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Emerging Optoelectronic Devices for Brain‐Inspired Computing

Lingxiang Hu, Xia Zhuge, Jingrui Wang, Xianhua Wei, Li Zhang, Yang Chai, Xiaoyong Xue, Zhizhen Ye, Fei Zhuge

2024Advanced Electronic Materials33 citationsDOIOpen Access PDF

Abstract

Abstract Brain‐inspired neuromorphic computing is recognized as a promising technology for implementing human intelligence in hardware. Neuromorphic devices, including artificial synapses and neurons, are regarded as essential components for the construction of neuromorphic hardware systems. Recently, optoelectronic neuromorphic devices are increasingly highlighted due to their potential applications in next‐generation artificial visual systems, attributed to their integrated sensing, computing, and memory capabilities. In this review, recent advancements in optoelectronic synapses and neurons are examined, with an emphasis on their structural characteristics, operational principles, and the replication of neuromorphic functions. For optoelectronic synaptic devices, such as memristor‐ and transistor‐based ones, attention is given to the two primary weight update modes: the light‐electricity synergistic mode and the all‐optical mode. Optoelectronic neurons are discussed in terms of different device types, including threshold switch neurons and semiconductor laser neurons. Last, the challenges that impede the progress of optoelectronic neuromorphic devices are identified, and potential future directions are suggested.

Topics & Concepts

Materials scienceNanotechnologyOptoelectronicsAdvanced Memory and Neural ComputingEEG and Brain-Computer InterfacesNeuroscience and Neural Engineering