Physics-informed recurrent neural network for time dynamics in optical resonances

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作者
Yingheng Tang
Jichao Fan
Xinwei Li
Jianzhu Ma
Minghao Qi
Cunxi Yu
Weilu Gao
机构
[1] University of Utah,Department of Electrical and Computer Engineering
[2] Purdue University,School of Electrical and Computer Engineering
[3] California Institute of Technology,Division of Physics, Mathematics and Astronomy
[4] Peking University,Institute of Artificial Intelligence
[5] Beijing Institute of General Artificial Intelligence,undefined
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Resonance structures and features are ubiquitous in optical science. However, capturing their time dynamics in real-world scenarios suffers from long data acquisition time and low analysis accuracy due to slow convergence and limited time windows. Here we report a physics-informed recurrent neural network to forecast the time-domain response of optical resonances and infer corresponding resonance frequencies by acquiring a fraction of the sequence as input. The model is trained in a two-step multi-fidelity framework for high-accuracy forecast, using first a large amount of low-fidelity physical-model-generated synthetic data and then a small set of high-fidelity application-specific data. Through simulations and experiments, we demonstrate that the model is applicable to a wide range of resonances, including dielectric metasurfaces, graphene plasmonics and ultra-strongly coupled Landau polaritons, where our model captures small signal features and learns physical quantities. The demonstrated machine-learning algorithm can help to accelerate the exploration of physical phenomena and device design under resonance-enhanced light–matter interaction.
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页码:169 / 178
页数:9
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