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Domain Knowledge Assisted Training Dataset Generation for Metasurface Designs

机译:域名知识辅助培训DataSet生成Metasurface Designs

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Domain knowledge assisted training dataset generation for deep learning aided metasurface designs is investigated. By combining the domain knowledge of metasurface from the designer and the advanced machine learning (ML) technique, an efficient training dataset generation approach has been successfully achieved. Unlike most existing metasurface generative designs that allow for arbitrary target pattern generation, which results in a time-consuming or even nonconvergence model training process, the proposed method takes the full advantages of the prior knowledge from designer to reduce the target solution space greatly, leading to reduced design cycles and higher ex-plainabilities of the designs. The proposed ML model combines generative adversarial network (GAN) and variational autoen-coder (VAE) as an encoder to transfer the original data into the latent space, which greatly improves the design efficiency as demonstrated in the validation results.
机译:调查了域知识辅助培训DateSet DEADSEDED METASURFACE设计的生成。 通过将Metasurface的域知识与设计者和先进的机器学习(ML)技术相结合,已经成功实现了有效的训练数据集生成方法。 与大多数现有的元表面生成设计不同,允许任意目标模式生成,这导致耗时甚至是非反感模型训练过程,所提出的方法从设计人员那里获得了现有知识的完全优势,从而大大减少目标解决方案空间,导致 减少设计周期和更高的设计前的防范性。 所提出的ML模型将生成的对抗性网络(GAN)和变分自动编码器(VAE)与编码器相结合,以将原始数据转换为潜伏空间,这大大提高了验证结果中所示的设计效率。

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