An ensemble learning paradigm for subsurface stratigraphy from sparse measurements and augmented training images

IF 6.7 1区 工程技术 Q1 CONSTRUCTION & BUILDING TECHNOLOGY
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Abstract

The performance of computer vision-based techniques for stratigraphic modeling relies heavily on qualified training images to capture the complex stratigraphic connectivity. In geotechnical engineering, only limited training images are available for a specific site. Stochastic simulation modelling based on limited training data may be biased as the collected images that reflect prior geological knowledge may not encompass all potential stratigraphic patterns. Therefore, it is crucial to establish a high-quality, domain-specific training image database for effective stratigraphic modelling. In this study, an ensemble learning paradigm is proposed to tackle this issue and develop subsurface geological cross-sections from sparse data by reconstruction and redistribution of stratigraphic statistics revealed from limited training images. A domain-specific training image database is first established using generative adversarial networks (GAN) that enable the generation of arbitrary sized image samples from a single training image. Subsequently, multiple qualified image samples that are compatible with site-specific data are adaptively selected and utilized for the ensemble learning of geological cross-sections. The performance of the proposed framework is demonstrated using real geological cross-sections collected from a reclamation site and a tunnelling project in Hong Kong. The results indicate that the proposed method can effectively generate diverse image samples that encompass stratigraphic features beyond those reflected in a single training image. More importantly, the ensemble learning framework can capture the complex spatial stratigraphic connectivity of soil layers with enhanced prediction accuracy.

利用稀疏测量和增强训练图像进行地下地层学的集合学习范例
基于计算机视觉的地层建模技术在很大程度上依赖于合格的训练图像来捕捉复杂的地层连接。在岩土工程中,特定地点只能获得有限的训练图像。基于有限训练数据的随机模拟建模可能会出现偏差,因为所收集的反映先前地质知识的图像可能无法涵盖所有潜在的地层模式。因此,建立一个高质量、特定领域的训练图像数据库对于有效的地层建模至关重要。本研究提出了一种集合学习范式来解决这一问题,并通过重建和重新分配从有限的训练图像中揭示的地层统计数据,从稀疏数据中开发出地下地质横断面。首先使用生成对抗网络(GAN)建立特定领域的训练图像数据库,该网络可从单个训练图像生成任意大小的图像样本。随后,自适应地选择多个与特定地点数据相匹配的合格图像样本,并将其用于地质断面的集合学习。我们利用从香港的一个填海工地和一个隧道项目中收集到的真实地质断面图,演示了拟议框架的性能。结果表明,建议的方法可以有效地生成多样化的图像样本,这些样本包含的地层特征超出了单个训练图像所反映的特征。更重要的是,集合学习框架能捕捉土壤层复杂的空间地层连接,提高预测精度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Tunnelling and Underground Space Technology
Tunnelling and Underground Space Technology 工程技术-工程:土木
CiteScore
11.90
自引率
18.80%
发文量
454
审稿时长
10.8 months
期刊介绍: Tunnelling and Underground Space Technology is an international journal which publishes authoritative articles encompassing the development of innovative uses of underground space and the results of high quality research into improved, more cost-effective techniques for the planning, geo-investigation, design, construction, operation and maintenance of underground and earth-sheltered structures. The journal provides an effective vehicle for the improved worldwide exchange of information on developments in underground technology - and the experience gained from its use - and is strongly committed to publishing papers on the interdisciplinary aspects of creating, planning, and regulating underground space.
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