针对数据稀缺的辐射传热应用的生成对抗网络

Juan José García-Esteban, Juan Carlos Cuevas, Jorge Bravo-Abad
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摘要

生成对抗网络(GANs)是生成人工智能领域最强大、最多才多艺的技术之一。在这项工作中,我们报告了生成对抗网络在数据稀缺的辐射热传输应用领域合成光谱数据生成中的应用,这是一个以前从未报道过的应用领域。我们将所提出的方法应用于涉及多层双曲超材料的近场辐射传热领域中的一个说明性问题,从而对其进行了演示。我们发现,要成功生成光谱数据,需要对传统的 GANs 做两处修改:(i) 引入 Wasserstein GANs(WGANs)以避免模式坍缩;(ii) 对 WGANs 进行调节以获得生成数据的准确标签。我们的研究表明,一个简单的前馈神经网络(FFNN)在使用 CWGAN 生成的数据进行扩充后,在数据可用性有限的条件下,其性能会显著提高。此外,我们还证明了 CWGAN 可以作为一种替代模型,在低数据条件下的性能要优于简单的前馈神经网络。总之,这项工作有助于凸显生成式机器学习算法在图像生成和优化之外的科学应用中的潜力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Generative adversarial networks for data-scarce radiative heat transfer applications
Generative adversarial networks (GANs) are one of the most robust and versatile techniques in the field of generative artificial intelligence. In this work, we report on an application of GANs in the domain of synthetic spectral data generation for data-scarce radiative heat transfer applications, an area where their use has not been previously reported. We demonstrate the proposed approach by applying it to an illustrative problem within the realm of near-field radiative heat transfer involving a multilayered hyperbolic metamaterial. We find that a successful generation of spectral data requires two modifications to conventional GANs: (i) the introduction of Wasserstein GANs (WGANs) to avoid mode collapse, and, (ii) the conditioning of WGANs to obtain accurate labels for the generated data. We show that a simple feed-forward neural network (FFNN), when augmented with data generated by a CWGAN, enhances significantly its performance under conditions of limited data availability. In addition, we show that CWGANs can act as a surrogate model with improved performance in the low-data regime with respect to simple FFNNs. Overall, this work contributes to highlight the potential of generative machine learning algorithms in scientific applications beyond image generation and optimization.
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