DeepJEB:基于三维深度学习的合成喷气发动机支架数据集

Seongjun Hong, Yongmin Kwon, Dongju Shin, Jangseop Park, Namwoo Kang
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引用次数: 0

摘要

人工智能(AI)的最新进展极大地影响了包括机械工程在内的各个领域。然而,用于结构分析的高质量、多样化数据集的开发仍有待改进。虽然模拟喷气发动机支架数据集等传统数据集很有用,但它们受制于样本数量较少,必须加以改进才能开发出稳健的数据驱动代用模型。本研究提出了 DeepJEB 数据集,该数据集利用深度生成模型和自动化工程仿真管道创建,以克服这些挑战。此外,本研究还提供了全面的三维几何图形及其相应的结构分析数据。主要实验验证了 DeepJEB 数据集的有效性,表明在该数据上训练的代用模型的预测准确性和可靠性有了显著提高。与传统数据集相比,增强后的数据集显示出更广阔的设计空间和更好的泛化能力。这些发现凸显了 DeepJEB 作为开发结构工程可靠代用模型的基准数据集的潜力。DeepJEB 数据集支持先进的建模技术,如图神经网络(GNN)和高维卷积网络(CNN),利用节点级现场数据进行精确预测。该数据集将推动工程设计应用领域的创新,实现更准确、更高效的结构性能预测。DeepJEB 数据集可在以下网址公开访问: https://www.narnia.ai/dataset
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DeepJEB: 3D Deep Learning-based Synthetic Jet Engine Bracket Dataset
Recent advancements in artificial intelligence (AI) have significantly influenced various fields, including mechanical engineering. Nonetheless, the development of high-quality, diverse datasets for structural analysis still needs to be improved. Although traditional datasets, such as simulated jet engine bracket dataset, are useful, they are constrained by a small number of samples, which must be improved for developing robust data-driven surrogate models. This study presents the DeepJEB dataset, which has been created using deep generative models and automated engineering simulation pipelines, to overcome these challenges. Moreover, this study provides comprehensive 3D geometries and their corresponding structural analysis data. Key experiments validated the effectiveness of the DeepJEB dataset, demonstrating significant improvements in the prediction accuracy and reliability of surrogate models trained on this data. The enhanced dataset showed a broader design space and better generalization capabilities than traditional datasets. These findings highlight the potential of DeepJEB as a benchmark dataset for developing reliable surrogate models in structural engineering. The DeepJEB dataset supports advanced modeling techniques, such as graph neural networks (GNNs) and high-dimensional convolutional networks (CNNs), leveraging node-level field data for precise predictions. This dataset is set to drive innovation in engineering design applications, enabling more accurate and efficient structural performance predictions. The DeepJEB dataset is publicly accessible at: https://www.narnia.ai/dataset
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