Dynamic Inverse Design of Broadband Metasurfaces with Synthetical Neural Networks

Author:

Jia Yuetian123,Fan Zhixiang123,Qian Chao123ORCID,del Hougne Philipp4ORCID,Chen Hongsheng123ORCID

Affiliation:

1. ZJU‐UIUC Institute Interdisciplinary Center for Quantum Information State Key Laboratory of Extreme Photonics and Instrumentation Zhejiang University Hangzhou 310027 China

2. ZJU‐Hangzhou Global Science and Technology Innovation Center Key Lab. of Advanced Micro/Nano Electronic Devices & Smart Systems of Zhejiang Zhejiang University Hangzhou 310027 China

3. Jinhua Institute of Zhejiang University Zhejiang University Jinhua 321099 China

4. IETR‐UMR 6164 CNRS Univ Rennes Rennes F‐35000 France

Abstract

AbstractFor over 35 years of research, the debate about the systematic compositionality of neural networks remains unchanged, arguing that existing artificial neural networks are inadequate cognitive models. Recent advancements in deep learning have significantly shaped the landscape of popular domains, however, the systematic combination of previously trained neural networks remains an open challenge. This study presents how to dynamically synthesize a neural network for the design of broadband electromagnetic metasurfaces. The underlying mechanism relies on an assembly network to adaptively integrate pre‐trained inherited networks in a transparent manner that corresponds to the metasurface assembly in physical space. This framework is poised to curtail data requirements and augment network flexibility, promising heightened practical utility in complex composition‐based tasks. Importantly, the intricate coupling effects between different metasurface segments are accurately captured. The approach for two broadband metasurface inverse design problems is exemplified, reaching accuracies of 96.7% and 95.5%. Along the way, the importance of suitably formatting the spectral data is highlighted to capture sharp spectral features. This study marks a significant leap forward in inheriting pre‐existing knowledge in neural‐network‐based inverse design, improving its adaptability for applications involving dynamically evolving tasks.

Funder

National Natural Science Foundation of China

Key Research and Development Program of Zhejiang Province

Fundamental Research Funds for the Central Universities

Publisher

Wiley

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