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Establishment and extension of digital aggregate database using auxiliary classifier Wasserstein GAN with gradient penalty

机译:使用辅助分类器Wasserstein GaN的数字聚合数据库的建立和扩展与渐变惩罚

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摘要

For road construction, the morphological characteristics of coarse aggregates such as angularity and sphericity have a considerable influence on asphalt pavement performance. In traditional aggregate simulation processes, images of real coarse grains are captured, and their parameters are extracted manually for reproducing them in a numerical simulation such as Discrete Element Modeling (DEM). Generative Adversarial Networks can generate aggregate images, which can be stored in the Aggregate DEM Database directly. In this paper, it has been demonstrated that applying Auxiliary Classifier Wasserstein GANs with gradient penalty (ACWGAN-gp) is reliable and efficient for the establishment of an aggregate image database. In addition, the distribution of original images was compared with that of images generated based on ACGAN and ACWGAN-gp models. Generated images were validated through obtaining identifiable edge coordinates and represented as DEM input in the simulation process. The results prove that the ACWGAN-gp approach can be used for generating aggregate images for the DEM database. It successfully generates high-quality images of aggregates with a representative distribution of morphologies used for DEM simulation. This work shows convenience and efficiency for machine learning applications in the road construction field.
机译:对于道路结构,粗骨料的形态学特性如角度和球形,对沥青路面性能具有相当大的影响。在传统的聚合模拟过程中,捕获真实粗粒的图像,并且手动提取它们的参数,以在诸如离散元素建模(DEM)的数值模拟中再现它们。生成的对抗性网络可以生成聚合图像,可以直接存储在聚合DEM数据库中。在本文中,已经证明应用具有梯度惩罚(ACWAN-GP)的辅助分类器Wassersein GAN是可靠且有效的,用于建立聚合图像数据库。此外,将原始图像的分布与基于acgar和Acwgan-GP模型产生的图像进行了比较。通过获取可识别的边缘坐标并表示为模拟过程中的DEM输入来验证生成的图像。结果证明了ACWAN-GP方法可用于为DEM数据库生成聚合图像。它成功地生成了聚集体的高质量图像,具有用于DEM仿真的形态的代表性分布。这项工作显示了道路施工领域机器学习应用的便利性和效率。

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