All-Optical Synapses Based on a Mechanoluminescent Material

Danni Peng, Haotian Li, Junlu Sun*, Yuan Deng, Fuhang Jiao, Yuhong Han, Kaiying Zhang, Jiajia Meng, Xiang Li, Lijun Wang, Li Min Fu*, Qilin Hua*, Chong Xin Shan, Lin Dong*

*此作品的通讯作者

科研成果: 期刊稿件文章同行评审

摘要

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.

源语言英语
期刊Advanced Materials
DOI
出版状态已接受/待刊 - 2025
已对外发布

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