用于断裂网络骨干切除的多聚合图神经网络

IF 2.1 3区 地球科学 Q3 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS
Tianji Zheng, Chengcheng Sun, Jian Zhang, Jiawei Ye, Xiaobin Rui, Zhixiao Wang
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引用次数: 0

摘要

精确分析大型离散断裂网络中的流动和传输行为需要耗费大量计算资源。幸运的是,最近的研究表明,大部分流动和传输都发生在网络中的一个小骨干内,识别骨干来替代原始网络可以大大减少计算消耗。然而,现有的基于机器学习的方法主要关注断裂本身的特征来评估断裂的重要性,断裂网络的局部结构信息并没有得到充分利用。更重要的是,这些机器学习方法既无法控制识别出的骨干网规模,也无法确保骨干网的连通性。为了解决这些问题,我们提出了一种名为多聚合图神经网络(MA-GNN)的深度学习模型,用于识别离散断裂网络的主干网。简而言之,MA-GNN 使用多个聚合器聚合邻居的结构特征,从而生成一个归纳嵌入,以评估整个断裂网络中每个节点的临界度得分。然后,提出一种可控制骨干网大小和连通性的贪婪算法,根据临界度得分识别骨干网。实验结果表明,MA-GNN 确定的骨干网可以恢复原始网络的传输特性,性能优于最先进的基线。此外,MA-GNN 还能识别出具有较高 Kendall's \(\tau \)相关系数和 Jaccard 相似系数的有影响力断裂。我们提出的 MA-GNN 具有大小控制能力,可以通过选择合适的骨干网大小在准确性和计算效率之间实现有效平衡。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A multi-aggregator graph neural network for backbone exaction of fracture networks

Accurately analyzing the flow and transport behavior in a large discrete fracture network is computationally expensive. Fortunately, recent research shows that most of the flow and transport occurs within a small backbone in the network, and identifying the backbone to replace the original network can greatly reduce computational consumption. However, the existing machine learning based methods mainly focus on the features of the fracture itself to evaluate the importance of the fracture, the local structural information of the fracture network is not fully utilized. More importantly, these machine learning methods can neither control the identified backbone’s size nor ensure the backbone’s connectivity. To solve these problems, a deep learning model named multi-aggregator graph neural network (MA-GNN) is proposed for identifying the backbone of discrete fracture networks. Briefly, MA-GNN uses multiple aggregators to aggregate neighbors’ structural features and thus generates an inductive embedding to evaluate the criticality score of each node in the entire fracture network. Then, a greedy algorithm, which can control the backbone’s size and connectivity, is proposed to identify the backbone based on the criticality score. Experimental results demonstrate that the backbone identified by MA-GNN can recover the transport characteristics of the original network, outperforming state-of-the-art baselines. In addition, MA-GNN can identify influential fractures with higher Kendall’s \(\tau \) correlation coefficient and Jaccard similarity coefficient. With the ability of size control, our proposed MA-GNN can provide an effective balance between accuracy and computational efficiency by choosing a suitable backbone size.

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来源期刊
Computational Geosciences
Computational Geosciences 地学-地球科学综合
CiteScore
6.10
自引率
4.00%
发文量
63
审稿时长
6-12 weeks
期刊介绍: Computational Geosciences publishes high quality papers on mathematical modeling, simulation, numerical analysis, and other computational aspects of the geosciences. In particular the journal is focused on advanced numerical methods for the simulation of subsurface flow and transport, and associated aspects such as discretization, gridding, upscaling, optimization, data assimilation, uncertainty assessment, and high performance parallel and grid computing. Papers treating similar topics but with applications to other fields in the geosciences, such as geomechanics, geophysics, oceanography, or meteorology, will also be considered. The journal provides a platform for interaction and multidisciplinary collaboration among diverse scientific groups, from both academia and industry, which share an interest in developing mathematical models and efficient algorithms for solving them, such as mathematicians, engineers, chemists, physicists, and geoscientists.
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