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首页> 外文期刊>Water resources research >Predicting CO_2 Plume Migration in Heterogeneous Formations Using Conditional Deep Convolutional Generative Adversarial Network
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Predicting CO_2 Plume Migration in Heterogeneous Formations Using Conditional Deep Convolutional Generative Adversarial Network

机译:使用条件深度卷积生成对抗网络预测异质地层中CO_2羽流运移

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摘要

Numerical simulation of flow and transport in heterogeneous formations has long been studied, especially for uncertainty quantification and risk assessment. The high computational cost associated with running large-scale numerical simulations in a Monte Carlo sense has motivated the development of surrogate models, which aim to capture the important input-output relations of physics-based models but require only a fraction of the cost of full model runs. In this work, we formulate a conditional deep convolutional generative adversarial network (cDC-GAN) surrogate model to learn the dynamic functional mappings in multiphase models. The cDC-GAN belongs to a class of semisupervised learning methods that can be used to learn the data generation processes. Like the original GAN, a main strength of the cDC-GAN is that it includes a self-training scheme for improving the quality of generative modeling in a game theoretic framework, without requiring extensive statistical knowledge and assumptions on input data distributions. In particular, our cDC-GAN model is designed to learn cross-domain mappings between high-dimensional input (e.g., permeability) and output (e.g., phase saturations) pairs, with the ability to incorporate conditioning information (e.g., prediction time). As a use case, we demonstrate the performance of cDC-GAN for predicting the migration of carbon dioxide (CO2) plume in heterogeneous carbon storage reservoirs, which has both numerical and practical significance because of the safe storage requirements now mandated in many countries. Results show that cDC-GAN achieves high accuracy in predicting the spatial and temporal evolution patterns of the injected CO2 plume, as compared to the original results obtained using a compositional reservoir simulator. The performance of cDC-GAN models, trained using the same number of training samples, stays relatively robust when the level of spatial heterogeneity is increased. Our cDC-GAN is pattern based and is not limited by the underlying physics. Thus, it provides a general framework for developing surrogate models, and for conducting uncertainty analyses for a wide range of physics-based models used in both groundwater and subsurface energy exploration applications.
机译:长期以来,人们一直在研究非均质地层中流动和输运的数值模拟,特别是对于不确定性量化和风险评估。在蒙特卡洛意义上进行大规模数值模拟所带来的高计算成本,推动了替代模型的发展,该模型旨在捕获基于物理的模型的重要输入-输出关系,但只需要完整模型成本的一小部分模型运行。在这项工作中,我们制定了条件深度卷积生成对抗网络(cDC-GAN)替代模型,以学习多相模型中的动态功能映射。 cDC-GAN属于一类半监督学习方法,可用于学习数据生成过程。像最初的GAN一样,cDC-GAN的主要优势在于它包括一种用于提高游戏理论框架中生成模型质量的自训练方案,而无需大量的统计知识和对输入数据分布的假设。特别是,我们的cDC-GAN模型旨在学习高维输入(例如,磁导率)和输出(例如,相饱和度)对之间的跨域映射,并具有合并条件信息(例如,预测时间)的能力。作为一个用例,我们演示了cDC-GAN预测异质碳存储库中二氧化碳(CO2)羽流迁移的性能,由于许多国家现在都要求安全存储,因此具有数字和实际意义。结果表明,与使用成分储层模拟器获得的原始结果相比,cDC-GAN在预测注入的二氧化碳羽流的时空演化模式方面具有很高的准确性。当空间异质性水平提高时,使用相同数量的训练样本进行训练的cDC-GAN模型的性能保持相对稳定。我们的cDC-GAN是基于模式的,不受基础物理的限制。因此,它为开发替代模型以及对地下水和地下能量勘探应用中使用的各种基于物理的模型进行不确定性分析提供了一个通用框架。

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  • 来源
    《Water resources research》 |2019年第7期|5830-5851|共22页
  • 作者单位

    Univ Texas Austin Bur Econ Geol Jackson Sch Geosci Austin TX 78712 USA;

    Seoul Natl Univ Coll Engn Dept Energy Resources Engn Seoul South Korea;

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