, Jiajia
AU - Li, Xiang
AU - Wang, Lijun
AU - Fu, Li Min
AU - Hua, Qilin
AU - Shan, Chong Xin
AU - Dong, Lin
N1 - Publisher Copyright:
© 2025 Wiley-VCH GmbH.
PY - 2025
Y1 - 2025
N2 - Neuromorphic computing systems hold promises to overcome the inefficiencies of conventional von Neumann architecture, which are constrained by data transfer bottlenecks. However, conventional electrically modulated synapses face inherent limitations such as limited switching speed, elevated power consumption, and substantial interconnection loss. Optical signaling offers a transformative alternative, leveraging ultrafast transmission, high bandwidth, and minimal crosstalk. Here, an all-optical synapse based on a mechanoluminescent material of Li0.1Na0.9NbO3:Pr3+ (LNN:Pr3+) is presented, which emulates biological synapses, including homologous and heterologous synaptic behaviors, through optical signal processing. The engineered trap depth distribution of LNN:Pr3+ enables multi-stimuli response to UV light, mechanical force, and thermal input, replicating diverse synaptic functionalities such as short-term potentiation (STP), long-term potentiation (LTP), paired-pulse facilitation (PPF), and learning-experience behavioral adaptation. Furthermore, its utility is showcased in hardware-level denoising and multimode-fused perception, achieving spatiotemporal feature extraction in dynamic environments. This work not only sheds light into designing fully optical synapses but also bridges mechanoluminescence (ML) with neuromorphic engineering, advancing energy-efficient, light-driven artificial intelligence technologies.
AB - Neuromorphic computing systems hold promises to overcome the inefficiencies of conventional von Neumann architecture, which are constrained by data transfer bottlenecks. However, conventional electrically modulated synapses face inherent limitations such as limited switching speed, elevated power consumption, and substantial interconnection loss. Optical signaling offers a transformative alternative, leveraging ultrafast transmission, high bandwidth, and minimal crosstalk. Here, an all-optical synapse based on a mechanoluminescent material of Li0.1Na0.9NbO3:Pr3+ (LNN:Pr3+) is presented, which emulates biological synapses, including homologous and heterologous synaptic behaviors, through optical signal processing. The engineered trap depth distribution of LNN:Pr3+ enables multi-stimuli response to UV light, mechanical force, and thermal input, replicating diverse synaptic functionalities such as short-term potentiation (STP), long-term potentiation (LTP), paired-pulse facilitation (PPF), and learning-experience behavioral adaptation. Furthermore, its utility is showcased in hardware-level denoising and multimode-fused perception, achieving spatiotemporal feature extraction in dynamic environments. This work not only sheds light into designing fully optical synapses but also bridges mechanoluminescence (ML) with neuromorphic engineering, advancing energy-efficient, light-driven artificial intelligence technologies.
KW - LiNaNbO:Pr
KW - all-optical synapses
KW - mechanoluminescence
KW - neuromorphic computing
UR - http://www.scopus.com/pages/publications/105009281975
U2 - 10.1002/adma.202503376
DO - 10.1002/adma.202503376
M3 - Article
AN - SCOPUS:105009281975
SN - 0935-9648
JO - Advanced Materials
JF - Advanced Materials
ER -