Inverse design of electromagnetically induced transparency metamaterials based on generative adversarial networks

Handong Li, Jianwei Wang, Chanchan Qin, Tao Lei, Fushan Lu, Qi Li
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Abstract

Abstract The traditional metamaterial design process usually relies on some knowledge experience and simulation tools to continuously optimize by trial and error, until the simulation results meet the requirements. But this trial-and-error approach could be more unstable and time-consuming, especially when there are too many material parameters or the optimization interval is too large. This paper proposes a multi-prediction model for metamaterials, Improved-StarGan based on StarGan with semi-supervised learning, and use an EIT structure as a validation object. The generator can output various material structures according to the input spectrum extremes, and the discriminator can forward predict the spectrum extremes based on the input material structure parameters. Spectral normalization, gradient penalty, and hidden space distance regularization are also used to increase the diversity of its output data at the expense of sacrificing a part of the accuracy of the generator. During model training, the loss values of the training and validation sets converge normally and end up in a small range. Finally, the data was extracted from the test set for model prediction and simulation comparison. Meanwhile, a sample of one of the predicted structures is tested. All the results show that the model predictions have low error and high confidence. the results demonstrate that the method is effective in both inverse multiple structure and forward prediction of metamaterials, which provides a new design idea for the structural design of metamaterials.
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基于生成对抗网络的电磁诱导透明超材料反设计
传统的超材料设计过程通常依靠一定的知识经验和仿真工具,通过试错不断优化,直到仿真结果满足要求。但这种反复试验的方法可能会更加不稳定和耗时,特别是当材料参数太多或优化间隔太大时。本文提出了一种基于半监督学习的改进StarGan超材料多预测模型,并使用EIT结构作为验证对象。发生器根据输入的光谱极值输出各种材料结构,鉴别器根据输入的材料结构参数对光谱极值进行前向预测。谱归一化、梯度惩罚和隐藏空间距离正则化也被用来增加其输出数据的多样性,但代价是牺牲了生成器的一部分精度。在模型训练过程中,训练集和验证集的损失值正常收敛,最终在一个小范围内结束。最后从测试集中提取数据进行模型预测和仿真比较。同时,对其中一个预测结构的样本进行了测试。结果表明,模型预测误差小,置信度高。结果表明,该方法在多元结构逆预测和超材料正演预测中都是有效的,为超材料结构设计提供了一种新的设计思路。
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