Physics-Informed Convolutional Decoder (PICD): A Novel Approach for Direct Inversion of Heterogeneous Subsurface Flow

IF 4.6 1区 地球科学 Q1 GEOSCIENCES, MULTIDISCIPLINARY Geophysical Research Letters Pub Date : 2024-07-09 DOI:10.1029/2024GL108163
Nanzhe Wang, Xiang-Zhao Kong, Dongxiao Zhang
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Abstract

We propose a physics-informed convolutional decoder (PICD) framework for inverse modeling of heterogenous groundwater flow. PICD stands out as a direct inversion method, eliminating the need for repeated forward model simulations. The framework combines data-driven and physics-driven approaches by integrating monitoring data and domain knowledge into the inversion process. PICD utilizes a convolutional decoder to effectively approximate the spatial distribution of hydraulic heads, while Karhunen–Loève expansion (KLE) is employed to parameterize hydraulic conductivities. During the training process, the stochastic vector in KLE and the parameters of the convolutional decoder are adjusted simultaneously to minimize the data-mismatch and the physical violation. The final optimized stochastic vectors correspond to the estimation of hydraulic conductivities, and the trained convolutional decoder can predict the evolution and distribution of hydraulic heads. Various scenarios of groundwater flow are examined and results demonstrate the framework's capability to accurately estimate heterogeneous hydraulic conductivities and to deliver satisfactory predictions of hydraulic heads, even with sparse measurements.

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物理信息卷积解码器(PICD):直接反演异质地下流动的新方法
我们提出了一种物理信息卷积解码器(PICD)框架,用于异源地下水流的反演建模。PICD 作为一种直接反演方法,无需反复进行正演模型模拟。该框架将监测数据和领域知识整合到反演过程中,从而将数据驱动和物理驱动方法结合起来。PICD 利用卷积解码器来有效地近似水头的空间分布,同时利用卡尔胡宁-洛夫扩展(KLE)来参数化水力传导性。在训练过程中,同时调整 KLE 中的随机向量和卷积解码器的参数,以尽量减少数据不匹配和物理违规。最终优化的随机向量对应于水力传导系数的估算,经过训练的卷积解码器可以预测水头的演变和分布。对地下水流的各种情况进行了研究,结果表明该框架有能力准确估计异质水力传导性,即使在测量数据稀少的情况下,也能对水头做出令人满意的预测。
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来源期刊
Geophysical Research Letters
Geophysical Research Letters 地学-地球科学综合
CiteScore
9.00
自引率
9.60%
发文量
1588
审稿时长
2.2 months
期刊介绍: Geophysical Research Letters (GRL) publishes high-impact, innovative, and timely research on major scientific advances in all the major geoscience disciplines. Papers are communications-length articles and should have broad and immediate implications in their discipline or across the geosciences. GRLmaintains the fastest turn-around of all high-impact publications in the geosciences and works closely with authors to ensure broad visibility of top papers.
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