神经形态工程学
强化学习
计算机科学
神经科学
计算机体系结构
过程(计算)
记忆电阻器
变质塑性
钙钛矿(结构)
人工智能
材料科学
人工神经网络
突触可塑性
工程类
心理学
电子工程
生物
操作系统
受体
生物化学
化学工程
作者
Yan Wang,Shidong Chen,Xiaohan Cheng,Wang Chen,Ziyu Xiong,Ziyu Lv,Chunyan Wu,Li Wang,Guohua Zhang,Xiaobo Zhu,Lin‐Bao Luo,Su‐Ting Han
标识
DOI:10.1002/adfm.202309807
摘要
Abstract The neuromorphic computing architecture is a promising artificial intelligence for implementing hierarchical processing, in‐memory computing, event‐driven operation and functional specialization in computing systems. However, current investigations mainly focus on unisensory processing without objective experience which is contrary to the flexible sensory learning capability in the human brain that can sense and process information according to the ever‐changing environment. For example, a dominant paradigm for reconfigurable bio‐learning features is the emotional experience. The neurotransmitter dopamine is released during arousal, influencing the vital brain functions involved in cognition, reward learning, movement and motivation. Here, the on‐demand configuration of a biorealistic synaptic connection based on a 2D CaTa 2 O 7 (CTO) device is demonstrated that can be adaptively reconfigured for a reinforcement learning purpose by the light‐active resistive switching, which originated from the photon‐regulated metaplasticity. The low energy consumption of 12.4 fJ endows the reinforcement learning system with high power efficiency and reliability. Finally, in‐sensor computing with a CTO synapse is implemented with a filtering function to process digital data in a neuromorphic engineering manner. This work demonstrates the feasibility of 2D perovskite neuromorphic device with enhanced biological plausibility in the approaching post‐Moore era.
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