Decision-making and control with diffractive optical networks
Jumin Qiu, Shuyuan Xiao, Lujun Huang, Andrey Miroshnichenko, Dejian, Zhang, Tingting Liu, Tianbao Yu

TL;DR
This paper introduces diffractive optical networks integrated with deep reinforcement learning to enable high-speed, low-power decision-making and control, demonstrated through classic game playing and experimental implementation.
Contribution
It presents a novel approach combining optical networks with reinforcement learning for decision-making and control, extending their application beyond recognition tasks.
Findings
Successfully implemented optical networks for decision-making in classic games
Demonstrated experimental Tic-Tac-Toe playing with optical devices
Achieved high-speed, low-power AI decision-making with optical hardware
Abstract
The ultimate goal of artificial intelligence is to mimic the human brain to perform decision-making and control directly from high-dimensional sensory input. Diffractive optical networks provide a promising solution for implementing artificial intelligence with high-speed and low-power consumption. Most of the reported diffractive optical networks focus on single or multiple tasks that do not involve environmental interaction, such as object recognition and image classification. In contrast, the networks capable of performing decision-making and control have not yet been developed to our knowledge. Here, we propose using deep reinforcement learning to implement diffractive optical networks that imitate human-level decision-making and control capability. Such networks taking advantage of a residual architecture, allow for finding optimal control policies through interaction with the…
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Taxonomy
TopicsNeural Networks and Reservoir Computing · Optical Network Technologies · Semiconductor Lasers and Optical Devices
