Zhongzheng Zhang , Hongwei Li , Yabin Hu , Yongquan Liu , Yongbo Li , Bing Li
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引用次数: 0
Abstract
The burgeoning field of metamaterials and metasurfaces has been significantly propelled by the integration of deep learning (DL) techniques, enabling a rapid artificial design with tailored exotic properties. However, the DL-based inverse design strategies frequently face reliability issues when dealing with limited sample datasets. To overcome this challenge, we propose a few-sample information-enhanced inverse design framework specifically developed for the efficient design of columnar elastic metasurfaces, to fulfill customized transmission modulation requirements. The novelty of our approach lies in developing an information-enhanced convolutional neural network (IECNN) integrating substructure combinations, stacking effects, and CBAM, which provide more comprehensive and refined input data to substantially improve the prediction performance and generalization capability. So, the IECNN can precisely replicate FEM transmission calculations with about the 105 times computational speedup using the few-sample, significantly reducing computational time and resources. By integrating IECNN with a genetic algorithm, an automated inverse design framework is established to yield the metasurface structure with specified target transmission performance in only 3.5 min. Various numerical simulations and experimental measurements demonstrate its practicality and effectiveness. Furthermore, the physical mechanism behind the customized transmission properties is elucidated to offer deeper insights into the design process. Our approach not only ensures reliable and superior design outcomes but also diminishes the dependence on extensive labeled datasets, presenting a pragmatic framework for metasurface inverse design, particularly valuable in few-sample scenarios.
期刊介绍:
The International Journal of Mechanical Sciences (IJMS) serves as a global platform for the publication and dissemination of original research that contributes to a deeper scientific understanding of the fundamental disciplines within mechanical, civil, and material engineering.
The primary focus of IJMS is to showcase innovative and ground-breaking work that utilizes analytical and computational modeling techniques, such as Finite Element Method (FEM), Boundary Element Method (BEM), and mesh-free methods, among others. These modeling methods are applied to diverse fields including rigid-body mechanics (e.g., dynamics, vibration, stability), structural mechanics, metal forming, advanced materials (e.g., metals, composites, cellular, smart) behavior and applications, impact mechanics, strain localization, and other nonlinear effects (e.g., large deflections, plasticity, fracture).
Additionally, IJMS covers the realms of fluid mechanics (both external and internal flows), tribology, thermodynamics, and materials processing. These subjects collectively form the core of the journal's content.
In summary, IJMS provides a prestigious platform for researchers to present their original contributions, shedding light on analytical and computational modeling methods in various areas of mechanical engineering, as well as exploring the behavior and application of advanced materials, fluid mechanics, thermodynamics, and materials processing.