使用深度学习驱动的优化器网络的基于图像的拓扑优化

IF 3.9 2区 工程技术 Q1 ENGINEERING, CIVIL
Masoomeh Arobli, Nasser Taghizadieh, Ali Hadidi, Saman Yaghmaei-Sabegh
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引用次数: 0

摘要

为了解决计算成本高、参数调优复杂和收敛性差的问题,本文引入了Optimizer-Net模型。这种开创性的深度神经网络利用基于图像的数据集取代显式编程和冗长,耗时和迭代的数值计算,无缝地将计算机视觉集成到拓扑优化中。我们开发了一种基于结构行为生成图像数据集的基准方法。该数据集由两组图像组成:一组是由归一化能量衍生的能量轮廓图像,代表了结构在施加载荷下的行为;另一组是相应的优化结构图像,展示了纹理、颜色和轮廓变化等多种特征,为模型的训练提供了丰富的基础。Optimizer-Net分析能量轮廓数据的高维信息,从图像中提取潜在特征,利用优化的结构作为掩模,有效地指导训练过程。使用两个损失函数:均方误差(MSE)和交叉熵对模型进行评估。结果表明,训练和验证损失持续减少,优化性能优越,MSE预测最优结构的准确率达到97.123 %。优化时间显著提高,MSE和Cross-Entropy分别减少到0.219 秒和0.244 秒。通过规避典型的约束,如网格、迭代循环和计算密集型分析,Optimizer-Net提高了流程效率,提供了近乎即时的结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Image-based topology optimization using a deep learning-driven optimizer network
To tackle the challenges of high computational costs, complex parameter tuning, and convergence, this paper introduces the Optimizer-Net model. This groundbreaking deep neural network leverages image-based datasets to supersede explicit programming and lengthy, time-consuming, and iterative numerical computations, seamlessly integrating computer vision into topology optimization. We developed a benchmark method for generating image datasets based on structural behavior. The dataset comprises pairs of images: energy contour images derived from normalized energy, representing structural behavior under applied loads, and the corresponding optimized structure images to showcase diverse features, including textures, colors, and contour variations, providing a rich foundation for training the model. Optimizer-Net analyzes the high-dimensional information of energy contour data and extracts latent features from the images, utilizing optimized structures as a mask to effectively guide the training process. The model was evaluated using two loss functions: Mean Squared Error (MSE) and Cross-Entropy. Results show consistently decreasing training and validation losses, demonstrating superior optimization performance, with MSE achieving 97.123 % accuracy in predicting optimal structures. Optimization times were improved significantly, reducing to 0.219 seconds with MSE and 0.244 seconds with Cross-Entropy. By circumventing typical constraints like mesh grids, iterative loops, and computationally intensive analyses, Optimizer-Net enhances process efficiency, delivering near-instantaneous results.
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来源期刊
Structures
Structures Engineering-Architecture
CiteScore
5.70
自引率
17.10%
发文量
1187
期刊介绍: Structures aims to publish internationally-leading research across the full breadth of structural engineering. Papers for Structures are particularly welcome in which high-quality research will benefit from wide readership of academics and practitioners such that not only high citation rates but also tangible industrial-related pathways to impact are achieved.
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