Yoon Jaehyun, Doh Jaehyeok
Department of Drone and Robot Convergence, Seoul Cyber University, Seoul, 01133, Republic of Korea.
Department of Mechanical Engineering, Gyeongsang National University, Jinju-si, 52725, Gyeongsangnam-do, Republic of Korea.
Sci Rep. 2025 Jan 16;15(1):2155. doi: 10.1038/s41598-024-84940-w.
This study introduces a novel deep learning-based technique for predicting pressure distribution images, aimed at application in image-based approximate optimal design. The proposed approach integrates both unsupervised and supervised learning paradigms, employing autoencoders (AE) for the unsupervised component and fully connected neural networks (FNN) for the supervised component. A surrogate model based on 2D image data was developed, enabling a comparative analysis of three distinct methods: the conventional AE, the convolutional autoencoder (CAE), and a hybrid CAE, which combines the CAE with a conventional AE. Extensive experiments demonstrated that the CAE method achieved the highest learning capability and restoration rate for pressure distribution images of 2D airfoils. The compressed latent image data were utilized as inputs for the FNN, which was trained to predict latent features. These features were decoded to forecast the corresponding pressure distribution images. The results showed excellent concordance with those derived from computational fluid dynamics (CFD) simulations, achieving a match rate exceeding 99.99%. This methodology significantly simplifies and accelerates image prediction, rendering it feasible without requiring specialized CFD knowledge. Moreover, it enhances accuracy while streamlining the neural network structure. Consequently, it provides foundational technology for image data-based optimization, establishing a platform for future AI-driven design and optimization advancements.
本研究介绍了一种基于深度学习的预测压力分布图像的新技术,旨在应用于基于图像的近似最优设计。所提出的方法整合了无监督和有监督学习范式,无监督部分采用自动编码器(AE),有监督部分采用全连接神经网络(FNN)。开发了一种基于二维图像数据的代理模型,能够对三种不同方法进行对比分析:传统AE、卷积自动编码器(CAE)以及将CAE与传统AE相结合的混合CAE。大量实验表明,CAE方法在二维翼型压力分布图像方面具有最高的学习能力和恢复率。压缩后的潜在图像数据被用作FNN的输入,FNN经过训练以预测潜在特征。这些特征被解码以预测相应的压力分布图像。结果显示与计算流体动力学(CFD)模拟得出的结果具有高度一致性,匹配率超过99.99%。该方法显著简化并加速了图像预测,无需专门的CFD知识即可实现。此外,它在简化神经网络结构的同时提高了准确性。因此,它为基于图像数据的优化提供了基础技术,为未来人工智能驱动的设计和优化进步建立了一个平台。