论文标题
使用深卷积生成对抗网络的连通性排水网络生成
Connectivity-informed Drainage Network Generation using Deep Convolution Generative Adversarial Networks
论文作者
论文摘要
随机网络建模通常受到高计算成本的限制,以产生大量网络,足以进行有意义的统计评估。在这项研究中,深度卷积生成对抗网络(DCGAN)被应用以快速从已经生成的网络样本中复制排水网络,而无需重复的随机网络模型GIBB模型的重复长期建模。特别是,我们开发了一种新型连接性的方法,该方法将引流网络图像转换为排水网络每个节点上流的方向信息,然后将其转换为多个二元层,其中存储了排水网络中的节点之间的连接约束。比较了接受三种不同类型的训练样本训练的DCGAN; 1)原始排水网络图像,2)仅其相应的方向信息,以及3)连通性信息的方向信息。生成的图像的比较表明,新型连接性的方法通过更有效地训练DCGAN并通过其紧凑的网络复杂性和连接性来更好地再现准确的排水网络来优于其他两种方法。这项工作强调了DCGAN可以适用于在地球和物质科学中常见的高对比度图像,而网络,断裂和其他高对比度特征很重要。
Stochastic network modeling is often limited by high computational costs to generate a large number of networks enough for meaningful statistical evaluation. In this study, Deep Convolutional Generative Adversarial Networks (DCGANs) were applied to quickly reproduce drainage networks from the already generated network samples without repetitive long modeling of the stochastic network model, Gibb's model. In particular, we developed a novel connectivity-informed method that converts the drainage network images to the directional information of flow on each node of the drainage network, and then transform it into multiple binary layers where the connectivity constraints between nodes in the drainage network are stored. DCGANs trained with three different types of training samples were compared; 1) original drainage network images, 2) their corresponding directional information only, and 3) the connectivity-informed directional information. Comparison of generated images demonstrated that the novel connectivity-informed method outperformed the other two methods by training DCGANs more effectively and better reproducing accurate drainage networks due to its compact representation of the network complexity and connectivity. This work highlights that DCGANs can be applicable for high contrast images common in earth and material sciences where the network, fractures, and other high contrast features are important.