TY - JOUR
T1 - Advancing Intelligent Neuromorphic Computing
T2 - Recent Progress in All-Optical-Controlled Artificial Synaptic Devices
AU - Yao, Jian
AU - Teng, Yu
AU - Wang, Qinan
AU - He, Yuqi
AU - Liu, Liwei
AU - Zhao, Chun
AU - Kang, Lixing
N1 - Publisher Copyright:
© 2025 American Chemical Society
PY - 2025/7/29
Y1 - 2025/7/29
N2 - The rapid development of artificial intelligence and the increasing volume of generated data have heightened the demand for computational power. However, the traditional von Neumann architecture encounters performance bottlenecks due to frequent data transfers and high energy consumption. A promising solution is integrating functions such as perception, storage, and processing into a single device, known as neuromorphic devices. Currently, most neuromorphic devices rely on fully electronic or electro-optic hybrid control, which limits their speed and energy efficiency. In contrast, all-optical-controlled neuromorphic devices provide faster data transmission, lower energy consumption, and better scalability. This review analyzes the latest advancements in all-optical-controlled neuromorphic devices, with a particular focus on the exploration of materials. It also presents a detailed analysis of the physical mechanisms that underpin all-optical-controlled neuromorphic computing, offering insights into the fundamental operation of these devices. Unlike previous reviews, which primarily focus on the general characteristics of neuromorphic devices, this work examines the contributions of materials and all-optical-controlled mechanisms in improving efficiency and scalability. Additionally, the diverse applications of all-optical-controlled neuromorphic devices in optical logic gates, visual perception, and brain-inspired computing are discussed, illustrating their potential to influence computational paradigms.
AB - The rapid development of artificial intelligence and the increasing volume of generated data have heightened the demand for computational power. However, the traditional von Neumann architecture encounters performance bottlenecks due to frequent data transfers and high energy consumption. A promising solution is integrating functions such as perception, storage, and processing into a single device, known as neuromorphic devices. Currently, most neuromorphic devices rely on fully electronic or electro-optic hybrid control, which limits their speed and energy efficiency. In contrast, all-optical-controlled neuromorphic devices provide faster data transmission, lower energy consumption, and better scalability. This review analyzes the latest advancements in all-optical-controlled neuromorphic devices, with a particular focus on the exploration of materials. It also presents a detailed analysis of the physical mechanisms that underpin all-optical-controlled neuromorphic computing, offering insights into the fundamental operation of these devices. Unlike previous reviews, which primarily focus on the general characteristics of neuromorphic devices, this work examines the contributions of materials and all-optical-controlled mechanisms in improving efficiency and scalability. Additionally, the diverse applications of all-optical-controlled neuromorphic devices in optical logic gates, visual perception, and brain-inspired computing are discussed, illustrating their potential to influence computational paradigms.
KW - all-optical-controlled
KW - artificial synapse
KW - brain-inspired devices
KW - low-dimensional materials
KW - neuromorphic computing
KW - neuromorphic vision sensors
KW - optical logic gates
KW - van der Waals heterostructures
UR - https://www.scopus.com/pages/publications/105012785348
U2 - 10.1021/acsnano.5c05240
DO - 10.1021/acsnano.5c05240
M3 - Review article
C2 - 40679440
AN - SCOPUS:105012785348
SN - 1936-0851
VL - 19
SP - 26320
EP - 26346
JO - ACS Nano
JF - ACS Nano
IS - 29
ER -