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Accelerated optimization of curvilinearly stiffened panels using deep learning

机译:利用深度学习加速优化曲线上加强面板的优化

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摘要

An important objective for the aerospace industry is to design robust and fuel efficient aerospace structures. Advanced manufacturing techniques like additive manufacturing have allowed structural designers to make use of curvilinear stiffeners for achieving better designs of stiffened plate and shell structures. Finite Element Analysis (FEA) based standard optimization methods for aircraft panels with arbitrary curvilinear stiffeners are computationally expensive. The main reason for employing many of these standard optimization methods is the ease of their integration with FEA. However, each optimization requires multiple computationally expensive FEA evaluations, making their use impractical at times. To accelerate optimization, the use of Deep Neural Networks (DNNs) is proposed to approximate the FEA buckling response, computed using MSC NASTRAN. The finite element model of a plate is verified with those found in the literature. Later, a Python script is used to generate a large data-set using parallel processing. The 80%, 10% and 10% of the generated data-set are used for training, validation and testing of DNNs, respectively. The results show that DNNs, optimized using Adam optimizer, obtained an accuracy of 95% on the test set for approximating FEA response within 10% of the actual value. To compare the efficiency of the DNN, the trained DNN is used in the optimization of curvilinearly stiffened panels by replacing the conventional FEA. The DNN accelerated the optimization by a factor of nearly 200. The presented work demonstrates the potential of DNN-based machine learning algorithms for accelerating the optimization of curvilinearly stiffened panels.
机译:航空航天行业的一个重要目标是设计强大,省油的航空航天结构。高级制造技术,如添加剂制造,使结构设计师能够利用曲线加强筋来实现更好的加强板和壳体结构设计。基于有限元分析(FEA)具有任意曲线加强筋的飞机面板的标准优化方法是计算昂贵的。采用许多这些标准优化方法的主要原因是他们与FEA集成的便利。然而,每种优化需要多种计算昂贵的FEA评估,使其在时代不切实际。为了加速优化,提出了使用深神经网络(DNN)以近似使用MSC Nastran计算的FEA屈曲响应。板的有限元模型与文献中的那些验证。稍后,使用Python脚本使用并行处理生成大数据集。 80%,10%和10%的生成数据集用于分别用于培训,验证和测试DNN。结果表明,使用ADAM优化器优化的DNN,在测试集中获得了95%的精度,用于在实际值的10%内近似FEA响应。为了比较DNN的效率,训练的DNN通过更换传统的FEA来优化曲线上加强的面板。 DNN加速了近200倍的优化。所呈现的工作表明了基于DNN的机器学习算法的潜力,用于加速曲线上加强面板的优化。

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