On-Demand Inverse Design of Metamaterials Using Deep Neural Networks with Bayesian Optimization

verfasst von
Than V. Tran, S. S. Nanthakumar, Timon Rabczuk, Xiaoying Zhuang
Abstract

Recent advances in metamaterial design highlight methodologies tailoring metamaterials to achieve target behaviors in specific applications. This investigation presents a data-driven design approach using deep neural networks for the on-demand inverse design of metamaterials to address limitations inherent in traditional methods. We propose an efficient Bayesian optimization framework for deep neural network hyperparameter optimization. The desired properties being the target bandgap width and bandgap midfrequency, the design model proposes candidate unit cell topologies. The methodology demonstrates exceptional accuracy in both the forward prediction and inverse design of 2-dimensional metamaterial structures, with particular emphasis on bandgap characteristics. Statistical analysis reveals R2 coefficients exceeding 0.99, validating the model’s predictive capabilities. The demonstrated framework represents a substantial advancement in computational metamaterial design, offering potential applications across multiple materials science and engineering domains.

Organisationseinheit(en)
Institut für Photonik
Externe Organisation(en)
Bauhaus-Universität Weimar
Tongji University
Typ
Artikel
Journal
Intelligent Computing
Band
4
Anzahl der Seiten
10
Publikationsdatum
19.08.2025
Publikationsstatus
Veröffentlicht
Peer-reviewed
Ja
ASJC Scopus Sachgebiete
Mensch-Maschine-Interaktion, Maschinelles Sehen und Mustererkennung, Angewandte Informatik, Elektrotechnik und Elektronik, Artificial intelligence
Elektronische Version(en)
https://doi.org/10.34133/icomputing.0139 (Zugang: Offen)
 

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